Metacognitive Artificial Intelligence
Herausgeber: Wei, Hua; Shakarian, Paulo
Metacognitive Artificial Intelligence
Herausgeber: Wei, Hua; Shakarian, Paulo
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
This thorough guide is essential for researchers, educators, and professionals interested in the self-assessment and optimization of AI systems. With contributions from experts across disciplines and many examples, it provides comprehensive insights into AI's decision-making processes and ensures safety and reliability in high-stakes applications.
Andere Kunden interessierten sich auch für
- Jyothi A PSmart Robot for Agriculture using Artificial Intelligence30,99 €
- Thomas DuschlbauerAffective and Artificial Intelligence34,00 €
- Seth Stephens-DavidowitzEverybody Lies12,99 €
- Yearbook of the Artificial. Vol. 379,40 €
- Jyothi A. P.Robô Inteligente para a Agricultura usando Inteligência Artificial31,99 €
- Donghee ShinArtificial Misinformation93,99 €
- Teddy KimathiImportance and Functions of Communication5,99 €
-
-
-
This thorough guide is essential for researchers, educators, and professionals interested in the self-assessment and optimization of AI systems. With contributions from experts across disciplines and many examples, it provides comprehensive insights into AI's decision-making processes and ensures safety and reliability in high-stakes applications.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Cambridge University Press
- Seitenzahl: 301
- Erscheinungstermin: 31. Juli 2025
- Englisch
- ISBN-13: 9781009522458
- ISBN-10: 1009522450
- Artikelnr.: 72802019
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: Cambridge University Press
- Seitenzahl: 301
- Erscheinungstermin: 31. Juli 2025
- Englisch
- ISBN-13: 9781009522458
- ISBN-10: 1009522450
- Artikelnr.: 72802019
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Part I. Introduction: 1. Metacognitive AI Hua Wei, Paulo Shakarian,
Christian Lebiere, Bruce Draper, Nikhil Krishnaswamy, Sarath Sreedharan and
Sergei Nirenburg; Part II. Taxonomy of Metacognitive Approaches: 2. An
architectural approach to metacognition Christian Lebiere, Robert Thomson,
Andrea Stocco, Mark Orr and Donald Morrison; 3. Metacognitive AI through
error detection and correction rules Bowen Xi and Paulo Shakarian; 4.
Mutual trust in human-AI teams relies on metacognition Sergei Nirenburg,
Marjorie McShane and Thomas M. Ferguson; Part III. Neuro-Symbolic Models in
AI: 5. Learning where and when to reason in neuro-symbolic inference
Christina Cornelio; 6. Assessment of competency of learning agents via
inference of temporal logic formulas Zhe Xu, Nasim Baharisangari,
Jean-Raphaël Gaglione and Ufuk Topcu; Part IV. Metacognition with LLMs: 7.
Metacognitive intervention for accountable LLMs through sparsity Tianlong
Chen; 8. Metacognitive insights into ChatGPT's arithmetic reasoning Noel
Ngu, Paulo Shakarian, Abhinav Koyyalamudi and Lakshmivihari Mareedu; Part
V. Metacognition in Learning Agents: 9. Uncertainty quantification's role
in metacognition Gavin Strunk; 10. The role of predictive uncertainty and
diversity in embodied AI and robot learning Ransalu Senanayake; Part VI.
Assured Machine Learning in High-Stakes Domains: 11. Towards certifiably
trustworthy deep learning at scale Linyi Li; 12. Metacognition with neural
network verification and repair using Veritex Xiaodong Yang, Tomoya
Yamaguchi, Bardh Hoxha, Danil Prokhorov and Taylor T. Johnson; Part VII.
Metacognition as a Solution to Handle Failure: 13. Reasoning about
anomalous object interaction using plan failure as a metacognitive trigger
Nikhil Krishnaswamy; 14. Tractable probabilistic reasoning for trustworthy
AI YooJung Choi; Part VIII. Applications of Metacognitive AI: 15. Robust
and compositional concept grounding for image generative AI Yezhou Yang;
16. mLINK: Machine learning integration with network and knowledge Sergei
Chuprov, Raman Zatsarenko and Leon Reznik; 17. Military applications of
artificial intelligence metacognition Bonnie Johnson.
Christian Lebiere, Bruce Draper, Nikhil Krishnaswamy, Sarath Sreedharan and
Sergei Nirenburg; Part II. Taxonomy of Metacognitive Approaches: 2. An
architectural approach to metacognition Christian Lebiere, Robert Thomson,
Andrea Stocco, Mark Orr and Donald Morrison; 3. Metacognitive AI through
error detection and correction rules Bowen Xi and Paulo Shakarian; 4.
Mutual trust in human-AI teams relies on metacognition Sergei Nirenburg,
Marjorie McShane and Thomas M. Ferguson; Part III. Neuro-Symbolic Models in
AI: 5. Learning where and when to reason in neuro-symbolic inference
Christina Cornelio; 6. Assessment of competency of learning agents via
inference of temporal logic formulas Zhe Xu, Nasim Baharisangari,
Jean-Raphaël Gaglione and Ufuk Topcu; Part IV. Metacognition with LLMs: 7.
Metacognitive intervention for accountable LLMs through sparsity Tianlong
Chen; 8. Metacognitive insights into ChatGPT's arithmetic reasoning Noel
Ngu, Paulo Shakarian, Abhinav Koyyalamudi and Lakshmivihari Mareedu; Part
V. Metacognition in Learning Agents: 9. Uncertainty quantification's role
in metacognition Gavin Strunk; 10. The role of predictive uncertainty and
diversity in embodied AI and robot learning Ransalu Senanayake; Part VI.
Assured Machine Learning in High-Stakes Domains: 11. Towards certifiably
trustworthy deep learning at scale Linyi Li; 12. Metacognition with neural
network verification and repair using Veritex Xiaodong Yang, Tomoya
Yamaguchi, Bardh Hoxha, Danil Prokhorov and Taylor T. Johnson; Part VII.
Metacognition as a Solution to Handle Failure: 13. Reasoning about
anomalous object interaction using plan failure as a metacognitive trigger
Nikhil Krishnaswamy; 14. Tractable probabilistic reasoning for trustworthy
AI YooJung Choi; Part VIII. Applications of Metacognitive AI: 15. Robust
and compositional concept grounding for image generative AI Yezhou Yang;
16. mLINK: Machine learning integration with network and knowledge Sergei
Chuprov, Raman Zatsarenko and Leon Reznik; 17. Military applications of
artificial intelligence metacognition Bonnie Johnson.
Part I. Introduction: 1. Metacognitive AI Hua Wei, Paulo Shakarian,
Christian Lebiere, Bruce Draper, Nikhil Krishnaswamy, Sarath Sreedharan and
Sergei Nirenburg; Part II. Taxonomy of Metacognitive Approaches: 2. An
architectural approach to metacognition Christian Lebiere, Robert Thomson,
Andrea Stocco, Mark Orr and Donald Morrison; 3. Metacognitive AI through
error detection and correction rules Bowen Xi and Paulo Shakarian; 4.
Mutual trust in human-AI teams relies on metacognition Sergei Nirenburg,
Marjorie McShane and Thomas M. Ferguson; Part III. Neuro-Symbolic Models in
AI: 5. Learning where and when to reason in neuro-symbolic inference
Christina Cornelio; 6. Assessment of competency of learning agents via
inference of temporal logic formulas Zhe Xu, Nasim Baharisangari,
Jean-Raphaël Gaglione and Ufuk Topcu; Part IV. Metacognition with LLMs: 7.
Metacognitive intervention for accountable LLMs through sparsity Tianlong
Chen; 8. Metacognitive insights into ChatGPT's arithmetic reasoning Noel
Ngu, Paulo Shakarian, Abhinav Koyyalamudi and Lakshmivihari Mareedu; Part
V. Metacognition in Learning Agents: 9. Uncertainty quantification's role
in metacognition Gavin Strunk; 10. The role of predictive uncertainty and
diversity in embodied AI and robot learning Ransalu Senanayake; Part VI.
Assured Machine Learning in High-Stakes Domains: 11. Towards certifiably
trustworthy deep learning at scale Linyi Li; 12. Metacognition with neural
network verification and repair using Veritex Xiaodong Yang, Tomoya
Yamaguchi, Bardh Hoxha, Danil Prokhorov and Taylor T. Johnson; Part VII.
Metacognition as a Solution to Handle Failure: 13. Reasoning about
anomalous object interaction using plan failure as a metacognitive trigger
Nikhil Krishnaswamy; 14. Tractable probabilistic reasoning for trustworthy
AI YooJung Choi; Part VIII. Applications of Metacognitive AI: 15. Robust
and compositional concept grounding for image generative AI Yezhou Yang;
16. mLINK: Machine learning integration with network and knowledge Sergei
Chuprov, Raman Zatsarenko and Leon Reznik; 17. Military applications of
artificial intelligence metacognition Bonnie Johnson.
Christian Lebiere, Bruce Draper, Nikhil Krishnaswamy, Sarath Sreedharan and
Sergei Nirenburg; Part II. Taxonomy of Metacognitive Approaches: 2. An
architectural approach to metacognition Christian Lebiere, Robert Thomson,
Andrea Stocco, Mark Orr and Donald Morrison; 3. Metacognitive AI through
error detection and correction rules Bowen Xi and Paulo Shakarian; 4.
Mutual trust in human-AI teams relies on metacognition Sergei Nirenburg,
Marjorie McShane and Thomas M. Ferguson; Part III. Neuro-Symbolic Models in
AI: 5. Learning where and when to reason in neuro-symbolic inference
Christina Cornelio; 6. Assessment of competency of learning agents via
inference of temporal logic formulas Zhe Xu, Nasim Baharisangari,
Jean-Raphaël Gaglione and Ufuk Topcu; Part IV. Metacognition with LLMs: 7.
Metacognitive intervention for accountable LLMs through sparsity Tianlong
Chen; 8. Metacognitive insights into ChatGPT's arithmetic reasoning Noel
Ngu, Paulo Shakarian, Abhinav Koyyalamudi and Lakshmivihari Mareedu; Part
V. Metacognition in Learning Agents: 9. Uncertainty quantification's role
in metacognition Gavin Strunk; 10. The role of predictive uncertainty and
diversity in embodied AI and robot learning Ransalu Senanayake; Part VI.
Assured Machine Learning in High-Stakes Domains: 11. Towards certifiably
trustworthy deep learning at scale Linyi Li; 12. Metacognition with neural
network verification and repair using Veritex Xiaodong Yang, Tomoya
Yamaguchi, Bardh Hoxha, Danil Prokhorov and Taylor T. Johnson; Part VII.
Metacognition as a Solution to Handle Failure: 13. Reasoning about
anomalous object interaction using plan failure as a metacognitive trigger
Nikhil Krishnaswamy; 14. Tractable probabilistic reasoning for trustworthy
AI YooJung Choi; Part VIII. Applications of Metacognitive AI: 15. Robust
and compositional concept grounding for image generative AI Yezhou Yang;
16. mLINK: Machine learning integration with network and knowledge Sergei
Chuprov, Raman Zatsarenko and Leon Reznik; 17. Military applications of
artificial intelligence metacognition Bonnie Johnson.