37 results on '"neuro-symbolic"'
Search Results
2. Neuro-symbolic Artificial Intelligence for Patient Monitoring
- Author
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Fenske, Ole, Bader, Sebastian, Kirste, Thomas, Ghosh, Ashish, Editorial Board Member, Meo, Rosa, editor, and Silvestri, Fabrizio, editor
- Published
- 2025
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3. Generalization of temporal logic tasks via future dependent options.
- Author
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Xu, Duo and Fekri, Faramarz
- Subjects
REINFORCEMENT learning ,LOGIC ,GENERALIZATION ,PLANNERS ,ROBOTS ,HORIZON - Abstract
Temporal logic (TL) tasks consist of complex and temporally extended subgoals and they are common for many real-world applications, such as service and navigation robots. However, it is often inefficient or even infeasible to train reinforcement learning (RL) agents to solve multiple TL tasks, since rewards are sparse and non-Markovian in these tasks. A promising solution to this problem is to learn task-conditioned policies which can zero-shot generalize to new TL tasks without further training. However, influenced by some practical issues, such as issues of lossy symbolic observation and long time-horizon of completing TL task, previous works suffer from sample inefficiency in training and sub-optimality (or even infeasibility) in task execution. In order to tackle these issues, this paper proposes an option-based framework to generalize TL tasks, consisting of option training and task execution parts. We have innovations in both parts. In option training, we propose to learn options dependent on the future subgoals via a novel approach. Additionally, we propose to train a multi-step value function which can propagate the rewards of satisfying future subgoals more efficiently in long-horizon tasks. In task execution, in order to ensure the optimality and safety, we propose a model-free MPC planner for option selection, circumventing the learning of a transition model which is required by previous MPC planners. In experiments on three different domains, we evaluate the generalization capability of the agent trained by the proposed method, showing its significant advantage over previous methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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4. Out-of-Distribution Detection with Logical Reasoning (Extended Abstract)
- Author
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Kirchheim, Konstantin, Gonschorek, Tim, Ortmeier, Frank, Goos, Gerhard, Series 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, Hotho, Andreas, editor, and Rudolph, Sebastian, editor
- Published
- 2024
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5. Logic Preference Fusion Reasoning on Recommendation
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Tong, Xingying, Yuan, Huanhuan, Hao, Yongjing, Fang, Junhua, Liu, Guanfeng, Zhao, Pengpeng, Goos, Gerhard, Series 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, Zhang, Wenjie, editor, Tung, Anthony, editor, Zheng, Zhonglong, editor, Yang, Zhengyi, editor, Wang, Xiaoyang, editor, and Guo, Hongjie, editor
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- 2024
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6. Learning Reward Machines in Cooperative Multi-agent Tasks
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Ardon, Leo, Furelos-Blanco, Daniel, Russo, Alessandra, 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, Amigoni, Francesco, editor, and Sinha, Arunesh, editor
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- 2024
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7. Neural-Symbolic Recommendation with Graph-Enhanced Information
- Author
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Chen, Bang, Peng, Wei, Wu, Maonian, Zheng, Bo, Zhu, Shaojun, 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, Luo, Biao, editor, Cheng, Long, editor, Wu, Zheng-Guang, editor, Li, Hongyi, editor, and Li, Chaojie, editor
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- 2024
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8. NSSC: a neuro-symbolic AI system for enhancing accuracy of named entity recognition and linking from oncologic clinical notes
- Author
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García-Barragán, Álvaro, Sakor, Ahmad, Vidal, Maria-Esther, Menasalvas, Ernestina, Gonzalez, Juan Cristobal Sanchez, Provencio, Mariano, and Robles, Víctor
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- 2024
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9. Surveying neuro-symbolic approaches for reliable artificial intelligence of things
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Lu, Zhen, Afridi, Imran, Kang, Hong Jin, Ruchkin, Ivan, and Zheng, Xi
- Published
- 2024
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10. Toward Explainable Reasoning in 6G: A Proof of Concept Study on Radio Resource Allocation
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Farhad Rezazadeh, Sergio Barrachina-Munoz, Hatim Chergui, Josep Mangues, Mehdi Bennis, Dusit Niyato, Houbing Song, and Lingjia Liu
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B5G/6G ,AI/ML ,neuro-symbolic ,XAI ,GNN ,DRL ,Telecommunication ,TK5101-6720 ,Transportation and communications ,HE1-9990 - Abstract
The move toward artificial intelligence (AI)-native sixth-generation (6G) networks has put more emphasis on the importance of explainability and trustworthiness in network management operations, especially for mission-critical use-cases. Such desired trust transcends traditional post-hoc explainable AI (XAI) methods to using contextual explanations for guiding the learning process in an in-hoc way. This paper proposes a novel graph reinforcement learning (GRL) framework named TANGO which relies on a symbolic subsystem. It consists of a Bayesian-graph neural network (GNN) Explainer, whose outputs, in terms of edge/node importance and uncertainty, are periodically translated to a logical GRL reward function. This adjustment is accomplished through defined symbolic reasoning rules within a Reasoner. Considering a real-world testbed proof-of-concept (PoC), a gNodeB (gNB) radio resource allocation problem is formulated, which aims to minimize under- and over-provisioning of physical resource blocks (PRBs) while penalizing decisions emanating from the uncertain and less important edge-nodes relations. Our findings reveal that the proposed in-hoc explainability solution significantly expedites convergence compared to standard GRL baseline and other benchmarks in the deep reinforcement learning (DRL) domain. The experiment evaluates performance in AI, complexity, energy consumption, robustness, network, scalability, and explainability metrics. Specifically, the results show that TANGO achieves a noteworthy accuracy of 96.39% in terms of optimal PRB allocation in inference phase, outperforming the baseline by $1.22\times $ .
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- 2024
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11. Extension of constraint-procedural logic-generated environments for deep Q-learning agent training and benchmarking.
- Author
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Gasperis, Giovanni De, Costantini, Stefania, Rafanelli, Andrea, Migliarini, Patrizio, Letteri, Ivan, and Dyoub, Abeer
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DEEP reinforcement learning ,REINFORCEMENT learning ,CONSTRAINT programming ,VIRTUAL reality ,AUTONOMOUS robots ,ROBOT programming - Abstract
Autonomous robots can be employed in exploring unknown environments and performing many tasks, such as, e.g. detecting areas of interest, collecting target objects, etc. Deep reinforcement learning (RL) is often used to train this kind of robot. However, concerning the artificial environments aimed at testing the robot, there is a lack of available data sets and a long time is needed to create them from scratch. A good data set is in fact usually produced with high effort in terms of cost and human work to satisfy the constraints imposed by the expected results. In the first part of this paper, we focus on the specification of the properties of the solutions needed to build a data set, making the case of environment exploration. In the proposed approach, rather than using imperative programming, we explore the possibility of generating data sets using constraint programming in Prolog. In this phase, geometric predicates describe a virtual environment according to inter-space requirements. The second part of the paper is focused on testing the generated data set in an AI gym via space search techniques. We developed a Neuro-Symbolic agent built from the following: (i) A deep Q-learning component implemented in Python, able to address via RL a search problem in the virtual space; the agent has the goal to explore a generated virtual environment to seek for a target, improving its performance through a RL process. (ii) A symbolic component able to re-address the search when the Q-learning component gets stuck in a part of the virtual environment; these components stimulate the agent to move to and explore other parts of the environment. Wide experimentation has been performed, with promising results, and is reported, to demonstrate the effectiveness of the approach. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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12. Symmetric Graph-Based Visual Question Answering Using Neuro-Symbolic Approach.
- Author
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Moon, Jiyoun
- Subjects
- *
QUESTION answering systems , *NATURAL language processing , *HUMAN-robot interaction , *HUMAN ecology , *DATABASES - Abstract
As the applications of robots expand across a wide variety of areas, high-level task planning considering human–robot interactions is emerging as a critical issue. Various elements that facilitate flexible responses to humans in an ever-changing environment, such as scene understanding, natural language processing, and task planning, are thus being researched extensively. In this study, a visual question answering (VQA) task was examined in detail from among an array of technologies. By further developing conventional neuro-symbolic approaches, environmental information is stored and utilized in a symmetric graph format, which enables more flexible and complex high-level task planning. We construct a symmetric graph composed of information such as color, size, and position for the objects constituting the environmental scene. VQA, using graphs, largely consists of a part expressing a scene as a graph, a part converting a question into SPARQL, and a part reasoning the answer. The proposed method was verified using a public dataset, CLEVR, with which it successfully performed VQA. We were able to directly confirm the process of inferring answers using SPARQL queries converted from the original queries and environmental symmetric graph information, which is distinct from existing methods that make it difficult to trace the path to finding answers. [ABSTRACT FROM AUTHOR]
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- 2023
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13. Neuro-Symbolic Program Synthesis for Data-Efficient Learning
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Barke, Shraddha Govind
- Subjects
Computer science ,Linguistics ,Domain-Specific Languages ,Neuro-Symbolic ,Program Synthesis - Abstract
The dream of intelligent assistants to enhance programmer productivity has now become a concrete reality, with rapid advances in artificial intelligence. Large language models (LLMs) have demonstrated impressive capabilities in various domains based on the vast amount of data used to train them. However, tasks which require structured reasoning or those underrepresented in their training data continue to be a challenge for LLMs.Program synthesis offers an alternative approach to learning, particularly effective in data-efficient domains with limited training data. It focuses on searching for a program in a domain-specific language that satisfies a given user intent. Program synthesis enables learning of interpretable models that provide correctness and generalizability guarantees from a few data points leading to data-efficient learning. However, purely symbolic methods based on combinatorial search scale poorly to complex problems. To address these challenges, a hybrid paradigm called neurosymbolic synthesis is being explored. This approach integrates the best of both worlds by combining neural networks with symbolic reasoning, thereby enhancing therobustness of AI assistants.This dissertation includes technical contributions spanning symbolic, neurosymbolic and neural approaches to program synthesis. It explores the application of symbolic constraint-based synthesis in SyPhon to model human language, hybrid techniques in Probe and HySynth that guide symbolic search with a probabilistic model, and neural LLM-driven code generation to automate spreadsheet tasks for end users. Additionally, it focuses on strategies to improve user experience by developing more intuitive and user-friendly programming assistants for the future.
- Published
- 2024
14. Context-Driven Visual Object Recognition Based on Knowledge Graphs
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Monka, Sebastian, Halilaj, Lavdim, Rettinger, Achim, 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, Sattler, Ulrike, editor, Hogan, Aidan, editor, Keet, Maria, editor, Presutti, Valentina, editor, Almeida, João Paulo A., editor, Takeda, Hideaki, editor, Monnin, Pierre, editor, Pirrò, Giuseppe, editor, and d’Amato, Claudia, editor
- Published
- 2022
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15. Toward Human-Level Qualitative Reasoning with a Natural Language of Thought
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Jackson, Philip C., Jr., Kacprzyk, Janusz, Series Editor, Klimov, Valentin V., editor, and Kelley, David J., editor
- Published
- 2022
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16. The Piagetian Modeler
- Author
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Miller, Michael S. P., 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, Goertzel, Ben, editor, Iklé, Matthew, editor, and Potapov, Alexey, editor
- Published
- 2022
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17. Learning Visual Models Using a Knowledge Graph as a Trainer
- Author
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Monka, Sebastian, Halilaj, Lavdim, Schmid, Stefan, Rettinger, Achim, 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, Hotho, Andreas, editor, Blomqvist, Eva, editor, Dietze, Stefan, editor, Fokoue, Achille, editor, Ding, Ying, editor, Barnaghi, Payam, editor, Haller, Armin, editor, Dragoni, Mauro, editor, and Alani, Harith, editor
- Published
- 2021
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18. Neuro-Symbolic Word Embedding Using Textual and Knowledge Graph Information.
- Author
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Oh, Dongsuk, Lim, Jungwoo, and Lim, Heuiseok
- Subjects
KNOWLEDGE graphs ,NATURAL language processing ,REPRESENTATIONS of graphs ,SEQUENTIAL learning - Abstract
The construction of high-quality word embeddings is essential in natural language processing. In existing approaches using a large text corpus, the word embeddings learn only sequential patterns in the context; thus, accurate learning of the syntax and semantic relationships between words is limited. Several methods have been proposed for constructing word embeddings using syntactic information. However, these methods are not trained for the semantic relationships between words in sentences or external knowledge. In this paper, we present a method for improved word embeddings using symbolic graphs for external knowledge and the relationships of the syntax and semantic role between words in sentences. The proposed model sequentially learns two symbolic graphs with different properties through a graph convolutional network (GCN) model. A new symbolic graph representation is generated to understand sentences grammatically and semantically. This graph representation includes comprehensive information that combines dependency parsing and semantic role labeling. Subsequently, word embeddings are constructed through the GCN model. The same GCN model initializes the word representations that are created in the first step and trains the relationships of ConceptNet using the relationships between words. The proposed word embeddings outperform the baselines in benchmarks and extrinsic tasks. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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19. Neuro-Symbolic Artificial Intelligence: Application for Control the Quality of Product Labeling
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Golovko, Vladimir, Kroshchanka, Aliaksandr, Kovalev, Mikhail, Taberko, Valery, Ivaniuk, Dzmitry, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Prates, Raquel Oliveira, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, Golenkov, Vladimir, editor, Krasnoproshin, Victor, editor, Golovko, Vladimir, editor, and Azarov, Elias, editor
- Published
- 2020
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20. LICALITY—Likelihood and Criticality: Vulnerability Risk Prioritization Through Logical Reasoning and Deep Learning.
- Author
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Zeng, Zhen, Yang, Zhun, Huang, Dijiang, and Chung, Chun-Jen
- Abstract
Security and risk assessment aims to prioritize detected vulnerabilities for remediation in a computer networking system. The widely used expert-based risk prioritization approach, e.g., Common Vulnerability Scoring System (CVSS), cannot realistically associate vulnerabilities to the likelihood of exploitation. The CVSS metrics are calculated from static formulas, and cannot easily integrate attackers’ motivations and capabilities w.r.t. the network environmental factors. To address this issue, this paper proposes LICALITY, a vulnerability risk prioritization system. LICALITY captures the attacker’s preference on exploiting vulnerabilities through a threat modeling method, and learns threat attributes that contribute to the exploitation of vulnerability. LICALITY creatively uses a neuro-symbolic model, with neural network (NN) and probabilistic logic programming (PLP) techniques, to learn such threat attributes. The risk of vulnerability is assessed from the criticality of exploitation and the likelihood of exploitation. LICALITY consolidates these two measurements by using a logic reasoning engine. In the evaluation, the historical threat and future threat are from real attack scenarios. The results reveal that LICALITY reduces the vulnerability remediation work of the future threat required by the CVSS by a factor of 2.89 in the first case study and by a factor of 1.85 in the second case study. Such future threats are identified as the top routinely exploited vulnerabilities and the APT attack chained vulnerabilities reported in the Cybersecurity and Infrastructure Security Agency (CISA) alerts. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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21. Fair Classification with Explicit Constraints: a Neuro-symbolic Approach with Logic Tensor Networks.
- Author
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Greco, G, SCHETTINI, RAIMONDO, PALMONARI, MATTEO LUIGI, GRECO, GRETA, Greco, G, SCHETTINI, RAIMONDO, PALMONARI, MATTEO LUIGI, and GRECO, GRETA
- Abstract
Gli algoritmi sono vulnerabili a sviluppare pregiudizi che potrebbero rendere le loro decisioni ingiuste nei confronti di particolari gruppi di individui. La fairness comporta una serie di aspetti che dipendono fortemente dal dominio di applicazione che considera diverse nozioni su cosa sia una decisione giusta nelle situazioni che influiscono sugli individui della popolazione. Le precise differenze, implicazioni e ortogonalità tra queste nozioni non sono state ancora completamente analizzate e il lavoro prova a mattere ordini in questo zoo di definizioni. Quando si tratta di far rispettare tali vincoli, la maggior parte dei modelli di mitigazione in-processing incorpora vincoli di fairness come componente fondamentale della loss function e richiede quindi aggiustamenti a livello di codice per adattarsi a contesti specifici e domini. Piuttosto che fare affidamento su un approccio procedurale, il nostro modello sfrutta la struttura dichiarativa conoscenza acquisita per codificare i requisiti di equità sotto forma di regole logiche che catturano affermazioni del linguaggio naturale bigue e precise. Proponiamo un'integrazione neuro-simbolica basato su Logic Tensor Networks che combina apprendimento di reti nueurali basato sui daticonoscenze logiche di alto livello, consentendo di eseguire task di classificazione riducendo discriminazione. Le prove sperimentali mostrano che le prestazioni sono buone quanto quelle dello stato dell’arte fornendo così un quadro flessibile per tenere conto della non discriminazione, spesso a un costo modesto in termini di precisione., Algorithms are vulnerable to biases that might render their decisions unfair toward particular groups of individuals. Fairness comes with a range of facets that strongly depend on the application domain that consider different notions of what is a fair decision in situations impacting individuals in the population. The precise differences, implications and orthogonality between these notions have not yet been fully analyzed and we try to make some order out of this zoo of definitions. When it comes about enforcing such constraints, most in-processing mitigation models embed fairness constraints as fundamental component of the loss function thus requiring code-level adjustments to adapt to specific contexts and domains. Rather than relying on a procedural approach, our model leverages declarative structured knowledge to encode fairness requirements in the form of logic rules capturing unam- biguous and precise natural language statements. We propose a neuro-symbolic integration approach based on Logic Tensor Networks that combines data-driven network-based learning with high-level logical knowledge, allowing to perform classification tasks while reducing discrimination. Experimental evidence shows that performance is as good as state-of-the-art thus providing a flexible framework to account for non-discrimination often at a modest cost in terms of accuracy.
- Published
- 2024
22. Detect, Understand, Act: A Neuro-symbolic Hierarchical Reinforcement Learning Framework.
- Author
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Mitchener, Ludovico, Tuckey, David, Crosby, Matthew, and Russo, Alessandra
- Subjects
INDUCTION (Logic) ,LOGIC programming ,HYBRID computers (Computer architecture) ,COMPUTER vision - Abstract
In this paper we introduce Detect, Understand, Act (DUA), a neuro-symbolic reinforcement learning framework. The Detect component is composed of a traditional computer vision object detector and tracker. The Act component houses a set of options, high-level actions enacted by pre-trained deep reinforcement learning (DRL) policies. The Understand component provides a novel answer set programming (ASP) paradigm for symbolically implementing a meta-policy over options and effectively learning it using inductive logic programming (ILP). We evaluate our framework on the Animal-AI (AAI) competition testbed, a set of physical cognitive reasoning problems. Given a set of pre-trained DRL policies, DUA requires only a few examples to learn a meta-policy that allows it to improve the state-of-the-art on multiple of the most challenging categories from the testbed. DUA constitutes the first holistic hybrid integration of computer vision, ILP and DRL applied to an AAI-like environment and sets the foundations for further use of ILP in complex DRL challenges. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
23. Neuro-Symbolic Word Embedding Using Textual and Knowledge Graph Information
- Author
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Dongsuk Oh, Jungwoo Lim, and Heuiseok Lim
- Subjects
neuro-symbolic ,graph convolutional network ,word embedding ,dependency parsing ,semantic role labeling ,ConceptNet ,Technology ,Engineering (General). Civil engineering (General) ,TA1-2040 ,Biology (General) ,QH301-705.5 ,Physics ,QC1-999 ,Chemistry ,QD1-999 - Abstract
The construction of high-quality word embeddings is essential in natural language processing. In existing approaches using a large text corpus, the word embeddings learn only sequential patterns in the context; thus, accurate learning of the syntax and semantic relationships between words is limited. Several methods have been proposed for constructing word embeddings using syntactic information. However, these methods are not trained for the semantic relationships between words in sentences or external knowledge. In this paper, we present a method for improved word embeddings using symbolic graphs for external knowledge and the relationships of the syntax and semantic role between words in sentences. The proposed model sequentially learns two symbolic graphs with different properties through a graph convolutional network (GCN) model. A new symbolic graph representation is generated to understand sentences grammatically and semantically. This graph representation includes comprehensive information that combines dependency parsing and semantic role labeling. Subsequently, word embeddings are constructed through the GCN model. The same GCN model initializes the word representations that are created in the first step and trains the relationships of ConceptNet using the relationships between words. The proposed word embeddings outperform the baselines in benchmarks and extrinsic tasks.
- Published
- 2022
- Full Text
- View/download PDF
24. Model-Agents of Change: A Meta-Cognitive, Interdisciplinary, Self-Similar, Synergetic Approach to Neuro-Symbolic Semantic Search and Retrieval Augmented Generation
- Author
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Waterworth, Karissa
- Subjects
- Computer Science, artificial intelligence, neuro-symbolic, semantic search, retrieval augmented generation, interdisciplinary, design thinking, lateral thinking, synergetics, synergy, meta-cognition, entrepreneurship, conceptual recursion, integration, hybridization, hybrid artificial intelligence, psychology, psychotherapy, creativity, innovation
- Abstract
Drawing inspiration from lateral thinking, synergetics, psychology, creativity, and business, this research project employs an interdisciplinary approach to investigate the research process which drives innovation in the field of artificial intelligence. This research project explores methods for harnessing the synergy present in the latest, neuro-symbolic paradigm of artificial intelligence, while noting similarities between the first two waves of AI and dual process theory. It attempts to integrate unconventional, yet potentially promising interdisciplinary ideas into a proof of concept, including creative tools and techniques like the Six Thinking Hats, methods of psychotherapy, including cognitive behavioral therapy and internal family systems, as well as principles related to conflict resolution and ``tensegrity". The proof of concept is a hybrid semantic search system for research papers in computer science, constructed using a process of rapid prototyping and iteration, with special consideration for evaluating how more modular, interpretable, and human-centric approaches to system design can help narrow the gap between cutting-edge AI research and ethical, practical application in business. This research is conducted with the hope of opening the research field to greater creative possibility, as well as deliberate action towards creating more sustainable and human-centric artificial intelligence systems.
- Published
- 2024
25. Plugin Framework-Based Neuro-Symbolic Grounded Task Planning for Multi-Agent System
- Author
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Jiyoun Moon
- Subjects
neuro-symbolic ,task planning ,planning domain definition language ,multi agent reinforcement learning ,cooperative–competitive teaming ,Chemical technology ,TP1-1185 - Abstract
As the roles of robots continue to expand in general, there is an increasing demand for research on automated task planning for a multi-agent system that can independently execute tasks in a wide and dynamic environment. This study introduces a plugin framework in which multiple robots can be involved in task planning in a broad range of areas by combining symbolic and connectionist approaches. The symbolic approach for understanding and learning human knowledge is useful for task planning in a wide and static environment. The network-based connectionist approach has the advantage of being able to respond to an ever-changing dynamic environment. A planning domain definition language-based planning algorithm, which is a symbolic approach, and the cooperative–competitive reinforcement learning algorithm, which is a connectionist approach, were utilized in this study. The proposed architecture is verified through a simulation. It is also verified through an experiment using 10 unmanned surface vehicles that the given tasks were successfully executed in a wide and dynamic environment.
- Published
- 2021
- Full Text
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26. Knowledge extraction from unstructured data
- Author
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Sakor, Ahmad and Sakor, Ahmad
- Abstract
Data availability is becoming more essential, considering the current growth of web-based data. The data available on the web are represented as unstructured, semi-structured, or structured data. In order to make the web-based data available for several Natural Language Processing or Data Mining tasks, the data needs to be presented as machine-readable data in a structured format. Thus, techniques for addressing the problem of capturing knowledge from unstructured data sources are needed. Knowledge extraction methods are used by the research communities to address this problem; methods that are able to capture knowledge in a natural language text and map the extracted knowledge to existing knowledge presented in knowledge graphs (KGs). These knowledge extraction methods include Named-entity recognition, Named-entity Disambiguation, Relation Recognition, and Relation Linking. This thesis addresses the problem of extracting knowledge over unstructured data and discovering patterns in the extracted knowledge. We devise a rule-based approach for entity and relation recognition and linking. The defined approach effectively maps entities and relations within a text to their resources in a target KG. Additionally, it overcomes the challenges of recognizing and linking entities and relations to a specific KG by employing devised catalogs of linguistic and domain-specific rules that state the criteria to recognize entities in a sentence of a particular language, and a deductive database that encodes knowledge in community-maintained KGs. Moreover, we define a Neuro-symbolic approach for the tasks of knowledge extraction in encyclopedic and domain-specific domains; it combines symbolic and sub-symbolic components to overcome the challenges of entity recognition and linking and the limitation of the availability of training data while maintaining the accuracy of recognizing and linking entities. Additionally, we present a context-aware framework for unveiling semantically rela
- Published
- 2023
27. Neuro-symbolic recommendation model based on logic query.
- Author
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Wu, Maonian, Chen, Bang, Zhu, Shaojun, Zheng, Bo, Peng, Wei, and Zhang, Mingyi
- Subjects
- *
PREDICATE (Logic) , *VECTOR spaces , *COMPUTATIONAL complexity , *LOGIC , *STATISTICS - Abstract
Recommendation systems assist users in finding items that are relevant to them. However, recommendation is not only an inductive statistics problem using data; it is also a cognitive task of reasoning decisions based on knowledge extracted from information. Hence, a logic system can naturally be incorporated for reasoning in a recommendation task. Although logic-based hard-rule approaches can provide a powerful reasoning ability, they struggle to cope with inconsistent and incomplete knowledge in real-world tasks, especially for complex tasks such as recommendation. To address these issues, we propose a neuro-symbolic recommendation model, which transforms user history interactions into a logic expression and then transforms the recommendation prediction into a query task based on this logic expression. The logic expressions are then computed based on the modular logic operations of the neural network. We also construct an implicit logic encoder to reasonably reduce the complexity of the logic computation. Finally, a user's interest items can be queried in the vector space based on the computation results. Experiments on three well-known datasets verified that the proposed method outperforms state of the art shallow, deep, session, and reasoning models. • We transforms recommendation problem into a first-order logic-based query problem. • We improve model's characterization ability while reduce its computational complexity. • We use separate neural networks for logic predicate operations. • We demonstrate our method on several real recommendation datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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28. Neural Network Rule Extraction to Detect Credit Card Fraud
- Author
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Ryman-Tubb, Nick F., Krause, Paul, Iliadis, Lazaros, editor, and Jayne, Chrisina, editor
- Published
- 2011
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- View/download PDF
29. DeepInfusion: A dynamic infusion based-neuro-symbolic AI model for segmentation of intracranial aneurysms.
- Author
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Abdullah, Iram, Javed, Ali, Malik, Khalid Mahmood, and Malik, Ghaus
- Subjects
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ARTIFICIAL neural networks , *INTRACRANIAL aneurysms , *DEEP learning , *IMAGE segmentation , *CLINICAL decision support systems , *ARTIFICIAL intelligence - Abstract
The detection and segmentation of cerebral aneurysms is a crucial step in the development of a clinical decision support system for estimating aneurysm rupture risk. However, accurately identifying and segmenting regions of interest in two-dimensional (2D) medical images is often challenging, particularly when using deep learning (DL) methods on small datasets with limited annotated data. The accuracy of DL approaches is often affected by the availability of large, annotated training datasets that are required for effective deep learning. Additionally, when using DL to differentiate aneurysms from arterial loops in 2D DSA images, DL can fail to detect aneurysms in areas where dye concentration is low. To address these issues and enhance the reliability and accuracy of aneurysm detection and segmentation methods, incorporating medical expert-advised, hand-crafted features can provide a clinical perspective to DL methods. This approach can help to improve the performance of DL methods by providing additional information that is not captured in the data. To this end, a novel Neuro-symbolic AI-based DeepInfusion model is proposed which allows for the infusion of human intellect through hand-crafted features into deep neural networks (DNNs), thus combining the strengths of DL with the knowledge and expertise of medical professionals. The proposed approach includes a novel technique for dynamic layer selection and feature weight adjustment during the model infusion process. The performance of the DeepInfusion model is evaluated on an in-house prepared dataset of 409 DSA images, and experimental results demonstrate the effectiveness of the proposed method for the segmentation of cerebral aneurysms. The model achieves an IOU score of 96.76% and an F1-score of 94.15% on unseen DSA images. The model is also tested on two publicly available datasets of Kvasir-SEG polyp and DRIVE for vessel segmentation of retinal images. The results show a significant improvement compared to existing methods, which indicates the generalizability of the approach in medical segmentation. The complete code for DeepInfusion is available on our GitHub repository at https://github.com/smileslab/deep-infusion/blob/main/deepinfusion.ipynb. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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30. CLEVR-Math : A Dataset for Compositional Language, Visual and Mathematical Reasoning
- Author
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Dahlgren Lindström, Adam, Abraham, Savitha Sam, Dahlgren Lindström, Adam, and Abraham, Savitha Sam
- Abstract
We introduce CLEVR-Math, a multi-modal math word problems dataset consisting of simple math word problems involving addition/subtraction, represented partly by a textual description and partly by an image illustrating the scenario. The text describes actions performed on the scene that is depicted in the image. Since the question posed may not be about the scene in the image, but about the state of the scene before or after the actions are applied, the solver envision or imagine the state changes due to these actions. Solving these word problems requires a combination of language, visual and mathematical reasoning. We apply state-of-the-art neural and neuro-symbolic models for visual question answering on CLEVR-Math and empirically evaluate their performances. Our results show how neither method generalise to chains of operations. We discuss the limitations of the two in addressing the task of multi-modal word problem solving.
- Published
- 2022
31. Probabilistic knowledge infusion through symbolic features for context-aware activity recognition
- Author
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Luca Arrotta, Gabriele Civitarese, and Claudio Bettini
- Subjects
Context-awareness ,Settore INF/01 - Informatica ,Hardware and Architecture ,Computer Networks and Communications ,Human activity recognition ,Neuro-symbolic ,Software ,Computer Science Applications ,Information Systems - Published
- 2023
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- View/download PDF
32. Detect, understand, act: a neuro-symbolic hierarchical reinforcement learning framework
- Author
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Ludovico Mitchener, David Tuckey, Matthew Crosby, and Alessandra Russo
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Deep reinforcement learning ,Technology ,Science & Technology ,1702 Cognitive Sciences ,Answer set programming ,Inductive logic programming ,Computer Science, Artificial Intelligence ,Artificial Intelligence ,0806 Information Systems ,Computer Science ,Hierarchical reinforcement learning ,0801 Artificial Intelligence and Image Processing ,Artificial Intelligence & Image Processing ,Neuro-symbolic ,Software - Abstract
In this paper we introduce Detect, Understand, Act (DUA), a neuro-symbolic reinforcement learning framework. The Detect component is composed of a traditional computer vision object detector and tracker. The Act component houses a set of options, high-level actions enacted by pre-trained deep reinforcement learning (DRL) policies. The Understand component provides a novel answer set programming (ASP) paradigm for symbolically implementing a meta-policy over options and effectively learning it using inductive logic programming (ILP). We evaluate our framework on the Animal-AI (AAI) competition testbed, a set of physical cognitive reasoning problems. Given a set of pre-trained DRL policies, DUA requires only a few examples to learn a meta-policy that allows it to improve the state-of-the-art on multiple of the most challenging categories from the testbed. DUA constitutes the first holistic hybrid integration of computer vision, ILP and DRL applied to an AAI-like environment and sets the foundations for further use of ILP in complex DRL challenges.
- Published
- 2022
33. Probabilistic knowledge infusion through symbolic features for context-aware activity recognition.
- Author
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Arrotta, Luca, Civitarese, Gabriele, and Bettini, Claudio
- Subjects
HUMAN activity recognition ,DEEP learning ,MACHINE learning ,HYBRID systems - Abstract
In the general machine learning domain, solutions based on the integration of deep learning models with knowledge-based approaches are emerging. Indeed, such hybrid systems have the advantage of improving the recognition rate and the model's interpretability. At the same time, they require a significantly reduced amount of labeled data to reliably train the model. However, these techniques have been poorly explored in the sensor-based Human Activity Recognition (HAR) domain. The common-sense knowledge about activity execution can potentially improve purely data-driven approaches. While a few knowledge infusion approaches have been proposed for HAR, they rely on rigid logic formalisms that do not take into account uncertainty. In this paper, we propose P-NIMBUS, a novel knowledge infusion approach for sensor-based HAR that relies on probabilistic reasoning. A probabilistic ontology is in charge of computing symbolic features that are combined with the features automatically extracted by a CNN model from raw sensor data and high-level context data. In particular, the symbolic features encode probabilistic common-sense knowledge about the activities consistent with the user's surrounding context. These features are infused within the model before the classification layer. We experimentally evaluated P-NIMBUS on a HAR dataset of mobile devices sensor data that includes 14 different activities performed by 25 users. Our results show that P-NIMBUS outperforms state-of-the-art neuro-symbolic approaches, with the advantage of requiring a limited amount of training data to reach satisfying recognition rates (i.e., more than 80% of F1-score with only 20% of labeled data). [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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34. Informed Machine Learning -- A Taxonomy and Survey of Integrating Knowledge into Learning Systems
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Jochen Garcke, Michal Walczak, Sven Giesselbach, Katharina Beckh, Rajkumar Ramamurthy, Annika Pick, Bogdan Georgiev, Sebastian Mayer, Jannis Schuecker, Julius Pfrommer, Christian Bauckhage, Raoul Heese, Birgit Kirsch, Laura von Rueden, and Publica
- Subjects
FOS: Computer and information sciences ,Computer Science - Machine Learning ,Computer science ,Process (engineering) ,Computer Science - Artificial Intelligence ,Informed ,Neuro-Symbolic ,Machine Learning (stat.ML) ,02 engineering and technology ,Machine learning ,computer.software_genre ,Field (computer science) ,Machine Learning (cs.LG) ,expert knowledge ,Statistics - Machine Learning ,020204 information systems ,Taxonomy (general) ,0202 electrical engineering, electronic engineering, information engineering ,survey ,Representation (mathematics) ,Rule of inference ,Taxonomy ,Training set ,prior knowledge ,hybrid ,business.industry ,Pipeline (software) ,Computer Science Applications ,machine learning ,Artificial Intelligence (cs.AI) ,Computational Theory and Mathematics ,Key (cryptography) ,Artificial intelligence ,business ,computer ,Information Systems - Abstract
Despite its great success, machine learning can have its limits when dealing with insufficient training data. A potential solution is the additional integration of prior knowledge into the training process which leads to the notion of informed machine learning. In this paper, we present a structured overview of various approaches in this field. We provide a definition and propose a concept for informed machine learning which illustrates its building blocks and distinguishes it from conventional machine learning. We introduce a taxonomy that serves as a classification framework for informed machine learning approaches. It considers the source of knowledge, its representation, and its integration into the machine learning pipeline. Based on this taxonomy, we survey related research and describe how different knowledge representations such as algebraic equations, logic rules, or simulation results can be used in learning systems. This evaluation of numerous papers on the basis of our taxonomy uncovers key methods in the field of informed machine learning., Accepted at IEEE Transactions on Knowledge and Data Engineering: https://ieeexplore.ieee.org/document/9429985
- Published
- 2019
35. Plugin Framework-Based Neuro-Symbolic Grounded Task Planning for Multi-Agent System.
- Author
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Moon, Jiyoun
- Subjects
MULTIAGENT systems ,FLOOR plans ,REINFORCEMENT learning ,MACHINE learning ,ALGORITHMS - Abstract
As the roles of robots continue to expand in general, there is an increasing demand for research on automated task planning for a multi-agent system that can independently execute tasks in a wide and dynamic environment. This study introduces a plugin framework in which multiple robots can be involved in task planning in a broad range of areas by combining symbolic and connectionist approaches. The symbolic approach for understanding and learning human knowledge is useful for task planning in a wide and static environment. The network-based connectionist approach has the advantage of being able to respond to an ever-changing dynamic environment. A planning domain definition language-based planning algorithm, which is a symbolic approach, and the cooperative–competitive reinforcement learning algorithm, which is a connectionist approach, were utilized in this study. The proposed architecture is verified through a simulation. It is also verified through an experiment using 10 unmanned surface vehicles that the given tasks were successfully executed in a wide and dynamic environment. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
36. AGENT BASED MODELLING FOR NEW TECHNIQUE IN NEURO SYMBOLIC INTEGRATION
- Author
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Sathasivam, Saratha, Velavan, Muraly, Sathasivam, Saratha, and Velavan, Muraly
- Abstract
Logic program and neural networks are two important aspects in artificial intelligence. This paper is part of an endeavour towards neural networks and logic programming integration. The goal in performing logic programming based on the energy minimization scheme is to achieve the best ratio of global minimum. However, there is no guarantee to find the best minimum in the network. To achieve this, a new learning rule based Activation Function was derived to accelerate the performance of doing logic programming in Hopfield Neural Network (HNN). This paper also shows focused on agent based modelling for presenting performance of doing logic programming in Hopfield network using new activation function. The effects of the activation function are analyzed mathematically and compared with the existing method. Computer simulations are carried out by using NETLOGO to validate the effectiveness on the new activation function. The resuls obtained showed that the new activation function outperform the existing method in doing logic programming in Hopfield network. The models developed by agent based modelling also support this theory.
- Published
- 2017
37. ?NSP: a Neuro-Symbolic Processor?
- Author
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Burattini, E., Gregorio, M., Ferreira, V. M. G., Felipe M. G. França, J. MIRA, J.R. ALVAREZ, Burattini, Ernesto, DE GREGORIO, M, Ferreira, V. M. G., and Frana, F. M. G.
- Subjects
neuro-symbolic ,Artificial Neural Net ,Problem Solving - Published
- 2003
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