Neural word embeddings with multiplicative feature interactions for tensor-based compositions

VS@HLT-NAACL Pub Date : 2015-06-01 DOI:10.3115/v1/W15-1520
Joo-Kyung Kim, M. Marneffe, E. Fosler-Lussier
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引用次数: 4

Abstract

Categorical compositional distributional models unify compositional formal semantic models and distributional models by composing phrases with tensor-based methods from vector representations. For the tensor-based compositions, Milajevs et al. (2014) showed that word vectors obtained from the continuous bag-of-words (CBOW) model are competitive with those from co-occurrence based models. However, because word vectors from the CBOW model are trained assuming additive interactions between context words, the word composition used for the training mismatches to the tensor-based methods used for evaluating the actual compositions including pointwise multiplication and tensor product of context vectors. In this work, we show whether the word embeddings from extended CBOW models using multiplication or tensor product between context words, reflecting the actual composition methods, can show better performance than those from the baseline CBOW model in actual tasks of compositions with multiplication or tensor-based methods.
基于张量的组合中具有乘法特征交互的神经词嵌入
范畴组合分布模型将组合形式语义模型和分布模型统一起来,利用基于张量的向量表示方法组合短语。对于基于张量的组合,Milajevs等人(2014)表明,从连续词袋(CBOW)模型获得的词向量与基于共现模型获得的词向量具有竞争力。然而,由于来自CBOW模型的词向量是假设上下文词之间的加性相互作用来训练的,因此用于训练的词组成与用于评估实际组成的基于张量的方法(包括上下文向量的点乘法和张量积)不匹配。在这项工作中,我们展示了使用上下文词之间的乘法或张量积的扩展CBOW模型的词嵌入是否能够在使用乘法或基于张量的方法的组合的实际任务中表现出比基线CBOW模型更好的性能。
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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