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Similarity Metrics within a Point of View

机译:观点内的相似度指标

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Vector space based approaches to natural language processing are contrasted with human similarity judgements to show the manner in which human subjects fail to produce data which satisfies all requirements for a metric space. This result would constrains the validity and applicability vector space based (and hence also quantum inspired) approaches to the modelling of cognitive processes. This paper proposes a resolution to this problem, by arguing that pairs of words imply a context which in turn induces a point of view, so allowing a subject to estimate semantic similarity. Context is here introduced as a point of view vector (POVV) and the expected similarity is derived as a measure over the POVV's. Different pairs of words will invoke different contexts and different POVV's. We illustrate the proposal on a few triples of words and outline further research.
机译:将基于矢量空间的自然语言处理方法与人类相似性判断进行对比,以显示人类受试者无法生成满足度量空间所有要求的数据的方式。该结果将限制基于认知空间建模的向量空间的有效性和适用性(因此也将激发量子灵感)。本文提出了一个解决此问题的方法,方法是说成对的词暗示着上下文,而上下文又会引发观点,从而使主体可以估计语义相似性。这里将上下文作为视点矢量(POVV)引入,并且将预期的相似性作为对POVV的度量来得出。不同的单词对将调用不同的上下文和不同的POVV。我们用几个词来说明该建议,并概述进一步的研究。

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