933 results on '"Learning classifier systems"'
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2. Machine Learning Clustering Algorithm for Water Environmental Monitoring.
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Jiang, Hongfen, Gu, Junfeng, Xi, Haixu, Yu, Qian, Wang, Xiaoyue, and Liu, Yijun
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LEARNING classifier systems , *MACHINE learning , *ENVIRONMENTAL monitoring , *MATHEMATICAL optimization , *WATER clusters - Abstract
Machine learning based on genetic algorithms is an important application. The multi-dimensional ordered sample clustering problem is often solved using Fisher's optimal segmentation method. However, this method has obvious shortcomings when encountering long sample problems due to its high storage requirements during the computation process. Therefore, Fisher's optimal two-segmentation method is generally used in practical problems instead, which avoids storage problems. But it is prone to local optima. Based on the analysis of the shortcomings of the Fisher optimal segmentation and optimal two-segmentation algorithms, this paper proposes a genetic-based machine learning clustering algorithm, which overcomes the problem of Fisher's optimal two-segmentation algorithm being prone to local optima and also solves the problem of high storage requirements during the computation process of Fisher's optimal segmentation method. The application of this algorithm in the optimization system of water environment monitoring points shows that it is effective. [ABSTRACT FROM AUTHOR] more...
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- 2024
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3. Author Index Volume 23 (2024).
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ARTIFICIAL neural networks ,LEARNING classifier systems ,MACHINE learning ,INFORMATION technology ,CLUSTERING algorithms ,MOBILE learning ,DEEP learning - Abstract
The document is an author index for Volume 23 (2024) of the International Journal of Information Technology & Decision Making. It lists various authors and their respective articles published in the journal, covering topics such as Big Data Analytics, Machine Learning, IoT, and Decision Making. The index provides a comprehensive overview of the research articles and authors featured in the journal, offering insights into the diverse range of topics covered in the field of information technology and decision making. [Extracted from the article] more...
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- 2024
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4. Recent advances in applications of machine learning in reward crowdfunding success forecasting.
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Cavalcanti, George D. C., Mendes-Da-Silva, Wesley, dos Santos Felipe, Israel José, and Santos, Leonardo A.
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LEARNING classifier systems , *MACHINE learning , *BUSINESSPEOPLE , *RECEIVER operating characteristic curves , *CROWD funding - Abstract
Entrepreneurs and small businesses have increasingly used reward-based crowdfunding to raise capital for their creative projects, whose success is central to this industry. Thus, predicting the success of crowdfunding campaigns is a topic of great importance for entrepreneurs and platform managers. The literature that employs monolithic classifiers and static ensemble learning for crowdfunding success prediction are scarce. In contrast, the dynamic selection (DS) algorithm, which belongs to the ensemble learning category, deserves a particular remark since it has overcome traditional monolithic classifiers and static ensembles in many applications. This paper proposes a dynamic selection framework for reward crowdfunding prediction. DS algorithms select a competent subset of the classifier per query instance. This procedure is performed during the generalization, and the subset is composed of local experts, favoring an increase in accuracy. Fifteen machine learning models are evaluated using three metrics (accuracy, area under the ROC curve and F-score), and ensemble learning obtained better results than traditional classifiers. In particular, Meta-DES, which performs dynamic selection, obtains the best overall results among the evaluated models. Furthermore, since usually interpreting the output of ML models is considered to be very difficult due to their complex "black box" architecture, we also use Shapley additive explanations to interpret the perdition's outputs. Among variables evaluated in our models, the textual sentiment of the mass media, the number of pledges, and the target amount of the campaign deserve a highlight when predicting the campaign's success. The source-code and further details about the experimental analysis are available at https://github.com/las33/Crowdfunding. [ABSTRACT FROM AUTHOR] more...
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- 2024
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5. Improving the efficiency of the XCS learning classifier system using evolutionary memory.
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Yousefi, Ali, Badie, Kambiz, Ebadzadeh, Mohammad Mehdi, and Sharifi, Arash
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LEARNING classifier systems , *INTELLIGENT control systems , *TRAFFIC congestion , *EVOLUTIONARY algorithms , *ROBOT control systems , *HUMANOID robots - Abstract
Recently, learning classifier systems (LCS) have been used for a variety of Internet of Things (IoT) devices and multi-cloud services, including cloud-based centralized control of physical robots and actuators in continuous-time environments. Performance analysis of sensors, navigation of humanoid robots and intelligent control of rescue systems. In these systems, we can run evolutionary or intuitive algorithms on cloud servers to search the space of rules and simultaneously other learning processes to assign how to interact with the environment to the rules in the classification. Also, the problem of continuous congestion, traffic reduction, network routing and predicting traffic conditions in wireless networks is the main challenge facing these systems in real environments. Usually such systems are non-Markovian. Therefore, they need memory to save system states. This paper presents a framework for XCS-based memory-based LCS. In addition to identifying optimal rules in overlapping modes, the XCS architecture is equipped with a memory. Memory stores the most efficient classifier rules. These rules reduce the steps to reach the goal. In the first proposed method, only those rules that affect the moving motion are kept in memory. As the number of rules increases, some of them are deleted according to memory space. In the second proposed method, some features are added to the rules of this memory and the performance of the memory is optimized using evolutionary algorithms, which are used to remove the less used rules. The relative success of the proposed LCS architecture in solving well-known maze problems compared to the conventional XCS architecture confirms its efficiency in increasing the number of successes and reducing the steps to reach the goals. The results of this research are suggested as a suitable solution for reducing routing time, reducing network load in the problem of congestion and traffic in solving problems related to wireless networks. [ABSTRACT FROM AUTHOR] more...
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- 2024
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6. A hybrid connectionist/LCS for hidden-state problems.
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Mitchell, Matthew
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LEARNING classifier systems , *MACHINE learning , *REINFORCEMENT learning , *TRUCK driving , *MAZE tests - Abstract
This paper describes and evaluates the performance of a learning classifier system (lcs) inspired algorithm called Temporal Reinforcement And Classification Architecture (traca) on maze navigation tasks which contain hidden state. The evaluation of traca includes comparisons with other learning algorithms on selected difficult maze navigation tasks. Not all lcss are capable of learning all types of hidden-state mazes so traca is specifically compared against selected other lcs-based approaches that are most capable on these tasks, including xcsmh, AgentP (G), and AgentP (SA). Each algorithm is evaluated using a maze navigation task that has been identified as among the most difficult due to recurring aliased regions. The comparisons between algorithms include training time, test performance, and the size of the learned rule sets. The results indicate that each algorithm has its own advantages and drawbacks. For example, on the most difficult maze traca's average steps to the goal are 10.1 while AgentP (G) are 7.87; however, traca requires an average of only 354 training trials compared with 537 for AgentP (G). Following the maze tasks, traca is also tested on two variations in a truck driving task where it must learn to navigate four lanes of slower vehicles while avoiding collisions. The results show that traca can achieve a low number of collisions with relatively few trials (as low as 24 collisions over 5000 time steps after 10,000 training time steps) but may require multiple network construction attempts to achieve high performance. [ABSTRACT FROM AUTHOR] more...
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- 2024
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7. A Meta-ensemble Predictive Model for the Risk of Lung Cancer.
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Olawale-Shosanya, Sideeqoh O., Olusanya, Olayinka O., Joseph, Adeyemi O., Idowu, Kabir O., Eriwa, Oyelade B., Adebare, Adedeji O., and Usman, Morufat A.
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LUNGS ,LEARNING classifier systems ,LUNG cancer ,DEEP learning ,PREDICTION models ,DISEASE risk factors ,MACHINE learning - Abstract
The lungs play a vital role in supplying oxygen to every cell, filtering air to prevent harmful substances, and supporting defense mechanisms. However, they remain susceptible to the risk of diseases such as infections, inflammation, and cancer that affect the lungs. Meta-ensemble techniques are prominent methods used in machine learning to enhance the accuracy of classifier learning systems in making predictions. This work proposes a robust predictive model using a meta-ensemble method to identify high-risk individuals with lung cancer, thereby taking early action to prevent longterm problems benchmarked upon the Kaggle Machine Learning practitioners' Lung Cancer Dataset. Three machine learning ensemble modelsdRandom Forest, Adaptive Boosting (AdaBoost), and Gradient Boostingdwere used to develop the meta-ensemble models proposed in this paper, whereby the three ensemble models were adopted as base classifiers while one of them was adopted as the meta-classifier. In addition, two of the ensemble models were used as base classifiers, while the third was used as a meta-classifier to evaluate lung cancer risk prediction. Different graphs were evaluated to show that people with these features are liable to develop lung cancer. The proposed model has immensely improved prediction performance. The meta-ensemble models were simulated using the Python simulation environment, and the 5-fold cross-validation technique was used. The model validation was carried out using several known performance evaluation methodologies. The results of the experiments showed that gradient boosting achieved a maximum accuracy of 100%, an area under the curve (AUC), and a precision of 100%. The proposed model was compared with novel machine learning methods and popular state-of-the-art (SOTA) deep learning techniques. It was confirmed from the results that the model in this study had the best accuracy at lung cancer risk prediction. This study's results can be utilized to enhance the performance of actual patient risk prediction systems in the future. [ABSTRACT FROM AUTHOR] more...
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- 2024
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8. DALex: Lexicase-Like Selection via Diverse Aggregation
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Ni, Andrew, Ding, Li, Spector, Lee, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Giacobini, Mario, editor, Xue, Bing, editor, and Manzoni, Luca, editor more...
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- 2024
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9. Measuring Similarities in Model Structure of Metaheuristic Rule Set Learners
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Pätzel, David, Nordsieck, Richard, Hähner, Jörg, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Smith, Stephen, editor, Correia, João, editor, and Cintrano, Christian, editor more...
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- 2024
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10. Machine learning classifier is associated with mortality in interstitial lung disease: a retrospective validation study leveraging registry data.
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Selvan, Kavitha C., Reicher, Joshua, Muelly, Michael, Kalra, Angad, and Adegunsoye, Ayodeji
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INTERSTITIAL lung diseases ,LEARNING classifier systems ,MACHINE learning ,IDIOPATHIC pulmonary fibrosis ,MORTALITY ,COMPUTED tomography - Abstract
Background: Mortality prediction in interstitial lung disease (ILD) poses a significant challenge to clinicians due to heterogeneity across disease subtypes. Currently, forced vital capacity (FVC) and Gender, Age, and Physiology (GAP) score are the two most utilized metrics in prognostication. Recently, a machine learning classifier system, Fibresolve, designed to identify a variety of computed tomography (CT) patterns associated with idiopathic pulmonary fibrosis (IPF), was demonstrated to have a significant association with mortality across multiple subtypes of ILD. The purpose of this follow-up study was to retrospectively validate these findings in a large, external cohort of patients with ILD. Methods: In this multi-center validation study, Fibresolve was applied to chest CT scans of patients with confirmed ILD that had available follow-up data. Fibresolve scores categorized by tertile were analyzed using Cox regression analysis adjusted for tobacco use and modified GAP (mGAP) score. Results: Of 643 patients included, 446 (69.3%) died over a median follow-up time of 144 [1-821] weeks. The median [range] mGAP score was 5 [3–7]. In multivariable analysis, Fibresolve score categorized by tertile was significantly associated with mortality (Tertile 2 HR 1.47, 95% CI 0.82–2.37, p = 0.11; Tertile 3 HR 3.12, 95% CI 1.98–4.90, p < 0.001). Subgroup analyses revealed significant associations amongst those with non-IPF ILDs (Tertile 2 HR 1.95, 95% CI 1.28–2.97, Tertile 3 HR 4.66, 95% CI 2.94–7.38) and severe disease, defined by a FVC ≤ 75% (Tertile 2 HR 2.29, 95% CI 1.43–3.67, Tertile 3 HR 4.80, 95% CI 2.93–7.86). Conclusions: Fibresolve is independently associated with mortality in ILD, particularly amongst patients with non-IPF ILDs and in those with severe disease. [ABSTRACT FROM AUTHOR] more...
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- 2024
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11. Evidential Supervised Classifier System: A New Learning Classifier System Dealing with Imperfect Information.
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Ferjani, Rahma, Rejeb, Lilia, Abdelkarim, Chedi, and Said, Lamjed Ben
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Learning Classifier Systems (LCSs) are a kind of evolutionary machine learning algorithms that provide highly adaptive components to deal with real world problems. They have been widely used in resolving complex problems such as decision making and classification. LCSs are flexible algorithms that are able to construct, incrementally, a set of rules and evolve them through the Evolutionary Algorithm (EA). Despite their efficiency, LCSs are not capable of handling imperfect information, which may lead to reduced performance in terms of classification accuracy. We propose a new accuracy-based Michigan-style LCS that integrates the belief function theory in the supervised classifier system. The belief function or evidence theory represents an efficient framework for treating imperfect information. The new approach shows promising results in real world classification problems. [ABSTRACT FROM AUTHOR] more...
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- 2024
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12. Learning classifier systems in data mining.
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Bernadó-Mansilla, Ester, Bull, Larry, and Holmes, John
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Artificial intelligence ,Data mining ,Engineering mathematics ,Learning classifier systems ,Machine learning - Abstract
Annotation Just over thirty years after Holland first presented the outline for Learning Classifier System paradigm, the ability of LCS to solve complex real-world problems is becoming clear. In particular, their capability for rule induction in data mining has sparked renewed interest in LCS. This book brings together work by a number of individuals who are demonstrating their good performance in a variety of domains. The first contribution is arranged as follows: Firstly, the main forms of LCS are described in some detail. A number of historical uses of LCS in data mining are then reviewed before an overview of the rest of the volume is presented. The rest of this book describes recent research on the use of LCS in the main areas of machine learning data mining: classification, clustering, time-series and numerical prediction, feature selection, ensembles, and knowledge discovery. more...
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- 2008
13. Survey on Evolutionary Deep Learning: Principles, Algorithms, Applications, and Open Issues.
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Nan Li, Lianbo Ma, Guo Yu, Bing Xue, Mengjie Zhang, and Yaochu Jin
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DEEP learning , *EVOLUTIONARY algorithms , *ARTIFICIAL neural networks , *ARTIFICIAL intelligence , *ANT algorithms , *REINFORCEMENT learning , *LEARNING classifier systems - Published
- 2024
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14. Improving selection strategies in zeroth-level classifier systems based on average reward reinforcement learning.
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Zang, Zhaoxiang, Li, Zhao, Dan, Zhiping, and Wang, Junying
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As a genetics-based machine learning technique, zeroth-level classifier system (ZCS) based on average reward reinforcement learning (ZCSAR) evolves solutions to optimize average reward per time step. However, initial experimental results have shown that, in some cases, the performance of ZCSAR oscillates heavily during the learning period, or cannot reach the optimum during the testing period. In this paper, we modify the selection strategies in ZCSAR to improve its performance, under conditions of minimal changes of ZCSAR. The proposed selection strategies take tournament selection method to choose parents in Genetic Algorithm (GA), and take roulette wheel selection method to choose actions in match set and to choose classifiers for deletion in both GA and covering. Experimental results show that ZCSAR with the new selection strategies can evolve more promising solutions with enough parameter independence, and also with slighter oscillation during the learning period. [ABSTRACT FROM AUTHOR] more...
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- 2024
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15. Evaluating the Comprehensive Adaptive Chameleon Middleware for Mixed-Critical Cyber-Physical Networks
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Feist, Melanie, Pacher, Mathias, Brinkschulte, Uwe, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Goumas, Georgios, editor, Tomforde, Sven, editor, Brehm, Jürgen, editor, Wildermann, Stefan, editor, and Pionteck, Thilo, editor more...
- Published
- 2023
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16. On effectively predicting autism spectrum disorder therapy using an ensemble of classifiers.
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Twala, Bhekisipho and Molloy, Eamon
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AUTISM spectrum disorders , *LEARNING classifier systems , *AUTISTIC children , *EYE contact , *SOCIAL interaction , *SOCIAL contact - Abstract
An ensemble of classifiers combines several single classifiers to deliver a final prediction or classification decision. An increasingly provoking question is whether such an ensemble can outperform the single best classifier. If so, what form of ensemble learning system (also known as multiple classifier learning systems) yields the most significant benefits in the size or diversity of the ensemble? In this paper, the ability of ensemble learning to predict and identify factors that influence or contribute to autism spectrum disorder therapy (ASDT) for intervention purposes is investigated. Given that most interventions are typically short-term in nature, henceforth, developing a robotic system that will provide the best outcome and measurement of ASDT therapy has never been so critical. In this paper, the performance of five single classifiers against several multiple classifier learning systems in exploring and predicting ASDT is investigated using a dataset of behavioural data and robot-enhanced therapy against standard human treatment based on 3000 sessions and 300 h, recorded from 61 autistic children. Experimental results show statistically significant differences in performance among the single classifiers for ASDT prediction with decision trees as the more accurate classifier. The results further show multiple classifier learning systems (MCLS) achieving better performance for ASDT prediction (especially those ensembles with three core classifiers). Additionally, the results show bagging and boosting ensemble learning as robust when predicting ASDT with multi-stage design as the most dominant architecture. It also appears that eye contact and social interaction are the most critical contributing factors to the ASDT problem among children. [ABSTRACT FROM AUTHOR] more...
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- 2023
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17. Special Issue on Lifelike Computing Systems.
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Stein, Anthony, Tomforde, Sven, Botev, Jean, and Lewis, Peter R.
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COMPUTER systems , *ARTIFICIAL intelligence , *MACHINE learning , *LEARNING classifier systems , *SELF-organizing systems , *BIOLOGICALLY inspired computing - Abstract
This document discusses the concept of lifelike computing systems, which aim to replicate qualities associated with living systems in technological systems. The document explains that lifelike computing systems draw inspiration from the field of Artificial Life (ALife) and integrate insights from various research initiatives, such as cybernetics, self-aware computing, and bio-inspired computing. The special issue presented in the document includes four papers that explore the integration of lifelike properties into engineered systems, covering topics such as metaheuristic methods, nature-inspired algorithms, explainable AI, and artificial collective intelligence engineering. The document concludes by expressing gratitude to the authors, reviewers, and organizers involved in the special issue. [Extracted from the article] more...
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- 2023
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18. Assessing Model Requirements for Explainable AI: A Template and Exemplary Case Study.
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Heider, Michael, Stegherr, Helena, Nordsieck, Richard, and Hähner, Jörg
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LEARNING classifier systems , *DECISION support systems , *ARTIFICIAL intelligence , *SOCIOTECHNICAL systems , *MACHINE learning - Abstract
In sociotechnical settings, human operators are increasingly assisted by decision support systems. By employing such systems, important properties of sociotechnical systems, such as self-adaptation and self-optimization, are expected to improve further. To be accepted by and engage efficiently with operators, decision support systems need to be able to provide explanations regarding the reasoning behind specific decisions. In this article, we propose the use of learning classifier systems (LCSs), a family of rule-based machine learning methods, to facilitate and highlight techniques to improve transparent decision-making. Furthermore, we present a novel approach to assessing application-specific explainability needs for the design of LCS models. For this, we propose an application-independent template of seven questions. We demonstrate the approach's use in an interview-based case study for a manufacturing scenario. We find that the answers received do yield useful insights for a well-designed LCS model and requirements for stakeholders to engage actively with an intelligent agent. [ABSTRACT FROM AUTHOR] more...
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- 2023
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19. Detection of Personality Features From Handwriting By Machine Learning Methods.
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Müsevitoğlu, Hilal, Öztürk, Ali, and Başünal, Fatiha Nur
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HANDWRITING , *LOGISTIC regression analysis , *RANDOM forest algorithms , *DECISION trees , *LEARNING classifier systems - Abstract
Handwriting contains a lot of information about the person writing it and is a sign of personality traits represented by neurological patterns in the brain. In other words, our brain and subconscious actually shape our character as a result of our habits. It is possible to get an idea about the mood of the individual by examining the handwriting. Joy, sadness, anger and anxiety are some of them. In this study, handwritings of people belonging to different professions and age groups were collected. Feature extraction methods was applied on these articles by applying word and line detection, slant, pressure, page layout and similar image processing methods. The obtained features formed the inputs of the dataset. Personality traits such as calm, optimistic, emotional, extrovert, which were estimated using graphology, were added to the dataset as outputs. Then, this dataset was applied to Random Forest (RF), Naive Bayes (NB), Decision Tree, Support Vector Machines (SVM), Logistic Regression, Extreme Gradient Boosting (XGBoost) and Light Gradient Boosting Machine (LightGBM) algorithms. According to the performance metrics used, the Random Forest algorithm gave the most successful results in terms of accuracy, precision and f1-score metrics. For this algorithm, the accuracy, precision, recall and f1 score values were found to be 0.90, 0.91, 0.84 and 0.85, respectively. Furthermore, the results of the personality analysis were compared with the results of the personality test performed by the expert psychologist. As a result of this comparison, it was seen that there was a 73% match. [ABSTRACT FROM AUTHOR] more...
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- 2023
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20. GAE-LCT: A Run-Time GA-Based Classifier Evolution Method for Hardware LCT Controlled SoC Performance-Power Optimization
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Surhonne, Anmol, Doan, Nguyen Anh Vu, Maurer, Florian, Wild, Thomas, Herkersdorf, Andreas, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Schulz, Martin, editor, Trinitis, Carsten, editor, Papadopoulou, Nikela, editor, and Pionteck, Thilo, editor more...
- Published
- 2022
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21. Deep Reinforcement Learning with a Classifier System – First Steps
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Schönberner, Connor, Tomforde, Sven, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Schulz, Martin, editor, Trinitis, Carsten, editor, Papadopoulou, Nikela, editor, and Pionteck, Thilo, editor more...
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- 2022
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22. Investigating the Impact of Independent Rule Fitnesses in a Learning Classifier System
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Heider, Michael, Stegherr, Helena, Wurth, Jonathan, Sraj, Roman, Hähner, Jörg, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Mernik, Marjan, editor, Eftimov, Tome, editor, and Črepinšek, Matej, editor more...
- Published
- 2022
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23. Inheritance vs. Expansion: Generalization Degree of Nearest Neighbor Rule in Continuous Space as Covering Operator of XCS
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Shiraishi, Hiroki, Hayamizu, Yohei, Nakari, Iko, Sato, Hiroyuki, Takadama, Keiki, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Jiménez Laredo, Juan Luis, editor, Hidalgo, J. Ignacio, editor, and Babaagba, Kehinde Oluwatoyin, editor more...
- Published
- 2022
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24. Genetics Based Compact Fuzzy System for Visual Sensor Network.
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Rahman, Usama Abdur, Jayakumar, C., Dahiya, Deepak, and Robin, C. R. Rene
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LEARNING classifier systems ,WIRELESS sensor networks ,FUZZY systems ,MACHINE learning ,DATA analysis - Abstract
As a component of Wireless Sensor Network (WSN), Visual-WSN (VWSN) utilizes cameras to obtain relevant data including visual recordings and static images. Data from the camera is sent to energy efficient sink to extract key-information out of it. VWSN applications range from health care monitoring to military surveillance. In a network with VWSN, there are multiple challenges to move high volume data from a source location to a target and the key challenges include energy, memory and I/O resources. In this case, Mobile Sinks (MS) can be employed for data collection which not only collects information from particular chosen nodes called Cluster Head (CH), it also collects data from nearby nodes as well. The innovation of our work is to intelligently decide on a particular node as CH whose selection criteria would directly have an impact on QoS parameters of the system. However, making an appropriate choice during CH selection is a daunting task as the dynamic and mobile nature of MSs has to be taken into account. We propose Genetic Machine Learning based Fuzzy system for clustering which has the potential to simulate human cognitive behavior to observe, learn and understand things from manual perspective. Proposed architecture is designed based on Mamdani's fuzzy model. Following parameters are derived based on the model residual energy, node centrality, distance between the sink and current position, node centrality, node density, node history, and mobility of sink as input variables for decision making in CH selection. The inputs received have a direct impact on the Fuzzy logic rules mechanism which in turn affects the accuracy of VWSN. The proposed work creates a mechanism to learn the fuzzy rules using Genetic Algorithm (GA) and to optimize the fuzzy rules base in order to eliminate irrelevant and repetitive rules. Genetic algorithmbased machine learning optimizes the interpretability aspect of fuzzy system. Simulation results are obtained using MATLAB. The result shows that the classification accuracy increase along with minimizing fuzzy rules count and thus it can be inferred that the suggested methodology has a better protracted lifetime in contrast with Low Energy Adaptive Clustering Hierarchy (LEACH) and LEACHExpected Residual Energy (LEACH-ERE). [ABSTRACT FROM AUTHOR] more...
- Published
- 2023
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25. A deep neural network-based multi-layer classifier ensembles for intrusion detection in fog-based Internet of Things environments.
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khosravifar, Hossein, Jabraeil Jamali, Mohammad Ali, Majidzadeh, Kambiz, and Masdari, Mohammad
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LEARNING classifier systems , *DEMPSTER-Shafer theory , *INTERNET of things , *FALSE alarms , *MACHINE learning - Abstract
Intrusion Detection Systems (IDS) are regarded as an efficient security mechanism in the Internet of Things (IoT). IDSs in the IoT face critical challenges, such as a vast amount of data with many features, limited resources, detection of unknown attacks, and many false alarms. To overcome these issues, this paper proposes a novel framework, namely a Multi-Layer Multi-Classification System (MLMCS). The proposed framework consists of four steps: In the first step, the data collected from information sources are pre-processed. The second step divides the feature space into several subspaces to reduce the model's complexity. The third step proposes a multilayer base classifier called a Multi-Layer Classifier System (MLCS) for each feature subspace. Each MLCS is layered to transform a multi-class classification into several binary classifications so that a specific category of attacks has been detected in each layer based on the Group Method of Data Handling (GMDH) neural network. In the fourth step, the results obtained from MLCSs based on the Dempster-Shafer theory are combined to reduce the problems related to overfitting. The simulation results were gained using three datasets, i.e., NSL-KDD, UNSW-NB15, and TON-IoT. They indicated that the proposed method, compared with other methods, improved F1-score by 5.64%, 0.65%, and 0.11%, respectively. Furthermore, the false alarm rate was reduced by 2.66%, 2.52%, and 0.02%. Moreover, the impact of four well-known adversarial attacks on the dataset was investigated. It was observed that the MLMCS method, with an average 5.21% reduction, could perform well against these attacks. [ABSTRACT FROM AUTHOR] more...
- Published
- 2025
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26. AN EFFICIENT NOVEL APPROACH WITH MULTI CLASS LABEL CLASSIFICATION THROUGH MACHINE LEARNING MODELS FOR PANCREATIC CANCER.
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REDDY, P. SANTOSH and SEKHAR, M. CHANDRA
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PANCREATIC cancer ,LEARNING classifier systems ,MACHINE learning ,CANCER-related mortality ,PANCREATIC tumors ,PROGNOSIS - Abstract
Pancreatic cancer is right now the fourth largest cause of cancer-related deaths. Early diagnosis is one good solution for pancreatic cancer patients and reduces the mortality rate. Accurate and earlier diagnosis of the pancreatic tumor is a demanding task due to several factors such as delayed diagnosis and absence of early warning symptoms. The conventional distributed machine learning techniques such as SVM and logistic regression were not efficient to minimize the error rate and improve the classification of pancreatic cancer with higher accuracy. Therefore, a novel technique called Distributed Hybrid Elitism gene Quadratic discriminant Reinforced Learning Classifier System (DHEGQDRLCS) is developed in this paper. First, the number of data samples is collected from the repository dataset. This repository contains all the necessary files for the identification of prognostic biomarkers for pancreatic cancer. After the data collection, the separation of training and testing samples is performed for the accurate classification of pancreatic cancer samples. Then the training samples are considered and applied to Distributed Hybrid Elitism gene Quadratic discriminant Reinforced Learning Classifier System. The proposed hybrid classifier system uses the Kernel Quadratic Discriminant Function to analyze the training samples. After that, the Elitism gradient gene optimization is applied for classifying the samples into multiple classes such as non-cancerous pancreas, benign hepatobiliary disease i.e., pancreatic cancer, and Pancreatic ductal adenocarcinoma. Then the Reinforced Learning technique is applied to minimize the loss function based on target classification results and predicted classification results. Finally, the hybridized approach improves pancreatic cancer diagnosing accuracy. Experimental evaluation is carried out with pancreatic cancer dataset with Hadoop distributed system and different quantitative metrics such as Accuracy, balanced accuracy, F1-score, precision, recall, specificity, TN, TP, FN, FP, ROCAUC, PRCAUC, and PRCAPS. The performance analysis results indicate that the DHEGQDRLCS provides better diagnosing accuracy when compared to existing methods. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
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27. An Evolutionary Approach to Combinatorial Gameplaying Using Extended Classifier Systems
- Author
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Oberoi, Karmanya, Tandon, Sarthak, Das, Abhishek, Aggarwal, Swati, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Jiming, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Hirche, Sandra, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Möller, Sebastian, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zhang, Junjie James, Series Editor, Choudhary, Ankur, editor, Agrawal, Arun Prakash, editor, Logeswaran, Rajasvaran, editor, and Unhelkar, Bhuvan, editor more...
- Published
- 2021
- Full Text
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28. Transparent Shepherding: A Rule-Based Learning Shepherd for Human Swarm Teaming
- Author
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Debie, Essam, Rojas, Raul Fernandes, Fidock, Justin, Barlow, Michael, Kasmarik, Kathryn, Anavatti, Sreenatha, Garratt, Matthew, Abbass, Hussein A., Abbass, Hussein A., editor, and Hunjet, Robert A., editor more...
- Published
- 2021
- Full Text
- View/download PDF
29. Belief eXtended Classifier System: A New Approach for Dealing with Uncertainty in Sleep Stages Classification
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Ferjani, Rahma, Rejeb, Lilia, Said, Lamjed Ben, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Abraham, Ajith, editor, Hanne, Thomas, editor, Castillo, Oscar, editor, Gandhi, Niketa, editor, Nogueira Rios, Tatiane, editor, and Hong, Tzung-Pei, editor more...
- Published
- 2021
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30. On the Effects of Absumption for XCS with Continuous-Valued Inputs
- Author
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Wagner, Alexander R. M., Stein, Anthony, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Castillo, Pedro A., editor, and Jiménez Laredo, Juan Luis, editor more...
- Published
- 2021
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- View/download PDF
31. Internalizing Knowledge for Anticipatory Classifier Systems in Discretized Real-Valued Environments
- Author
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Norbert Kozlowski and Olgierd Unold
- Subjects
Genetic algorithms ,latent learning ,learning classifier systems ,reinforcement learning ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Real-valued environments are challenging for learning systems because of a significant increase in the input space size of the problem. This work demonstrates that Anticipatory Learning Classifier Systems (ALCS) can successfully build sets of conditional rules foreseeing the consequences of executed actions. Three major classes of Learning Classifier Systems - Anticipatory Classifier System (ACS), ACS2, Yet Another Classifier System (YACS), alongside the traditional Dyna-Q algorithm implementations were adapted to handle real-valued input signal discretization. Aspects like the ability to capture all possible interactions, model generalization capabilities, size of the solution of relative execution times were compared in four different problems using probabilistic modelling, providing unbiased judgments. Results proved that the examined ALCS are capable of solving selected problems. Despite increased input size, all possible environmental transitions were learned latently, without obtaining any explicit incentives. Such an internal representation provides a more compact solution representation and can optimize learning speed further by executing imaginary environmental interactions or performing action planning for a new set of potential problems. more...
- Published
- 2022
- Full Text
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32. Colorimetric detection of H2O2 with Fe3O4@Chi nanozyme modified µPADs using artificial intelligence.
- Author
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Şen, Mustafa, Yüzer, Elif, Doğan, Vakkas, Avcı, İpek, Ensarioğlu, Kenan, Aykaç, Ahmet, Kaya, Nusret, Can, Mustafa, and Kılıç, Volkan
- Subjects
- *
ARTIFICIAL intelligence , *LEARNING classifier systems , *FISHER discriminant analysis , *COLORIMETRY , *COLORIMETRIC analysis , *MACHINE learning , *MICROFLUIDICS , *OXYGEN consumption - Abstract
Peroxidase mimicking Fe3O4@Chitosan (Fe3O4@Chi) nanozyme was synthesized and used for high-sensitive enzyme-free colorimetric detection of H2O2. The nanozyme was characterized in comparison with Fe3O4 nanoparticles (NPs) using X-ray diffraction, Fourier-transform infrared spectroscopy, dynamic light scattering, and thermogravimetric analysis. The catalytic performance of Fe3O4@Chi nanozyme was first evaluated by UV–Vis spectroscopy using 3,3′,5,5′-tetramethylbenzidine. Unlike Fe3O4NPs, Fe3O4@Chi nanozyme exhibited an intrinsic peroxidase activity with a detection limit of 69 nM. Next, the nanozyme was applied to a microfluidic paper-based analytical device (µPAD) and colorimetric analysis was performed at varying concentrations of H2O2 using a machine learning-based smartphone app called "Hi-perox Sens++." The app with machine learning classifiers made the system user-friendly as well as more robust and adaptive against variation in illumination and camera optics. In order to train various machine learning classifiers, the images of the µPADs were taken at 30 s and 10 min by four smartphone brands under seven different illuminations. According to the results, linear discriminant analysis exhibited the highest classification accuracy (98.7%) with phone-independent repeatability at t = 30 s and the accuracy was preserved for 10 min. The proposed system also showed excellent selectivity in the presence of various interfering molecules and good detection performance in tap water. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
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33. Hyperspectral image classification using feature fusion fuzzy graph broad network.
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Chu, Yonghe, Cao, Jun, Ding, Weiping, Huang, Jiashuang, Ju, Hengrong, Cao, Heling, and Liu, Guangen
- Subjects
- *
LEARNING classifier systems , *IMAGE recognition (Computer vision) , *FUZZY graphs , *FUZZY sets , *COMPUTATIONAL complexity , *INTERORGANIZATIONAL networks - Abstract
In recent years, graph convolutional networks (GCNs) have shown strong performance in hyperspectral image (HSI) classification. However, traditional GCN methods often use superpixel-based nodes to reduce computational complexity, which fails to capture pixel-level spectral-spatial features. Additionally, these methods typically focus on matching predicted labels with ground truth, neglecting the relationships between inter-class and intra-class distances, leading to less discriminative features. To address these issues, we propose a feature fusion fuzzy graph broad network (F3GBN) for HSI classification. Our method extracts pixel-level attribute contour features using attribute filters and fuses them with superpixel features through canonical correlation analysis. We employ a broad learning system (BLS) as the classifier, which fully utilizes spectral-spatial information via nonlinear transformations. Furthermore, we construct intra-class and inter-class graphs based on fuzzy set and manifold learning theories to ensure better clustering of samples within the same class and separation between different classes. A novel loss function is introduced in BLS to minimize intra-class distances and maximize inter-class distances, enhancing feature discriminability. The proposed F3GBN model achieved impressive overall accuracy on public datasets: 96.73% on Indian Pines, 98.29% on Pavia University, 98.69% on Salinas, and 99.43% on Kennedy Space Center, outperforming several classical and state-of-the-art methods, thereby demonstrating its effectiveness and feasibility. • Pixel and superpixel feature fusion using canonical correlation enhances representation. • Broad learning system classifier fully utilizes spectral-spatial information. • New loss function improves accuracy by optimizing intra-class and inter-class feature distances. [ABSTRACT FROM AUTHOR] more...
- Published
- 2025
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34. Patent Application Titled "Methods Of Detecting Cancer" Published Online (USPTO 20240412868).
- Subjects
LEARNING classifier systems ,SMALL cell lung cancer ,MACHINE learning ,REFERENCE values ,TUMOR markers ,CA 125 test ,CLASSIFICATION of mental disorders - Abstract
A patent application titled "Methods Of Detecting Cancer" has been published online, presenting a blood-based multi-cancer early detection test that can identify multiple types of cancer from a single blood sample. The test integrates the measurement of protein tumor markers and clinical information, utilizing artificial intelligence technology to predict affected tissue of origin. This innovative method aims to improve patient outcomes by enabling early detection and treatment of various cancers, ultimately impacting public health positively. [Extracted from the article] more...
- Published
- 2024
35. Researchers Submit Patent Application, "A Method And System Detecting A Health Abnormality In A Liquid Biopsy Sample", for Approval (USPTO 20240387047).
- Subjects
LEARNING classifier systems ,MACHINE learning ,INFORMATION technology ,PROBABILITY density function ,RECEIVER operating characteristic curves - Abstract
Researchers HALNER and LIU have submitted a patent application for a method and system to detect health abnormalities in liquid biopsy samples, particularly focusing on early cancer detection. The method involves using machine learning classifiers to analyze data from liquid biopsies and identify relevant features associated with health abnormalities. This innovative approach aims to shift cancer diagnosis from visual confirmation to molecular-level detection, potentially revolutionizing cancer management strategies. The patent application highlights the potential of liquid biopsy technology in improving cancer diagnosis and treatment selection. [Extracted from the article] more...
- Published
- 2024
36. Unsupervised Sleep Stages Classification Based on Physiological Signals
- Author
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Ferjani, Rahma, Rejeb, Lilia, Said, Lamjed Ben, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Demazeau, Yves, editor, Holvoet, Tom, editor, Corchado, Juan M., editor, and Costantini, Stefania, editor more...
- Published
- 2020
- Full Text
- View/download PDF
37. Bounded Rationality, Group Formation and the Emergence of Trust: An Agent-Based Economic Model.
- Author
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Kato, Jefferson Satoshi and Sbicca, Adriana
- Subjects
TRUST ,BOUNDED rationality ,GROUP formation ,LEARNING classifier systems ,ECONOMIC models ,INTELLIGENT tutoring systems - Abstract
It is possible to model trust as an investment game, where a player in order to receive a reward or a better outcome, accepts a certain risk of defection by another player. Despite having achieved interesting insights and conclusions, traditional game theory does not predict the existence of trust between players who are selfish and exhibit maximizing behavior. However, experiments with these games reveal the presence of trust in player decision making. The purpose of this paper is twofold. First, it aims to build an agent-based economic model to show that trust revealed in these experiments can emerge from a simple set of dynamics. Using the generative methodology proposed by Epstein, we introduce natural selection, learning and group formation to the model to verify their impact on the emergence of trust between agents. Second, since the experiments reveal that the participants present bounded rational behavior, the paper aims to show that in an agent-based model, bounded rationality can be modelled through an artificial intelligence algorithm, the learning classifier system (LCS). As a result, we have observed that natural selection favors more selfish behavior. In addition, learning and the forming of groups increased trust in our simulations and they were able to reverse selfish behavior when introduced along with natural selection. The level of trust that emerged from the model with these three dynamics was similar to that observed in these experiments. Finally, it is possible to verify that the LCS was able to model bounded rational behavior in agents. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
38. Visualizations for rule-based machine learning.
- Author
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Liu, Yi, Browne, Will N., and Xue, Bing
- Subjects
- *
LEARNING classifier systems , *MACHINE learning , *VISUALIZATION , *DATA mining - Abstract
Learning Classifier Systems (LCSs) are a group of rule-based evolutionary computation techniques, which have been frequently applied to data mining tasks. The LCSs' rules are designed to be human-readable to enable the underlying knowledge to be investigated. However, the models for the majority of domains with high feature interaction contain a large number of rules that cooperatively represent the knowledge. However, the interaction between many rules is too complex to be comprehended by humans. Thus, it is hypothesized that translating the models' underlying patterns into human-discernable visualizations will advance the understanding of the learned patterns and LCSs themselves. Interrogatable artificial Boolean domains with varying numbers of attributes are considered as benchmarks. Three new visualization techniques, termed as Feature Importance Map, Action-based Feature Importance Map, and Action-based Feature's Average value Map, successfully produce interpretable results for all the complex domains tested. This includes both tracing the training progress and analyzing the trained models from LCSs. The visualization techniques' ability to handle complex optimal solutions is observed for the 14-bits Majority-On problem, where the patterns from 6435 different cooperating rules were translated into human-discernable graphs. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
39. Cognitive Positioning With Environment Classifying and Matching.
- Subjects
- *
LEARNING classifier systems , *LEARNING ability - Abstract
The techniques of environment classifying and matching are investigated for a receiver to implement the environment adaptive positioning, called cognitive positioning. Both environment features and signal measurements are discretized to express an environment classification for environment matching. This allows the receiver to perform the optimal positioning solution based on the environment situated. Environment classifications are updated by a learning classifier system to enhance the receiver’s learning ability and adaptivity in facing an unknown environment. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
40. Hierarchical Reinforcement Learning: A Survey and Open Research Challenges.
- Author
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Hutsebaut-Buysse, Matthias, Mets, Kevin, and Latré, Steven
- Subjects
REINFORCEMENT learning ,MACHINE learning ,LEARNING classifier systems ,DISCOVERY method (Teaching) ,DEEP learning - Abstract
Reinforcement learning (RL) allows an agent to solve sequential decision-making problems by interacting with an environment in a trial-and-error fashion. When these environments are very complex, pure random exploration of possible solutions often fails, or is very sample inefficient, requiring an unreasonable amount of interaction with the environment. Hierarchical reinforcement learning (HRL) utilizes forms of temporal- and state-abstractions in order to tackle these challenges, while simultaneously paving the road for behavior reuse and increased interpretability of RL systems. In this survey paper we first introduce a selection of problem-specific approaches, which provided insight in how to utilize often handcrafted abstractions in specific task settings. We then introduce the Options framework, which provides a more generic approach, allowing abstractions to be discovered and learned semi-automatically. Afterwards we introduce the goal-conditional approach, which allows sub-behaviors to be embedded in a continuous space. In order to further advance the development of HRL agents, capable of simultaneously learning abstractions and how to use them, solely from interaction with complex high dimensional environments, we also identify a set of promising research directions. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
41. Robust Reinforcement Learning: A Review of Foundations and Recent Advances.
- Author
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Moos, Janosch, Hansel, Kay, Abdulsamad, Hany, Stark, Svenja, Clever, Debora, and Peters, Jan
- Subjects
REINFORCEMENT learning ,MACHINE learning ,LEARNING classifier systems ,MARKOV processes ,STOCHASTIC processes - Abstract
Reinforcement learning (RL) has become a highly successful framework for learning in Markov decision processes (MDP). Due to the adoption of RL in realistic and complex environments, solution robustness becomes an increasingly important aspect of RL deployment. Nevertheless, current RL algorithms struggle with robustness to uncertainty, disturbances, or structural changes in the environment. We survey the literature on robust approaches to reinforcement learning and categorize these methods in four different ways: (i) Transition robust designs account for uncertainties in the system dynamics by manipulating the transition probabilities between states; (ii) Disturbance robust designs leverage external forces to model uncertainty in the system behavior; (iii) Action robust designs redirect transitions of the system by corrupting an agent's output; (iv) Observation robust designs exploit or distort the perceived system state of the policy. Each of these robust designs alters a different aspect of the MDP. Additionally, we address the connection of robustness to the risk-based and entropy-regularized RL formulations. The resulting survey covers all fundamental concepts underlying the approaches to robust reinforcement learning and their recent advances. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
42. Special Issue on Applied Machine Learning.
- Author
-
Dudek, Grzegorz
- Subjects
MACHINE learning ,DEEP learning ,ORDER picking systems ,LEARNING classifier systems ,FLY ash ,NATURAL language processing ,ARTIFICIAL intelligence ,ARTIFICIAL neural networks - Abstract
Machine learning (ML) is one of the most exciting fields of computing today. In the experimental evaluation, they showed that the new grammatical inference algorithm gives the best results in comparison to other automata or grammar learning methods as well as ML approach combining an unsupervised data-driven distributed representation and SVM. In [[11]], this problem is solved using several ML algorithms based on different student data including individual course grades and grade point averages. ML covers a wide range of learning algorithms, including classical ones such as linear regression, k-nearest neighbors, decision trees, support vector machines and neural networks, and newly developed algorithms such as deep learning and boosted tree models. [Extracted from the article] more...
- Published
- 2022
- Full Text
- View/download PDF
43. Frames-of-Reference-Based Learning: Overcoming Perceptual Aliasing in Multistep Decision-Making Tasks.
- Author
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Siddique, Abubakar, Browne, Will N., and Grimshaw, Gina M.
- Subjects
LEARNING classifier systems ,PERCEPTUAL learning ,EVOLUTIONARY computation ,CONCEPT learning ,DECISION making - Abstract
Perceptual aliasing challenges reinforcement learning agents. They struggle to learn stable policies by failing to identify and disambiguate perceptually identical states in the environment that require different actions to reach a goal. As the agent often has only a local frame of reference, it cannot represent the global environment. Frame-of-reference-based learning is a feature of vertebrate intelligence that allows multiple simultaneous representations of an environment at different levels of abstraction. This enables the resolution of patterns that are made up of patterns that are made up of features. The evolutionary computation technique of learning classifier systems has shown promise in learning nested patterns in single-step domains. This work uses the frame-of-reference concept within a learning classifier system to learn stable policies in non-Markov multistep domains. Considering aliased states at a constituent level enables the system to place them appropriately in holistic-level policies. Instead of enumerating a huge search space, evolution computation empowers the novel system to evolve fitter rules and policies. The experimental results show that the novel system effectively solves complex aliasing patterns in non-Markov environments that have been challenging to artificial agents. For example, the novel system utilizes only 6.5, 3.71, and 3.22 steps to resolve Maze10, Littman57, and Woods102, respectively. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
44. Implementing a Model to Detect Parkinson Disease using Machine Learning Classifiers.
- Author
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G. S., Uday Kumar, Baskaran, S., and Sumathi, D.
- Subjects
- *
PARKINSON'S disease , *PARKINSON'S disease diagnosis , *RANDOM forest algorithms , *LEARNING classifier systems , *GENETIC algorithms , *DATA analysis - Abstract
Parkinson disease is a neurodegenerative disorder that affects nervous system and the root cause of it is falling rates of dopamine levels in the forebrain. The machine learning model is implemented to significantly improve diagnosis method of Parkinson disease. In this work it indicates that the ensemble techniques XGBoost classification (Extreme gradient boosting) algorithm achieved the high test accuracy rate (94.8%) compared to different classification algorithm. The performance of the methods has been assessed with a reliable dataset from UCI Machine learning repository. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
45. Autoencoding With a Classifier System.
- Author
-
Preen, Richard J., Wilson, Stewart W., and Bull, Larry
- Subjects
LEARNING classifier systems ,MACHINE learning - Abstract
Autoencoders are data-specific compression algorithms learned automatically from examples. The predominant approach has been to construct single large global models that cover the domain. However, training and evaluating models of increasing size comes at the price of additional time and computational cost. Conditional computation, sparsity, and model pruning techniques can reduce these costs while maintaining performance. Learning classifier systems (LCSs) are a framework for adaptively subdividing input spaces into an ensemble of simpler local approximations that together cover the domain. LCS perform conditional computation through the use of a population of individual gating/guarding components, each associated with a local approximation. This article explores the use of an LCS to adaptively decompose the input domain into a collection of small autoencoders, where local solutions of different complexity may emerge. In addition to the benefits in convergence time and computational cost, it is shown possible to reduce the code size as well as the resulting decoder computational cost when compared with the global model equivalent. [ABSTRACT FROM AUTHOR] more...
- Published
- 2021
- Full Text
- View/download PDF
46. Discovering Rules for Rule-Based Machine Learning with the Help of Novelty Search
- Author
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Heider, Michael, Stegherr, Helena, Pätzel, David, Sraj, Roman, Wurth, Jonathan, Volger, Benedikt, and Hähner, Jörg
- Published
- 2023
- Full Text
- View/download PDF
47. Joint relay and channel selection against mobile and smart jammer: A deep reinforcement learning approach.
- Author
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Yuan, Hongcheng, Song, Fei, Chu, Xiaojing, Li, Wen, Wang, Ximing, Han, Hao, and Gong, Yuping
- Subjects
- *
REINFORCEMENT learning , *WIRELESS cooperative communication , *MARKOV processes , *MACHINE learning , *LEARNING classifier systems - Abstract
This paper investigates the joint relay and channel selection problem using a deep reinforcement learning (DRL) algorithm for cooperative communications in a dynamic jamming environment. The latest types of jammers include the mobile and smart jammer that contains multiple jamming patterns. This new type of jammer poses serious challenges to reliable communications such as huge environment states, tightly coupled joint action selections and real‐time decision requirements. To cope with these challenges, a DRL‐based relay‐assisted cooperative communication scheme is proposed. In this scheme, the joint selection problem is constructed as a Markov decision process (MDP) and a double deep Q network (DDQN) based anti‐jamming scheme is proposed to address the unknown and dynamic jamming behaviors. Concretely, a joint decision‐making network composed of three sub‐networks is designed and the independent learning method of each sub‐network is proposed. The simulation results show that the user agent is able to anticipate the jammer behaviors and elude the jamming in advance. Furthermore, compared with the sensing‐based algorithm, the Q learning‐based algorithm and the existing DRL‐based anti‐jamming approaches, the proposed algorithm maintains a higher average normalized throughput. [ABSTRACT FROM AUTHOR] more...
- Published
- 2021
- Full Text
- View/download PDF
48. Introduction to Learning Classifier Systems
- Author
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Ryan J. Urbanowicz, Will N. Browne, Ryan J. Urbanowicz, and Will N. Browne
- Subjects
- Learning classifier systems
- Abstract
This accessible introduction shows the reader how to understand, implement, adapt, and apply Learning Classifier Systems (LCSs) to interesting and difficult problems. The text builds an understanding from basic ideas and concepts. The authors first explore learning through environment interaction, and then walk through the components of LCS that form this rule-based evolutionary algorithm. The applicability and adaptability of these methods is highlighted by providing descriptions of common methodological alternatives for different components that are suited to different types of problems from data mining to autonomous robotics. The authors have also paired exercises and a simple educational LCS (eLCS) algorithm (implemented in Python) with this book. It is suitable for courses or self-study by advanced undergraduate and postgraduate students in subjects such as Computer Science, Engineering, Bioinformatics, and Cybernetics, and by researchers, data analysts, andmachine learning practitioners. more...
- Published
- 2017
49. Ensemble learning for multi-channel sleep stage classification.
- Author
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Ben Hamouda, Ghofrane, Rejeb, Lilia, and Ben Said, Lamjed
- Subjects
LEARNING classifier systems ,SLEEP stages ,ELECTROENCEPHALOGRAPHY ,CLASSIFICATION - Abstract
Sleep is a vital process for human well-being. Sleep scoring is performed by experts using polysomnograms, that record several body activities, such as electroencephalograms (EEG), electrooculograms (EOG), and electromyograms (EMG). This task is known to be exhausting, biased, time-consuming, and prone to errors. Current automatic sleep scoring approaches are mostly based on single-channel EEG and do not produce explainable results. Therefore, we propose a heterogeneous ensemble learning-based approach where we combine accuracy-based learning classifier systems with different algorithms to produce a robust, explainable, and enhanced classifier. The efficiency of our approach was evaluated using the Sleep-EDF benchmark dataset. The proposed models have reached an accuracy of 89.2% for the stacking model and 87.9% for the voting model, on a multi-class classification task based on the R&K guidelines. [ABSTRACT FROM AUTHOR] more...
- Published
- 2024
- Full Text
- View/download PDF
50. Knowledge extraction and retention based continual learning by using convolutional autoencoder-based learning classifier system.
- Author
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Irfan, Muhammad, Jiangbin, Zheng, Iqbal, Muhammad, Masood, Zafar, and Arif, Muhammad Hassan
- Subjects
- *
LEARNING classifier systems , *KNOWLEDGE representation (Information theory) , *FEATURE extraction - Abstract
An ideal artificial intelligence-based autonomous system, interacting with a dynamic environment, is required to learn continuously as human do. Human beings retain the learned knowledge, accumulate, and utilize it to solve related problems. Currently, most artificial intelligence-based systems lack this capability and work in an isolated learning paradigm. In this paper, we present a novel continual learning model to solve the challenging problem of real-world images classification. The proposed model is capable of learning continuously by utilizing the previously learned knowledge. It can handle both multi-task and single incremental task scenarios as opposed to various existing models that cover only the multi-task scenarios. In the proposed model, a deep convolutional autoencoder is presented to extract features from images. In addition, a learning classifier system with an effective knowledge encoding scheme is proposed for mapping real-world images to code fragment-based compact knowledge representation. Experiments are conducted on three benchmark image datasets to validate the model: (i) CORe50, (ii) iCubWorld28, and (iii) STL-10. Experiments results demonstrate that the proposed model outperforms the baseline method as well as various state-of-the-art methods for both continual learning scenarios. [ABSTRACT FROM AUTHOR] more...
- Published
- 2022
- Full Text
- View/download PDF
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