Discovering Correlations between Sparse Features in Distant Supervision for Relation Extraction

Jianfeng Qu, D. Ouyang, Wen Hua, Yuxin Ye, Xiaofang Zhou
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引用次数: 8

Abstract

The recent art in relation extraction is distant supervision which generates training data by heuristically aligning a knowledge base with free texts and thus avoids human labelling. However, the concerned relation mentions often use the bag-of-words representation, which ignores inner correlations between features located in different dimensions and makes relation extraction less effective. To capture the complex characteristics of relation expression and tighten the correlated features, we attempt to discover and utilise informative correlations between features by the following four phases: 1) formulating semantic similarities between lexical features using the embedding method; 2) constructing generative relation for lexical features with different sizes of side windows; 3) computing correlation scores between syntactic features through a kernel-based method; and 4) conducting a distillation process for the obtained correlated feature pairs and integrating informative pairs with existing relation extraction models. The extensive experiments demonstrate that our method can effectively discover correlation information and improve the performance of state-of-the-art relation extraction methods.
在关系提取的远程监督中发现稀疏特征之间的相关性
关系提取的最新技术是远程监督,它通过启发式地将知识库与自由文本对齐来生成训练数据,从而避免了人为标记。然而,相关的关系提及通常使用词袋表示,忽略了位于不同维度的特征之间的内在关联,从而降低了关系提取的效率。为了捕捉关系表达的复杂特征并强化相关特征,我们尝试通过以下四个阶段发现和利用特征之间的信息相关性:1)使用嵌入方法构建词汇特征之间的语义相似度;2)构建不同侧窗大小的词汇特征生成关系;3)通过基于核的方法计算句法特征之间的相关分数;4)对得到的相关特征对进行精馏处理,并将信息对与已有的关系提取模型进行整合。大量的实验表明,我们的方法可以有效地发现相关信息,提高了最先进的关系提取方法的性能。
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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