Leveraging User Reviews to Improve Accuracy for Mobile App Retrieval

Dae Hoon Park, Mengwen Liu, ChengXiang Zhai, Haohong Wang
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引用次数: 62

Abstract

Smartphones and tablets with their apps pervaded our everyday life, leading to a new demand for search tools to help users find the right apps to satisfy their immediate needs. While there are a few commercial mobile app search engines available, the new task of mobile app retrieval has not yet been rigorously studied. Indeed, there does not yet exist a test collection for quantitatively evaluating this new retrieval task. In this paper, we first study the effectiveness of the state-of-the-art retrieval models for the app retrieval task using a new app retrieval test data we created. We then propose and study a novel approach that generates a new representation for each app. Our key idea is to leverage user reviews to find out important features of apps and bridge vocabulary gap between app developers and users. Specifically, we jointly model app descriptions and user reviews using topic model in order to generate app representations while excluding noise in reviews. Experiment results indicate that the proposed approach is effective and outperforms the state-of-the-art retrieval models for app retrieval.
利用用户评论提高移动应用检索的准确性
智能手机和平板电脑及其应用程序在我们的日常生活中无处不在,这导致了对搜索工具的新需求,以帮助用户找到合适的应用程序来满足他们的即时需求。虽然有一些商业移动应用搜索引擎可用,但移动应用检索的新任务尚未得到严格的研究。事实上,目前还没有一个测试集合可以定量地评估这个新的检索任务。在本文中,我们首先使用我们创建的新的应用程序检索测试数据研究了最先进的检索模型对应用程序检索任务的有效性。然后,我们提出并研究了一种为每个应用生成新表示的新方法。我们的主要想法是利用用户评论来发现应用的重要功能,并弥合应用开发者和用户之间的词汇差距。具体来说,我们使用主题模型对应用描述和用户评论进行联合建模,以生成应用表示,同时排除评论中的噪音。实验结果表明,该方法是有效的,并且在应用程序检索方面优于现有的检索模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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