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Using frame semantics for classifying and summarizing application store reviews

机译:使用框架语义对应用程序商店评论进行分类和汇总

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摘要

Text mining techniques have been recently employed to classify and summarize user reviews on mobile application stores. However, due to the inherently diverse and unstructured nature of user-generated online textual data, text-based review mining techniques often produce excessively complicated models that are prone to overfitting. In this paper, we propose a novel approach, based on frame semantics, for app review mining. Semantic frames help to generalize from raw text (individual words) to more abstract scenarios (contexts). This lower-dimensional representation of text is expected to enhance the predictive capabilities of review mining techniques and reduce the chances of overfitting. Specifically, our analysis in this paper is two-fold. First, we investigate the performance of semantic frames in classifying informative user reviews into various categories of actionable software maintenance requests. Second, we propose and evaluate the performance of multiple summarization algorithms in generating concise and representative summaries of informative reviews. Three different datasets of app store reviews, sampled from a broad range of application domains, are used to conduct our experimental analysis. The results show that semantic frames can enable an efficient and accurate review classification process. However, in review summarization tasks, our results show that text-based summarization generates more comprehensive summaries than frame-based summarization. Finally, we introduces MARC 2.0, a review classification and summarization suite that implements the algorithms investigated in our analysis.
机译:最近已采用文本挖掘技术来对移动应用程序商店上的用户评论进行分类和汇总。但是,由于用户生成的在线文本数据的内在多样性和非结构化性质,基于文本的评论挖掘技术通常会生成过于复杂的模型,从而容易过度拟合。在本文中,我们提出了一种基于框架语义的,用于应用程序评论挖掘的新颖方法。语义框架有助于将原始文本(单个单词)推广到更抽象的场景(上下文)。文本的这种较低维表示有望增强审阅挖掘技术的预测能力,并减少过拟合的机会。具体来说,我们在本文中的分析有两个方面。首先,我们调查语义框架在将信息丰富的用户评论分类为可操作的软件维护请求的各种类别中的性能。其次,我们提出并评估了多种摘要算法在生成简明而有代表性的信息摘要时的性能。从广泛的应用程序域中采样的三个不同的应用程序商店评论数据集用于进行我们的实验分析。结果表明,语义框架可以实现高效,准确的评论分类过程。但是,在审阅摘要任务中,我们的结果表明,基于文本的摘要比基于框架的摘要生成更全面的摘要。最后,我们介绍了MARC 2.0,这是一个评论分类和摘要套件,可实现我们分析中所研究的算法。

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