From Deep Learning to Rational Machines: What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence
"This book provides a framework for thinking about foundational philosophical questions surrounding machine learning as an approach to artificial intelligence. Specifically, it links recent breakthroughs in deep learning to classical empiricist philosophy of mind. In recent assessments of deep...
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1. Verfasser: | |
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Format: | Elektronisch E-Book |
Sprache: | English |
Veröffentlicht: |
Oxford
Oxford University Press, Incorporated
[2023]
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Schlagworte: | |
Online-Zugang: | DE-91 URL des Erstveröffentlichers |
Zusammenfassung: | "This book provides a framework for thinking about foundational philosophical questions surrounding machine learning as an approach to artificial intelligence. Specifically, it links recent breakthroughs in deep learning to classical empiricist philosophy of mind. In recent assessments of deep learning's current capabilities and future potential, prominent scientists have cited historical figures from the perennial philosophical debate between nativism and empiricism, which primarily concerns the origins of abstract knowledge. These empiricists were generally faculty psychologists; that is, they argued that the active engagement of general psychological faculties-such as perception, memory, imagination, attention, and empathy-enables rational agents to extract abstract knowledge from sensory experience. This book explains a number of recent attempts to model roles attributed to these faculties in deep neural network based artificial agents by appeal to the faculty psychology of philosophers such as Aristotle, Ibn Sina (Avicenna), John Locke David Hume, William James, and Sophie de Grouchy. It illustrates the utility of this interdisciplinary connection by showing how it can provide benefits to both philosophy and computer science: computer scientists can continue to mine the history of philosophy for ideas and aspirational targets to hit on the way to more robustly rational artificial agents, and philosophers can see how some of the historical empiricists' most ambitious speculations can be realized in specific computational systems"-- |
Beschreibung: | Description based on publisher supplied metadata and other sources |
Beschreibung: | 1 Online-Ressource (xxi, 415 Seiten) Illustrationen |
ISBN: | 9780197653333 9780197653326 |
DOI: | 10.1093/oso/9780197653302.001.0001 |
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spelling | Buckner, Cameron J. Verfasser (DE-588)1330957962 aut From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence Oxford Oxford University Press, Incorporated [2023] © 2023 1 Online-Ressource (xxi, 415 Seiten) Illustrationen txt rdacontent c rdamedia cr rdacarrier Description based on publisher supplied metadata and other sources "This book provides a framework for thinking about foundational philosophical questions surrounding machine learning as an approach to artificial intelligence. Specifically, it links recent breakthroughs in deep learning to classical empiricist philosophy of mind. In recent assessments of deep learning's current capabilities and future potential, prominent scientists have cited historical figures from the perennial philosophical debate between nativism and empiricism, which primarily concerns the origins of abstract knowledge. These empiricists were generally faculty psychologists; that is, they argued that the active engagement of general psychological faculties-such as perception, memory, imagination, attention, and empathy-enables rational agents to extract abstract knowledge from sensory experience. This book explains a number of recent attempts to model roles attributed to these faculties in deep neural network based artificial agents by appeal to the faculty psychology of philosophers such as Aristotle, Ibn Sina (Avicenna), John Locke David Hume, William James, and Sophie de Grouchy. It illustrates the utility of this interdisciplinary connection by showing how it can provide benefits to both philosophy and computer science: computer scientists can continue to mine the history of philosophy for ideas and aspirational targets to hit on the way to more robustly rational artificial agents, and philosophers can see how some of the historical empiricists' most ambitious speculations can be realized in specific computational systems"-- Machine learning Philosophy Deep Learning (DE-588)1135597375 gnd rswk-swf Philosophie (DE-588)4045791-6 gnd rswk-swf Maschinelles Lernen (DE-588)4193754-5 gnd rswk-swf Deep Learning (DE-588)1135597375 s Maschinelles Lernen (DE-588)4193754-5 s Philosophie (DE-588)4045791-6 s DE-604 Erscheint auch als Druck-Ausgabe Buckner, Cameron J. From Deep Learning to Rational Machines Oxford : Oxford University Press, Incorporated,c2023 9780197653302 https://doi.org/10.1093/oso/9780197653302.001.0001 Verlag URL des Erstveröffentlichers Volltext |
spellingShingle | Buckner, Cameron J. From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence Machine learning Philosophy Deep Learning (DE-588)1135597375 gnd Philosophie (DE-588)4045791-6 gnd Maschinelles Lernen (DE-588)4193754-5 gnd |
subject_GND | (DE-588)1135597375 (DE-588)4045791-6 (DE-588)4193754-5 |
title | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_auth | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_exact_search | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_exact_search_txtP | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_full | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_fullStr | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_full_unstemmed | From Deep Learning to Rational Machines What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
title_short | From Deep Learning to Rational Machines |
title_sort | from deep learning to rational machines what the history of philosophy can teach us about the future of artificial intelligence |
title_sub | What the History of Philosophy Can Teach Us about the Future of Artificial Intelligence |
topic | Machine learning Philosophy Deep Learning (DE-588)1135597375 gnd Philosophie (DE-588)4045791-6 gnd Maschinelles Lernen (DE-588)4193754-5 gnd |
topic_facet | Machine learning Philosophy Deep Learning Philosophie Maschinelles Lernen |
url | https://doi.org/10.1093/oso/9780197653302.001.0001 |
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