组织语义模型的空间和行为。

Timothy N Rubin, Brent Kievit-Kylar, Jon A Willits, Michael N Jones
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摘要

语义模型在认知科学中占有重要地位。这些模型使用统计学习来模拟文本语料库中共现词的含义。已经提出了各种各样的语义模型,并且文献通常强调一个模型优于另一个模型的情况。然而,由于这些模型经常因多个子过程(例如,它们的规范化或降维方法)而变化,因此很难描述这些过程中的哪一个负责观察到的性能差异。此外,任何两个模型都可能沿着多个维度变化,这一事实使得很难理解这些模型在可能的心理学理论空间中的位置。本文提出了一个组织语义模型空间的通用框架。然后,我们将说明如何使用此框架来根据子流程中的单个操作来理解模型比较。使用几个人工数据集,我们展示了表征结构和降维如何影响模型选择不同类型单词关系的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Organizing the space and behavior of semantic models.

Semantic models play an important role in cognitive science. These models use statistical learning to model word meanings from co-occurrences in text corpora. A wide variety of semantic models have been proposed, and the literature has typically emphasized situations in which one model outperforms another. However, because these models often vary with respect to multiple sub-processes (e.g., their normalization or dimensionality-reduction methods), it can be difficult to delineate which of these processes are responsible for observed performance differences. Furthermore, the fact that any two models may vary along multiple dimensions makes it difficult to understand where these models fall within the space of possible psychological theories. In this paper, we propose a general framework for organizing the space of semantic models. We then illustrate how this framework can be used to understand model comparisons in terms of individual manipulations along sub-processes. Using several artificial datasets we show how both representational structure and dimensionality-reduction influence a model's ability to pick up on different types of word relationships.

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