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简单自联想网络成功实现恒等函数和重复规则的通用泛化。

Simple Auto-Associative Networks Succeed at Universal Generalization of the Identity Function and Reduplication Rule.

作者信息

Kurtz Kenneth J

机构信息

Department of Psychology, Binghamton University.

出版信息

Cogn Sci. 2025 Jan;49(1):e70033. doi: 10.1111/cogs.70033.

Abstract

It has become widely accepted that standard connectionist models are unable to show identity-based relational reasoning that requires universal generalization. The purpose of this brief report is to show how one of the simplest forms of such models, feed-forward auto-associative networks, satisfies two of the most well-known challenges: universal generalization of the identity function and the reduplication rule. Given the simplicity of the modeling account provided, along with the clarity of the evidence, these demonstrations invite a shift in this high-profile debate over the nature of cognitive architecture and point to a way to bridge some of the presumed gulf between characteristically symbolic forms of reasoning and connectionist mechanisms.

摘要

标准的联结主义模型无法展现基于同一性的关系推理(这种推理需要全域泛化),这一点已被广泛接受。本简要报告的目的是展示这类模型中最简单的一种形式——前馈自联想网络——是如何满足两个最著名的挑战的:恒等函数的全域泛化和重复规则。鉴于所提供的建模解释的简单性以及证据的明晰性,这些论证促使在这场关于认知架构本质的备受瞩目的辩论中发生转变,并指出了一种弥合在典型的符号推理形式与联结主义机制之间一些假定鸿沟的方法。

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