向量空间模型的语义上下文相关加权

T. Nakanishi
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引用次数: 7

摘要

本文提出了一种基于上下文的向量空间模型动态加权方法。意义是相对动态地由上下文决定的。包括潜在语义索引(LSI)等在内的向量空间模型相对度量了每个向量中表示的每个目标事物的相关性。然而,在向量空间模型的几乎方法中,每个目标物体的向量是静态的。通过上下文对每个向量的每个元素进行加权是很重要的。最近,需要通过汇总大量数据而不是阅读一个数据来理解某件事。因此,向量空间模型中的向量是从对应的数据集中产生的,用来表示某一事物。也就是说,我们应该为与上下文和数据分布动态对应的向量空间模型创建向量。该方法的特点是动态计算向量空间模型中对应于上下文的每个向量元素。我们的方法通过上下文相关的加权来减少与上下文对应的向量维。因此,由于维度的推演,我们可以以较低的计算成本度量上下文对应的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Context-Dependent Weighting for Vector Space Model
In this paper, we represent a dynamic context-dependent weighting method for vector space model. A meaning is relatively decided by a context dynamically. A vector space model, including latent semantic indexing (LSI), etc. relatively measures correlations of each target thing that represents in each vector. However, the vectors of each target thing in almost method of the vector space models are static. It is important to weight each element of each vector by a context. Recently, it is necessary to understand a certain thing by not reading one data but summarizing massive data. Therefore, the vectors in the vector space model create from data set corresponding to represent a certain thing. That is, we should create vectors for the vector space model dynamically corresponding to a context and data distribution. The features of our method are a dynamic calculation of each element of vectors in a vector space model corresponding to a context. Our method reduces a vector dimension corresponding to context by context-depending weighting. Therefore, We can measure correlation with low calculation cost corresponding to context because of dimension deduction.
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