FROM SIMPLE ASSOCIATIONS TO SYSTEMATIC REASONING - A CONNECTIONIST REPRESENTATION OF RULES, VARIABLES AND DYNAMIC BINDINGS USING TEMPORAL SYNCHRONY

被引:305
作者
SHASTRI, L [1 ]
AJJANAGADDE, V [1 ]
机构
[1] UNIV TUBINGEN,WILHELM SCHICKARD INST,W-7400 TUBINGEN 1,GERMANY
关键词
BINDING PROBLEM; CONNECTIONISM; KNOWLEDGE REPRESENTATION; LONG-TERM MEMORY; NEURAL OSCILLATIONS; REASONING; SHORT-TERM MEMORY; SYSTEMATICITY; TEMPORAL SYNCHRONY; WORKING MEMORY;
D O I
10.1017/S0140525X00030910
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
Human agents draw a variety of inferences effortlessly, spontaneously, and with remarkable efficiency - as though these inferences were a reflexive response of their cognitive apparatus. Furthermore, these inferences are drawn with reference to a large body of background knowledge. This remarkable human ability seems paradoxical given the complexity of reasoning reported by researchers in artificial intelligence. It also poses a challenge for cognitive science and computational neuroscience: How can a system of simple and slow neuronlike elements represent a large body of systemic knowledge and perform a range of inferences with such speed? We describe a computational model that takes a step toward addressing the cognitive science challenge and resolving the artificial intelligence paradox. We show how a connectionist network can encode millions of facts and rules involving n-ary predicates and variables and perform a class of inferences in a few hundred milliseconds. Efficient reasoning requires the rapid representation and propagation of dynamic bindings. Our model (which we refer to as SHRUTI) achieves this by representing (1) dynamic bindings as the synchronous firing of appropriate nodes, (2) rules as interconnection patterns that direct the propagation of rhythmic activity, and (3) long-term facts as temporal pattern-matching subnetworks. The model is consistent with recent neurophysiological evidence that synchronous activity occurs in the brain and may play a representational role in neural information processing. The model also makes specific psychologically significant predictions about the nature of reflexive reasoning. It identifies constraints on the form of rules that may participate in such reasoning and relates the capacity of the working memory underlying reflexive reasoning to biological parameters such as the lowest frequency at which nodes can sustain synchronous oscillations and the coarseness of synchronization.
引用
收藏
页码:417 / 451
页数:35
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