Chapter 1. Neural-Symbolic Learning and Reasoning: A Survey and Interpretation1

Author:

Besold Tarek R.1,d’Avila Garcez Artur2,Bader Sebastian3,Bowman Howard4,Domingos Pedro5,Hitzler Pascal6,Kühnberger Kai-Uwe7,Lamb Luis C.8,Lima Priscila Machado Vieira9,de Penning Leo10,Pinkas Gadi11,Poon Hoifung12,Zaverucha Gerson13

Affiliation:

1. Philosophy & Ethics, Faculty of IE/IS, Eindhoven University of Technology

2. Department of Computer Science, City, University London

3. Department of Computer Science, University of Rostock

4. School of Computing, University of Kent

5. Department of Computer Science & Engineering, University of Washington

6. Center for Artificial Intelligence and Data Science, Kansas State University

7. University of Osnabrück

8. Universidade Federal do Rio Grande do Sul

9. PESC/COPPE & NCE, Universidade Federal do Rio de Janeiro

10. Illuminoo B.V.

11. Afeka College of Engineering and Afeka Center for Language Processing, Tel-Aviv, Israel

12. Microsoft Research

13. COPPE, Universidade Federal do Rio de Janeiro

Abstract

The study and understanding of human behaviour is relevant to computer science, artificial intelligence, neural computation, cognitive science, philosophy, psychology, and several other areas. Presupposing cognition as basis of behaviour, among the most prominent tools in the modelling of behaviour are computational-logic systems, connectionist models of cognition, and models of uncertainty. Recent studies in cognitive science, artificial intelligence, and psychology have produced a number of cognitive models of reasoning, learning, and language that are underpinned by computation. In addition, efforts in computer science research have led to the development of cognitive computational systems integrating machine learning and automated reasoning. Such systems have shown promise in a range of applications, including computational biology, fault diagnosis, training and assessment in simulators, and software verification. This joint survey reviews the personal ideas and views of several researchers on neural-symbolic learning and reasoning. The article is organised in three parts: Firstly, we frame the scope and goals of neural-symbolic computation and have a look at the theoretical foundations. We then proceed to describe the realisations of neural-symbolic computation, systems, and applications. Finally we present the challenges facing the area and avenues for further research.

Publisher

IOS Press

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