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Improving Aspect Extraction Using Aspect Frequency and Semantic Similarity-Based Approach for Aspect-Based Sentiment Analysis

机译:基于宽高的基于语义相似性方法改进了方面提取,以实现基于宽度的情感分析

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Identifying the targets of users' opinions, referred as aspects, in aspect-based sentiment analysis, is the most important and crucial task. A large number of approaches have been proposed to accomplish this task. These approaches identify a huge amount of potential aspects from customer reviews. But not all the extracted aspects are interesting and include terms which are not related to the product and these irrelevant terms affect the performance of the aspect extraction approaches. Therefore, in this paper, we are proposing a two-level aspect pruning approach to eliminate irrelevant aspects. The proposed approach performs the task of aspect pruning in two steps: (a) by calculating the frequency of each word and selecting the most frequent aspects; and (b) by calculating the semantic similarity of non-frequent words and eliminate aspects which are not semantically related to the product. Our experimental evaluation has shown a significant improvement of the proposed approach over the compared approaches.
机译:识别用户意见的目标,称为方面,在基于方面的情感分析中,是最重要的和最重要的任务。已经提出了大量方法来完成这项任务。这些方法确定了客户评论的大量潜在方面。但并非所有提取的方面都很有趣,并包括与产品无关的术语,这些无关术语影响了各个方面提取方法的性能。因此,在本文中,我们提出了一种消除不相关方面的两级谱系修剪方法。所提出的方法在两个步骤中执行Aspipp Tuning的任务:(a)通过计算每个单词的频率并选择最常见的方面; (b)通过计算非频繁单词的语义相似性,并消除与产品语义相关的方面。我们的实验评估表明,在比较的方法上提出了提出的方法。

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