从评论中构建可解释的意见图表

Nofar Carmeli, Xiaolan Wang, Yoshihiko Suhara, S. Angelidis, Yuliang Li, Jinfeng Li, W. Tan
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引用次数: 3

摘要

网络是事实信息和主观信息的主要来源。虽然在将事实信息组织成知识库方面做出了重大努力,但在将主观数据丰富的意见组织成结构化格式方面的工作要少得多。我们介绍了ExplainIt,这是一个提取意见并将其组织成意见图的系统,它对下游应用程序很有用,例如生成可解释的评论摘要和促进对意见短语的搜索。在这样的图中,一个节点代表一组从评论中提取的语义相似的观点,两个节点之间的边表示一个节点解释另一个节点。ExplainIt以监督的方式挖掘解释,并以弱监督的方式将相似的意见组合在一起,然后将意见集群及其解释关系组合成意见图。我们通过实验证明,在意见图中生成的解释关系具有良好的质量,并且我们用于解释挖掘和分组意见的标记数据集可以在https://github.com/megagonlabs/explainit上公开获得。
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Constructing Explainable Opinion Graphs from Reviews
The Web is a major resource of both factual and subjective information. While there are significant efforts to organize factual information into knowledge bases, there is much less work on organizing opinions, which are abundant in subjective data, into a structured format. We present ExplainIt, a system that extracts and organizes opinions into an opinion graph, which are useful for downstream applications such as generating explainable review summaries and facilitating search over opinion phrases. In such graphs, a node represents a set of semantically similar opinions extracted from reviews and an edge between two nodes signifies that one node explains the other. ExplainIt mines explanations in a supervised method and groups similar opinions together in a weakly supervised way before combining the clusters of opinions together with their explanation relationships into an opinion graph. We experimentally demonstrate that the explanation relationships generated in the opinion graph are of good quality and our labeled datasets for explanation mining and grouping opinions are publicly available at https://github.com/megagonlabs/explainit.
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