利用二阶向量与语义相似度的集成改进人类判断的相关性

Bridget T. McInnes, Ted Pedersen
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引用次数: 4

摘要

测量语义相似性和相关性的向量空间方法通常依赖于分布信息,如共现频率或关联的统计度量,以加权特定共现的重要性。在本文中,我们通过将基于人类分类的语义相似性度量纳入二阶向量表示来扩展这些方法。这就产生了一种语义相关性度量,它将基于语料库的向量空间表示中可用的上下文信息与生物医学本体中发现的语义知识结合起来。我们的研究结果表明,将语义相似度结合到二阶共现矩阵中可以提高与人类对相似性和相关性判断的相关性,并且我们的方法比最近在我们使用的相同参考标准上评估的各种不同的词嵌入方法更有利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Correlation with Human Judgments by Integrating Semantic Similarity with Second–Order Vectors
Vector space methods that measure semantic similarity and relatedness often rely on distributional information such as co–occurrence frequencies or statistical measures of association to weight the importance of particular co–occurrences. In this paper, we extend these methods by incorporating a measure of semantic similarity based on a human curated taxonomy into a second–order vector representation. This results in a measure of semantic relatedness that combines both the contextual information available in a corpus–based vector space representation with the semantic knowledge found in a biomedical ontology. Our results show that incorporating semantic similarity into a second order co-occurrence matrices improves correlation with human judgments for both similarity and relatedness, and that our method compares favorably to various different word embedding methods that have recently been evaluated on the same reference standards we have used.
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