Variable Binding in Biologically Plausible Neural Networks
نویسندگان
چکیده
منابع مشابه
Biologically Plausible, Human-scale Knowledge Representation
Several approaches to implementing symbol-like representations in neurally plausible models have been proposed. These approaches include binding through synchrony (Shastri & Ajjanagadde, ), "mesh" binding (van der Velde & de Kamps, ), and conjunctive binding (Smolensky, ). Recent theoretical work has suggested that most of these methods will not scale well, that is, that they cannot encode stru...
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