WHAT CONNECTIONIST MODELS LEARN - LEARNING AND REPRESENTATION IN CONNECTIONIST NETWORKS

被引:61
作者
HANSON, SJ [1 ]
BURR, DJ [1 ]
机构
[1] BELLCORE, ARTIFICIAL INTELLIGENCE & COMMUN RES GRP, MORRISTOWN, NJ 07960 USA
关键词
AI; computational modeling; connectionism; learning; neural network; pattern recognition; rules representation; symbols;
D O I
10.1017/S0140525X00079760
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
Connectionist models provide a promising alternative to the traditional computational approach that has for several decades dominated cognitive science and artificial intelligence, although the nature of connectionist models and their relation to symbol processing remains controversial. Connectionist models can be characterized by three general computational features: distinct layers of interconnected units, recursive rules for updating the strengths of the connections during learning, and “simple” homogeneous computing elements. Using just these three features one can construct surprisingly elegant and powerful models of memory, perception, motor control, categorization, and reasoning. What makes the connectionist approach unique is not its variety of representational possibilities (including “distributed representations”) or its departure from explicit rule-based models, or even its preoccupation with the brain metaphor. Rather, it is that connectionist models can be used to explore systematically the complex interaction between learning and representation, as we try to demonstrate through the analysis of several large networks. © 1990, Cambridge University Press. All rights reserved.
引用
收藏
页码:471 / 488
页数:18
相关论文
共 99 条
[1]  
ACKLEY DH, 1985, COGNITIVE SCI, V9, P147
[2]  
ALBUS JS, 1975, ASME, V97, P220, DOI DOI 10.1115/1.3426922
[3]  
Anderson J. R, 1983, ARCHITECTURE COGNITI, DOI DOI 10.4324/9781315799438
[4]   DISTINCTIVE FEATURES, CATEGORICAL PERCEPTION, AND PROBABILITY-LEARNING - SOME APPLICATIONS OF A NEURAL MODEL [J].
ANDERSON, JA ;
SILVERSTEIN, JW ;
RITZ, SA ;
JONES, RS .
PSYCHOLOGICAL REVIEW, 1977, 84 (05) :413-451
[5]  
ANDERSON JA, 1976, BRAIN STATE BOX MODE
[6]  
BAUM EB, 1987, SUPERVISED LEARNING
[7]  
BAUM EB, 1988, ADV NEURAL INFORMATI, V1
[8]  
BLUM A, 1989, AD NEURAL INFORMATIO, V1
[9]  
BURR DJ, 1988, IEEE T ACOUSTICS SPE, V36
[10]  
Carroll S M, 1989, P IJCNN P, P607