18 results
Search Results
2. Real time evaluation algorithm of human motion in tennis training robot.
- Author
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Wang, Yingying, Zhang, Yongzhi, Satapathy, Suresh Chandra, Agrawal, Rashmi, and García Díaz, Vicente
- Subjects
ALGORITHMS ,ROBOT motion ,TENNIS ,MOTION ,HUMAN mechanics ,ROBOTS ,ARTIFICIAL intelligence - Abstract
Tennis is a set of sports and entertainment and a sports activity, since 2014, tennis in China has been another rapid development. With the development of economy and technology, tennis training mode has been further optimized and reformed. At present, tennis training robot is the mainstream way to train athletes. However, there are some defects in the current tennis training robots, such as the low accuracy of human motion real-time evaluation, and the lack of stability. Therefore, this paper puts forward the related research on the real-time evaluation algorithm of human motion in tennis training robots, hoping to make up for the deficiency in this field. The research of this paper is mainly divided into four parts. The first part is to analyze the current situation of technology research in this field and put forward the idea of this paper by analyzing the shortcomings of the existing technology. The second part is the related basic theory research; this part deeply studies the core theory of tennis training and intelligent training robot, which provides a theoretical basis for the realization of the optimization scheme. The third part is the design and implementation of a real-time human motion evaluation optimization algorithm for tennis training robots. At the end of the paper, that is, the fourth part, through the way of field test and investigation, further proves the superiority of the improved real-time evaluation algorithm of human movement. The algorithm has good stability and accuracy and can meet the existing tennis training requirements. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
3. Emergency Information Communication Structure by Using Multimodel Fusion and Artificial Intelligence Algorithm.
- Author
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Lei, Liping
- Subjects
ARTIFICIAL intelligence ,EMERGENCY management ,DATA extraction ,INFORMATION resources management ,ALGORITHMS ,CONSTRUCTION management - Abstract
With the development of The Times, social events are increasing, and emergency management has gradually become the main helper to solve the crisis in the public domain. By observing the current situation of many countries and regions, we can find that various types of public crises often occur in many countries and regions in the world, which have severely affected people's daily life, lives, and property. Through long-term research and analysis, it can be known that the emergency management mechanism currently established in China has certain shortcomings. The communication problem of emergency information is likely to cause the emergency work to not proceed smoothly. In addition, problems in the communication channels of emergency information are likely to cause problems in the cooperation of various departments when people carry out emergency management work, and the efficiency of the government in dealing with problems will also be reduced in real scenarios. In order to improve the efficiency of emergency information management, this paper aims at the various problems existing and facing in the construction of emergency management system. On this basis, the integration of various relevant emergency information management plan models is analyzed and sorted out, and based on the research and integration of the development of artificial intelligence algorithms. The main research results of emergency information management at home and abroad are comprehensively studied and evaluated. Finally, a QG algorithm based on more model fusion is developed. In the process of analysis, this article uses artificial intelligence algorithms to build a prediction model of multiple modes and collects the data needed to build the model by random extraction. Through the analysis of different data sets, it is used as the basic training data for prediction. Through comprehensive analysis, the model constructed in this paper can promote the sharing of emergency information among departments to a certain extent. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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- View/download PDF
4. Machine English Translation Evaluation System Based on BP Neural Network Algorithm.
- Author
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Han, Yanlin and Meng, Shaoxiu
- Subjects
MACHINE translating ,ARTIFICIAL intelligence ,ALGORITHMS ,QUALITY of service ,ERROR rates - Abstract
In order to solve the problems of machine translation efficiency and translation quality, this paper proposes an English translation evaluation system based on the BP neural network algorithm. This method provides users with a more intelligent machine translation service experience. With the help of the BP neural network algorithm, taking English online translation as the research object, Google's translation quality is the best, with an error frequency of only 167, while Baidu translation and iFLYTEK translation in China have a high error rate of 266 and 301, respectively, which is much higher than Google translation. A model of machine translation evaluation based on the neural network algorithm is proposed to better solve the disadvantages of traditional English machine translation. The results show that the machine translation system based on the neural network algorithm can further optimize the problems existing in machine translation, such as insufficient use of information and large scale of model parameters, and further improve the performance of neural network machine translation. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
5. Assessment of International Competitiveness of AI Industry Based on Positive and Negative Ideal Points Weighting Method.
- Author
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Dong, Tianyu and Meng, Lingxing
- Subjects
ARTIFICIAL intelligence ,SIMULATED annealing ,TOPSIS method ,ALGORITHMS ,ECONOMIC indicators - Abstract
China, the United States, the United Kingdom, Germany, and other major AI superpowers as research objects, this paper establishes the assessment index system with the diamond model, weights the international competitiveness indexes of AI industry in the four countries based on positive and negative ideal points, and applies the simulated annealing (SA) algorithm to obtain the final weights. Then, the TOPSIS assessment method is used to score and rank their international competitiveness of AI industry. It is concluded that the United States is on the leading position in the human factor, knowledge factor, capital factor, enterprise strategy structure/competitors, and policy laws and regulations. China has a complete infrastructure system and huge market demand. The leading of these indicators is also the reason why China can catch up in the development of some industries when it participates in the global value division. Europe also performs well in knowledge factors, capital factors, strategic structure/competitors, and policies and regulations but needs to invest more in AI industry infrastructure. Finally, this paper analyzes the advantages and disadvantages of the countries and reasons to provide comparative reference among different countries for AI industry. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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6. AI-Based Optimal Treatment Strategy Selection for Female Infertility for First and Subsequent IVF-ET Cycles.
- Author
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Wang, Renjie, Pan, Wei, Yu, Lean, Zhang, Xiaoming, Pan, Wulin, Hu, Cheng, Wen, Li, Jin, Lei, and Liao, Shujie
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INFERTILITY treatment ,ARTIFICIAL intelligence ,ACQUISITION of data ,DECISION support systems ,EMBRYO transfer ,TREATMENT effectiveness ,PEARSON correlation (Statistics) ,MEDICAL records ,DESCRIPTIVE statistics ,RESEARCH funding ,DECISION making in clinical medicine ,FERTILIZATION in vitro ,COMPUTER-aided diagnosis ,DATA analysis software ,ALGORITHMS - Abstract
Over the last 20 years, China's infertility rate has risen from 3% to 12.5%–15%. Infertility has become the third largest disease following cancer and cardiovascular disease. Then, the in vitro fertilization and embryo transfer (IVF-ET) becomes more and more important in infertility treatment field. However, the reported success rate for IVT-ET is 30%–40% and costs are gradually rising. Meanwhile, to increase success rates and decrease costs, the optimal selection of the IVF-ET treatment strategy is crucial. In a clinical work, the IVF-ET treatment strategy selection is always based on the experience of the doctor without a uniform standard. To solve this important and complex problem, we proposed an artificial intelligence (AI)-based optimal treatment strategy selection system to extract implicit knowledge from clinical data for new and returning patients, by mimicking the IVF-ET process and analysing a myriad of treatment decisions. We demonstrated that the performance of the model was different in 10 AI classification algorithms. Hence, we need to select the optimal method for predicting patient pregnancy result in different IVF-ET treatment strategies. Moreover, feature ranking is determined in the proposed model to measure the importance of each patient characteristics. Therefore, better advice can be provided for individual patient characteristics, doctors can provide more valid suggestions regarding certain patient characteristics to improve the accuracy of diagnosis and efficiency. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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7. Improved Fault Prediction Algorithm of High-Speed EMUs based on PHM Technology.
- Author
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Byung-Won Min
- Subjects
ELECTRIC multiple units ,HIGH speed trains ,FAULT diagnosis ,VIDEO coding ,ARTIFICIAL intelligence ,ALGORITHMS ,MAINTENANCE costs - Abstract
The essence of PHM technology is to process the collected information with the help of the system information collected by sensors, using information fusion, artificial intelligence, big data, reasoning algorithms and other technologies, and realize the monitoring management, status evaluation and fault prediction functions of the target system. PHM is an important part of the intelligent equipment detection and maintenance system. Its application and realization in the railway field is the key link of the intelligent operation and maintenance of multiple units, and is an important means to realize the shift from planned preventive maintenance to digital and accurate condition maintenance. It is of great significance for China's high-speed railway to maintain the world's advanced level and move towards higher quality, efficiency and efficiency. With the improvement of operation speed and the growth of application scale of High-Speed Electric Multiple Units in China, hereinafter referred to as EMU, the technical challenges of operation safety and security of EMUs are increasingly prominent. As a kind of equipment health management technology, PHM can realize equipment status monitoring, abnormal prediction, fault diagnosis, maintenance prediction and maintenance decision-making. In order to improve the safety assurance capability of high-speed EMU, reduce the maintenance cost and improve the maintenance efficiency, this paper deeply integrates big data technology, algorithm model and PHM technology, and explores the theory and method of intelligent fault prediction of key components of high-speed EMU based on PHM technology. Focus on the research of EMU condition monitoring and fault diagnosis technology based on HSMM and DBN algorithms, as well as the component maintenance prediction and maintenance decision-making technology based on fixed repair schedule prevention, so as to transfer the theoretical basis and technical support for the maintenance mode of EMU from "planned repair" to "planned repair predictive maintenance". [ABSTRACT FROM AUTHOR]
- Published
- 2023
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8. APPLICATION OF INTELLIGENT ALGORITHMS AND BIG DATA ANALYSIS IN FILM AND TELEVISION CREATION.
- Author
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WEIWEI WU
- Subjects
BIG data ,MOTION picture audiences ,TELEVISION broadcasting ,DATA analysis ,ARTIFICIAL intelligence ,ALGORITHMS ,SMART television devices ,MACHINE learning - Abstract
With the rapid development of social media, people can access a large amount of data in a short period of time, and big data technology has emerged. With the vigorous development of cloud computing and big data, the method of mining audience interests through a large amount of data to guide film and television creation has attracted more and more attention from experts and scholars. In order to understand the current situation of film and television drama creation in China and provide suggestions for the shortcomings in the industry, this article mainly analyzes the application of intelligent algorithms for traffic prediction models and big data analysis in film and television creation. This intelligent algorithm can predict the potential audience of movies or TV dramas, helping producers and investors make decisions. This system utilizes artificial intelligence technology to select suitable actors for characters based on their matching degree and past work performance. This article applies intelligent algorithms to big data processing to improve the accuracy of data processing. This article explores the application of intelligent algorithms and big data analysis in film and television creation. Using machine learning algorithms to predict the potential audience of a movie or TV series based on historical data, providing decision-making basis for investors and producers. This system utilizes AI technology to select suitable actors for characters based on their matching degree with characters and past work performance, improving the scientific and accurate selection of roles. The application of these technologies helps to improve production efficiency and quality, reduce costs and risks, and inject new impetus into the sustainable development of the film and television industry. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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9. Artificial Intelligence Advances in China.
- Author
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Wang, Kewen and Lu, Ruqian
- Subjects
ARTIFICIAL intelligence ,COGNITIVE science ,ALGORITHMS - Abstract
Presents a series of articles on artificial intelligence research activities being carried out in China. Method for rule extraction from ensembles of neural networks; Approach to multilevel data summarization by employing the rule-plus-exception model in cognitive science; Development of a technique by employing a stepwise greedy algorithm for certain data sets with medium size.
- Published
- 2003
10. Urban air quality forecasting based on multi-dimensional collaborative Support Vector Regression (SVR): A case study of Beijing-Tianjin-Shijiazhuang.
- Author
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Liu, Bing-Chun, Binaykia, Arihant, Chang, Pei-Chann, Tiwari, Manoj Kumar, and Tsao, Cheng-Chin
- Subjects
AIR quality ,SUPPORT vector machines ,ECONOMIC development ,ENVIRONMENTAL chemistry ,AIR pollution ,MACHINE learning - Abstract
Today, China is facing a very serious issue of Air Pollution due to its dreadful impact on the human health as well as the environment. The urban cities in China are the most affected due to their rapid industrial and economic growth. Therefore, it is of extreme importance to come up with new, better and more reliable forecasting models to accurately predict the air quality. This paper selected Beijing, Tianjin and Shijiazhuang as three cities from the Jingjinji Region for the study to come up with a new model of collaborative forecasting using Support Vector Regression (SVR) for Urban Air Quality Index (AQI) prediction in China. The present study is aimed to improve the forecasting results by minimizing the prediction error of present machine learning algorithms by taking into account multiple city multi-dimensional air quality information and weather conditions as input. The results show that there is a decrease in MAPE in case of multiple city multi-dimensional regression when there is a strong interaction and correlation of the air quality characteristic attributes with AQI. Also, the geographical location is found to play a significant role in Beijing, Tianjin and Shijiazhuang AQI prediction. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
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11. Machine learning-based decision support system for orthognathic diagnosis and treatment planning.
- Author
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Du, Wen, Bi, Wenjun, Liu, Yao, Zhu, Zhaokun, Tai, Yue, and Luo, En
- Subjects
ORTHOGNATHIC surgery ,CLINICAL decision support systems ,FACIAL bone abnormalities ,ACADEMIC medical centers ,USER interfaces ,MACHINE learning ,ARTIFICIAL intelligence ,TREATMENT effectiveness ,T-test (Statistics) ,TEETH abnormalities ,CEPHALOMETRY ,DESCRIPTIVE statistics ,INTRACLASS correlation ,RESEARCH funding ,COMPUTER-aided diagnosis ,SENSITIVITY & specificity (Statistics) ,RECEIVER operating characteristic curves ,ALGORITHMS - Abstract
Background: Dento-maxillofacial deformities are common problems. Orthodontic–orthognathic surgery is the primary treatment but accurate diagnosis and careful surgical planning are essential for optimum outcomes. This study aimed to establish and verify a machine learning–based decision support system for treatment of dento-maxillofacial malformations. Methods: Patients (n = 574) with dento-maxillofacial deformities undergoing spiral CT during January 2015 to August 2020 were enrolled to train diagnostic models based on five different machine learning algorithms; the diagnostic performances were compared with expert diagnoses. Accuracy, sensitivity, specificity, and area under the curve (AUC) were calculated. The adaptive artificial bee colony algorithm was employed to formulate the orthognathic surgical plan, and subsequently evaluated by maxillofacial surgeons in a cohort of 50 patients. The objective evaluation included the difference in bone position between the artificial intelligence (AI) generated and actual surgical plans for the patient, along with discrepancies in postoperative cephalometric analysis outcomes. Results: The binary relevance extreme gradient boosting model performed best, with diagnostic success rates > 90% for six different kinds of dento-maxillofacial deformities; the exception was maxillary overdevelopment (89.27%). AUC was > 0.88 for all diagnostic types. Median score for the surgical plans was 9, and was improved after human–computer interaction. There was no statistically significant difference between the actual and AI- groups. Conclusions: Machine learning algorithms are effective for diagnosis and surgical planning of dento-maxillofacial deformities and help improve diagnostic efficiency, especially in lower medical centers. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
12. Clinically Oriented CBCT Periapical Lesion Evaluation via 3D CNN Algorithm.
- Author
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Fu, W.T., Zhu, Q.K., Li, N., Wang, Y.Q., Deng, S.L., Chen, H.P., Shen, J., Meng, L.Y., and Bian, Z.
- Subjects
CONVOLUTIONAL neural networks ,CONE beam computed tomography ,RECEIVER operating characteristic curves ,PERIAPICAL periodontitis ,ALGORITHMS - Abstract
Apical periodontitis (AP) is one of the most prevalent disorders in dentistry. However, it can be underdiagnosed in asymptomatic patients. In addition, the perioperative evaluation of 3-dimensional (3D) lesion volume is of great clinical relevance, but the required slice-by-slice manual delineation method is time- and labor-intensive. Here, for quickly and accurately detecting and segmenting periapical lesions (PALs) associated with AP on cone beam computed tomography (CBCT) images, we proposed and geographically validated a novel 3D deep convolutional neural network algorithm, named PAL-Net. On the internal 5-fold cross-validation set, our PAL-Net achieved an area under the receiver operating characteristic curve (AUC) of 0.98. The algorithm also improved the diagnostic performance of dentists with varying levels of experience, as evidenced by their enhanced average AUC values (junior dentists: 0.89–0.94; senior dentists: 0.91–0.93), and significantly reduced the diagnostic time (junior dentists: 69.3 min faster; senior dentists: 32.4 min faster). Moreover, our PAL-Net achieved an average Dice similarity coefficient over 0.87 (0.85–0.88), which is superior or comparable to that of other existing state-of-the-art PAL segmentation algorithms. Furthermore, we validated the generalizability of the PAL-Net system using multiple external data sets from Central, East, and North China, showing that our PAL-Net has strong robustness. Our PAL-Net can help improve the diagnostic performance and speed of dentists working from CBCT images, provide clinically relevant volume information to dentists, and can potentially be applied in dental clinics, especially without expert-level dentists or radiologists. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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13. Development and international validation of logistic regression and machine‐learning models for the prediction of 10‐year molar loss.
- Author
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Troiano, Giuseppe, Nibali, Luigi, Petsos, Hari, Eickholz, Peter, Saleh, Muhammad H. A., Santamaria, Pasquale, Jian, Jao, Shi, Shuwen, Meng, Huanxin, Zhurakivska, Khrystyna, Wang, Hom‐Lay, and Ravidà, Andrea
- Subjects
EXPERIMENTAL design ,DECISION trees ,TOOTH loss ,RESEARCH methodology evaluation ,MOLARS ,TIME ,RESEARCH methodology ,PERIODONTITIS ,CALIBRATION ,MACHINE learning ,ARTIFICIAL intelligence ,PERIODONTAL disease ,RANDOM forest algorithms ,TREATMENT effectiveness ,INTERPROFESSIONAL relations ,DESCRIPTIVE statistics ,LOGISTIC regression analysis ,PREDICTION models ,ARTIFICIAL neural networks ,DATA analysis software ,ALGORITHMS - Abstract
Aim: To develop and validate models based on logistic regression and artificial intelligence for prognostic prediction of molar survival in periodontally affected patients. Materials and Methods: Clinical and radiographic data from four different centres across four continents (two in Europe, one in the United States, and one in China) including 515 patients and 3157 molars were collected and used to train and test different types of machine‐learning algorithms for their prognostic ability of molar loss over 10 years. The following models were trained: logistic regression, support vector machine, K‐nearest neighbours, decision tree, random forest, artificial neural network, gradient boosting, and naive Bayes. In addition, different models were aggregated by means of the ensembled stacking method. The primary outcome of the study was related to the prediction of overall molar loss (MLO) in patients after active periodontal treatment. Results: The general performance in the external validation settings (aggregating three cohorts) revealed that the ensembled model, which combined neural network and logistic regression, showed the best performance among the different models for the prediction of MLO with an area under the curve (AUC) = 0.726. The neural network model showed the best AUC of 0.724 for the prediction of periodontitis‐related molar loss. In addition, the ensembled model showed the best calibration performance. Conclusions: Through a multi‐centre collaboration, both prognostic models for the prediction of molar loss were developed and externally validated. The ensembled model showed the best performance in terms of both discrimination and validation, and it is made freely available to clinicians for widespread use in clinical practice. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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14. A Comprehensive Assessment of Cultivation Environment of Top Innovative High-Level Talents Based on Deep Learning Algorithm.
- Author
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Zhu, Wei and Qin, Jin
- Subjects
MACHINE learning ,DEEP learning ,ECONOMIC conditions in China ,ARTIFICIAL intelligence ,INTERNATIONAL competition ,INNOVATION management ,INDUSTRIES ,SCHOOLS ,ALGORITHMS - Abstract
The quality of talent has increased across all fields due to the constant growth of different industries and the growing job saturation. Real-time job information on recruitment platforms can, therefore, accurately reflect the demand for talent from businesses, serving as a basis for the creation of training policies in schools. In international competition, the development of talents, especially top-level talents, will become more and more crucial. Growing in importance is China's economy and social development. The evaluation of higher vocational and technical talents, however, should also be assessed from a variety of angles, given the diversification of talent training objectives and teaching methods, as well as the expansion of teaching functions. An emerging machine learning technology called deep learning (DL) has been developed to bring machine learning closer to the goals of artificial intelligence. This essay offers a thorough evaluation of the depth of deep learning as it relates to the development of innovative talent in schools. The entire school must be strengthened. It is demonstrated that the average execution time is slashed by 0.0024 s, and the learning sample size error of the DL model is reduced by 0.05276 when compared to the Apriori method. As a result, implementing and researching the DL model can significantly improve both the overall teaching quality of schools and their capacity for innovation. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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15. Privacy Protection Dilemma and Improved Algorithm Construction Based on Deep Learning in the Era of Artificial Intelligence.
- Author
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Tang, Chenming
- Subjects
ARTIFICIAL intelligence ,DEEP learning ,RIGHT of privacy ,PRIVACY ,DATA privacy ,ALGORITHMS ,DILEMMA - Abstract
With the development of science and technology and the progress of social civilization, people have entered the era of big data. People's personal information, privacy data, financial status, and financial information have become more and more transparent. Personal privacy has also changed from traditional physical privacy to portrait privacy and further changed to digital privacy based on artificial intelligence, big data, algorithms, and other technologies. At this stage, a new type of privacy problem has been formed, that is, deep learning privacy. In order to better protect the right to privacy, we should effectively block the protection dilemma of privacy and improve the construction of algorithms in the era of artificial intelligence, strengthen our own awareness of prevention, understand the current situation of infringing and protecting the right to privacy, fully protect the right to privacy, and promote the legal construction of the right to privacy in the era of artificial intelligence. However, China's traditional privacy protection system cannot fully adapt to this change, and this highlights the lack of rules and hidden dangers of efficiency of privacy protection under the influence of penetrating monitoring, mandatory sharing, structural discrimination, and interactive assimilation of artificial intelligence. Therefore, based on the infringement mechanism of artificial intelligence on personal privacy, we should build a monitoring and identification function filing system, establish a segmentation and selective agreement rule system, build a comparative antidiscrimination rule system, innovate the "cloud blocking" rule system to protect our privacy, and comprehensively address the major challenges posed by new technologies such as artificial intelligence to China's privacy protection system. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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16. A novel tree-based algorithm for real-time prediction of rockburst risk using field microseismic monitoring.
- Author
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Yin, Xin, Liu, Quansheng, Pan, Yucong, and Huang, Xing
- Subjects
ALGORITHMS ,ARTIFICIAL intelligence ,TREE pruning ,K-means clustering ,UNDERGROUND areas ,TUNNELS ,HIDDEN Markov models - Abstract
Rockburst is a kind of complex and catastrophic dynamic geological disaster in the development and utilization of underground space, which seriously threatens the safety of personnel and environment. Due to the suddenness in time and randomness in space, the prediction of rockburst becomes a great challenge. Microseismic monitoring is capable to continuously capture rock microfracture signals in real time, which offers an effective means for rockburst prediction. With the explosive growth of monitoring data, the conventional manual forecasting methods are laborious and time-consuming. Therefore, artificial intelligence was introduced to improve prediction efficiency. A novel tree-based algorithm was proposed. Its basic idea was to automatically recognize precursory microseismic sequences for the real-time prediction of rockburst intensity. The database consisting of 1500 microseismic events was analyzed. To establish precursory microseismic sequences, dimensionality reduction of the database was first implemented by t-SNE algorithm. Then, k-means clustering algorithm was employed for labelling 1500 microseismic events. Before that, canopy algorithm was adopted to determine the number of clusters. Finally, 300 precursory microseismic sequences were formed by the grouping rule. They were further partitioned into two parts through stratified sampling: 70% for training and 30% for validation. The validation results indicated that the precursor tree with pruning achieved a higher prediction accuracy of 98.9% than one without pruning on the validation set. And the increase was separately 12.2%, 9.2% and 28.6% on the whole validation set and each classes (low/moderate rockburst). In comparison with low rockburst, moderate rockburst was minority class. The improved accuracy on moderate rockburst suggested that pruning can enhance the recognition ability of precursor tree for the minority class. Additionally, two extra rockburst cases were collected from a diversion tunnel in northwestern China, which provided a complete workflow about how to apply the built precursor tree model to achieve field rockburst warning in engineering practice. The tree-based algorithm served as a new and promising way for the real-time rockburst prediction, which successfully integrated field microseismic monitoring and artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
17. Novel bioinformatic classification system for genetic signatures identification in diffuse large B-cell lymphoma.
- Author
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Zhang, Wei, Yang, Li, Guan, Yu' Qi, Shen, Ke' Feng, Zhang, Mei' Lan, Cai, Hao' Dong, Wang, Jia' Chen, Wang, Ying, Huang, Liang, Cao, Yang, Wang, Na, Tan, Xiao' Hong, Young, Ken He, Xiao, Min, and Zhou, Jian' Feng
- Subjects
DIFFUSE large B-cell lymphomas ,RANDOM forest algorithms ,DNA fingerprinting ,GENETIC models ,NUCLEOTIDE sequencing ,CLASSIFICATION ,PROTEINS ,SEQUENCE analysis ,ONCOGENES ,B cell lymphoma ,ARTIFICIAL intelligence ,RETROSPECTIVE studies ,GENE expression profiling ,CHROMOSOME abnormalities ,FLUORESCENCE in situ hybridization ,RESEARCH funding ,ALGORITHMS ,LONGITUDINAL method ,CARRIER proteins - Abstract
Background: Diffuse large B-cell lymphoma (DLBCL) is a spectrum of disease comprising more than 30% of non-Hodgkin lymphomas. Although studies have identified several molecular subgroups, the heterogeneous genetic background of DLBCL remains ambiguous. In this study we aimed to develop a novel approach and to provide a distinctive classification system to unravel its molecular features.Method: A cohort of 342 patient samples diagnosed with DLBCL in our hospital were retrospectively enrolled in this study. A total of 46 genes were included in next-generation sequencing panel. Non-mutually exclusive genetic signatures for the factorization of complex genomic patterns were generated by random forest algorithm.Results: A total of four non-mutually exclusive signatures were generated, including those with MYC-translocation (MYC-trans) (n = 62), with BCL2-translocation (BCL2-trans) (n = 69), with BCL6-translocation (BCL6-trans) (n = 108), and those with MYD88 and/or CD79B mutations (MC) signatures (n = 115). Comparison analysis between our model and traditional mutually exclusive Schmitz's model demonstrated consistent classification pattern. And prognostic heterogeneity existed within EZB subgroup of de novo DLBCL patients. As for prognostic impact, MYC-trans signature was an independent unfavorable prognostic factor. Furthermore, tumors carrying three different signature markers exhibited significantly inferior prognoses compared with their counterparts with no genetic signature.Conclusion: Compared with traditional mutually exclusive molecular sub-classification, non-mutually exclusive genetic fingerprint model generated from our study provided novel insight into not only the complex genetic features, but also the prognostic heterogeneity of DLBCL patients. [ABSTRACT FROM AUTHOR]- Published
- 2020
- Full Text
- View/download PDF
18. TikTok: CHINA STARTS THE CLOCK.
- Author
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BARRETT, EAMON
- Subjects
ARTIFICIAL intelligence ,ALGORITHMS ,TECHNOLOGICAL innovations ,MOBILE apps - Abstract
The article acknowledges ByteDance, an Internet technology firm based in China, for the development of artificial intelligence-powered algorithms responsible for the mechanics of its video app TikTok. Topics discussed include popularity of TikTok among the Generation Z pre-teenagers, impact on the operations of ByteDance in the field of AI, and AI developments under the administration of its founder, former Microsoft engineer Zhang Yiming.
- Published
- 2020
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