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A review of computational models of basic rule learning: The neural-symbolic debate and beyond

机译:基本规则学习的计算模型回顾:神经系统符号辩论及其他

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摘要

We present a critical review of computational models of generalization of simple grammar-like rules, such as ABA and ABB. In particular, we focus on models attempting to account for the empirical results of Marcus et al. (Science, 283(5398), 77–80 ). In that study, evidence is reported of generalization behavior by 7-month-old infants, using an Artificial Language Learning paradigm. The authors fail to replicate this behavior in neural network simulations, and claim that this failure reveals inherent limitations of a whole class of neural networks: those that do not incorporate symbolic operations. A great number of computational models were proposed in follow-up studies, fuelling a heated debate about what is required for a model to generalize. Twenty years later, this debate is still not settled. In this paper, we review a large number of the proposed models. We present a critical analysis of those models, in terms of how they contribute to answer the most relevant questions raised by the experiment. After identifying which aspects require further research, we propose a list of desiderata for advancing our understanding on generalization.
机译:我们对诸如ABA和ABB之类的简单语法规则的泛化计算模型进行了严格的审查。特别是,我们关注于试图解释Marcus等人的经验结果的模型。 (Science,283(5398),77–80)。在该研究中,使用人工语言学习范例报道了7个月大婴儿普遍行为的证据。作者未能在神经网络仿真中复制这种行为,并声称这种失败揭示了整类神经网络的固有局限性:那些没有合并符号运算的神经网络。在后续研究中提出了许多计算模型,这引发了关于模型泛化需要什么的激烈辩论。二十年后,这场辩论仍未解决。在本文中,我们回顾了许多建议的模型。我们就这些模型如何回答实验中提出的最相关问题进行了批判性分析。在确定哪些方面需要进一步研究之后,我们提出了一份desiderata清单,以增进我们对泛化的理解。

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