Learning Reduplication with a Neural Network that Lacks Explicit Variables

B. Prickett, Aaron Traylor, Joe Pater
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引用次数: 2

Abstract

Reduplicative linguistic patterns have been used as evidence for explicit algebraic variables in models of cognition.1 Here, we show that a variable-free neural network can model these patterns in a way that predicts observed human behavior. Specifically, we successfully simulate the three experiments presented by Marcus et al. (1999), as well as Endress et al.’s (2007) partial replication of one of those experiments. We then explore the model’s ability to generalize reduplicative mappings to different kinds of novel inputs. Using Berent’s (2013) scopes of generalization as a metric, we claim that the model matches the scope of generalization that has been observed in humans. We argue that these results challenge past claims about the necessity of symbolic variables in models of cognition.
用缺乏显式变量的神经网络学习重复
重复的语言模式已被用作认知模型中显式代数变量的证据在这里,我们展示了一个无变量的神经网络可以以一种预测观察到的人类行为的方式对这些模式进行建模。具体来说,我们成功地模拟了Marcus等人(1999)提出的三个实验,以及Endress等人(2007)对其中一个实验的部分复制。然后,我们探索模型将重复映射推广到不同类型的新输入的能力。使用Berent(2013)的泛化范围作为度量标准,我们声称该模型与在人类中观察到的泛化范围相匹配。我们认为这些结果挑战了过去关于认知模型中符号变量必要性的说法。
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