单词表示和应用的距离几何

Sammy Khalife , Douglas S. Gonçalves , Leo Liberti
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引用次数: 0

摘要

用于处理序列数据的许多机器学习方法通常依赖于酉实体的向量表示的构建(例如,自然语言处理中的单词,或生物信息学中的k-mers)。传统上,这些表示是用基于共现的模型产生的优化公式来构建的。在这项工作中,我们提出了一种基于距离几何问题嵌入这些实体的新方法:基于它们的成对距离或内积的子集来查找对象位置。考虑到经验点互信息作为内积的代理,我们讨论了两种基于距离几何的算法来获得词向量表示。与最先进的单词嵌入方法相比,这种算法的主要优点是其计算复杂度显著降低,这使我们能够更快地获得单词向量表示。此外,数值实验表明,我们的词向量在自然语言处理中的文本分类任务以及生物信息学中的回归任务中表现得很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distance geometry for word representations and applications

Many machine learning methods used for the treatment of sequential data often rely on the construction of vector representations of unitary entities (e.g. words in natural language processing, or k-mers in bioinformatics). Traditionally, these representations are constructed with optimization formulations arising from co-occurrence based models. In this work, we propose a new method to embed these entities based on the Distance Geometry Problem: find object positions based on a subset of their pairwise distances or inner products. Considering the empirical Pointwise Mutual Information as a surrogate for the inner product, we discuss two Distance Geometry based algorithms to obtain word vector representations. The main advantage of such algorithms is their significantly lower computational complexity in comparison with state-of-the-art word embedding methods, which allows us to obtain word vector representations much faster. Furthermore, numerical experiments indicate that our word vectors behave quite well on text classification tasks in natural language processing as well as regression tasks in bioinformatics.

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