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Context-sensitive contrastive feature-based opinion summarisation of online reviews

机译:基于上下文的对比性基于特征的在线评论意见汇总

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摘要

Contrastive opinion summarisation (COS) systems produce summary by selecting and aligning contrastive sentences from a set of positive and negative opinionated sentences. Most of the existing COS methods do not consider the implicit opinion present in a sentence while producing summary. Implicit opinion can be identified based on context terms present in a sentence. Therefore, a new COS approach called context-sensitive contrastive opinion summarisation is proposed. Initially linguistic rules are framed based on dependency relation to extract context-feature-opinion phrases. To automatically cluster the extracted context-feature-opinion phrases into contrastive arguments, a clustering algorithm is proposed. Context sensitive weight is calculated for each phrase based on their probability of occurrence in the concepts of ConceptNet. Clustering algorithm integrates context sensitivity with contrastive similarity for producing better arguments summary. Experimental conducted on car and product review datasets demonstrate that the context-sensitive clusters achieved good coverage and precision when compared to state-of-art approaches.
机译:对比意见摘要(COS)系统通过从一组正面和负面的观点句子中选择和排列对比性句子来产生摘要。大多数现有的COS方法在生成摘要时都不会考虑句子中存在的隐式意见。可以基于句子中存在的上下文项来识别隐式意见。因此,提出了一种新的COS方法,称为上下文相关的对比意见摘要。最初,语言规则是基于依赖关系构架的,以提取上下文特征意见短语。为了将提取的上下文特征意见短语自动聚类为对比参数,提出了一种聚类算法。根据每个短语在ConceptNet概念中的出现概率,计算上下文相关权重。聚类算法将上下文敏感度与对比相似度集成在一起,以产生更好的参数摘要。在汽车和产品评论数据集上进行的实验表明,与最新方法相比,上下文相关的群集实现了良好的覆盖范围和精度。

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