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Mining User Requirements from Application Store Reviews Using Frame Semantics

机译:使用帧语义的应用程序商店审核的挖掘用户要求

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Context and motivation: Research on mining user reviews in mobile application (app) stores has noticeably advanced in the past few years. The majority of the proposed techniques rely on classifying the textual description of user reviews into different categories of technically informative user requirements and uninformative feedback. Question/Problem: Relying on the textual attributes of reviews often produces high dimensional models. This increases the complexity of the classifier and can lead to overfitting problems. Principal ideas/results: We propose a novel semantic approach for app review classification. The proposed approach is based on the notion of semantic role labeling, or characterizing the lexical meaning of text in terms of semantic frames. Semantic frames help to generalize from text (individual words) to more abstract scenarios (contexts). This reduces the dimensionality of the data and enhances the predictive capabilities of the classifier. Three datasets of user reviews are used to conduct our experimental analysis. Results show that semantic frames can be used to generate lower dimensional and more accurate models in comparison to text classification methods. Contribution: A novel semantic approach for extracting user requirements from app reviews. The proposed approach enables a more efficient classification process and reduces the chance of overfitting.
机译:背景和动机:在过去几年中,在移动应用程序(应用程序)商店的采矿用户评论研究。大多数拟议技术依赖于分类用户评论的文本描述,以不同类别的技术信息丰富的用户需求和未表达反馈。问题/问题:依赖于评论的文本属性通常会产生高维模型。这增加了分类器的复杂性,并可能导致过度的问题。主要想法/结果:我们提出了一种新颖的应用审查分类语义方法。所提出的方法基于语义角色标记的概念,或在语义帧方面表征文本的词汇含义。语义帧有助于将文本(单个单词)概括为更抽象的场景(上下文)。这降低了数据的维度,并增强了分类器的预测功能。用户评论的三个数据集用于进行我们的实验分析。结果表明,与文本分类方法相比,语义帧可用于产生较低的维度和更准确的模型。贡献:从应用程序评论中提取用户需求的新颖语义方法。所提出的方法使得能够更有效的分类过程,并减少过度装备的机会。

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