Spatial versus graphical representation of distributional semantic knowledge.

IF 5.1 1区 心理学 Q1 PSYCHOLOGY
Psychological review Pub Date : 2024-01-01 Epub Date: 2023-11-13 DOI:10.1037/rev0000451
Shufan Mao, Philip A Huebner, Jon A Willits
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引用次数: 0

Abstract

Spatial distributional semantic models represent word meanings in a vector space. While able to model many basic semantic tasks, they are limited in many ways, such as their inability to represent multiple kinds of relations in a single semantic space and to directly leverage indirect relations between two lexical representations. To address these limitations, we propose a distributional graphical model that encodes lexical distributional data in a graphical structure and uses spreading activation for determining the plausibility of word sequences. We compare our model to existing spatial and graphical models by systematically varying parameters that contributing to dimensions of theoretical interest in semantic modeling. In order to be certain about what the models should be able to learn, we trained each model on an artificial corpus describing events in an artificial world simulation containing experimentally controlled verb-noun selectional preferences. The task used for model evaluation requires recovering observed selectional preferences and inferring semantically plausible but never observed verb-noun pairs. We show that the distributional graphical model performed better than all other models. Further, we argue that the relative success of this model comes from its improved ability to access the different orders of spatial representations with the spreading activation on the graph, enabling the model to infer the plausibility of noun-verb pairs unobserved in the training data. The model integrates classical ideas of representing semantic knowledge in a graph with spreading activation and more recent trends focused on the extraction of lexical distributional data from large natural language corpora. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

分布语义知识的空间表示与图形表示。
空间分布语义模型表示向量空间中的词义。虽然能够为许多基本的语义任务建模,但它们在许多方面受到限制,例如它们无法在单个语义空间中表示多种关系,也无法直接利用两个词法表示之间的间接关系。为了解决这些限制,我们提出了一个分布式图形模型,该模型在图形结构中编码词法分布数据,并使用扩散激活来确定词序列的合理性。我们通过系统地改变有助于语义建模的理论兴趣维度的参数,将我们的模型与现有的空间和图形模型进行比较。为了确定模型应该能够学习什么,我们在一个人工语料库上训练每个模型,该语料库描述了人工世界模拟中的事件,其中包含实验控制的动词-名词选择偏好。用于模型评估的任务需要恢复观察到的选择偏好和推断语义上似是而非观察到的动词-名词对。结果表明,分布式图形模型的性能优于其他所有模型。此外,我们认为该模型的相对成功来自于它通过图上的扩展激活提高了访问不同顺序空间表征的能力,使模型能够推断训练数据中未观察到的名词-动词对的合理性。该模型集成了用扩展激活的图形表示语义知识的经典思想,以及最近关注从大型自然语言语料库中提取词法分布数据的趋势。(PsycInfo数据库记录(c) 2023 APA,版权所有)。
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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来源期刊
Psychological review
Psychological review 医学-心理学
CiteScore
9.70
自引率
5.60%
发文量
97
期刊介绍: Psychological Review publishes articles that make important theoretical contributions to any area of scientific psychology, including systematic evaluation of alternative theories.
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