User experience of mobile apps is an essential ingredient that can influence the audience volumes and app revenue. To ensure good user experience and assist app development, several prior studies resort to analysis of app reviews, a type of app repository that directly reflects user opinions about the apps. Accurately responding to the app reviews is one of the ways to relieve user concerns and thus improve user experience. However, the response quality of the existing method relies on the pre-extracted features from other tools, including manually-labelled keywords and predicted review sentiment, which may hinder the generalizability and flexibility of the method. In this paper, we propose a novel end-to-end neural network approach, named CoRe, with the contextual knowledge naturally incorporated and without involving external tools. Specifically, CoRe integrates two types of contextual knowledge in the training corpus, including official app descriptions from app store and responses of the retrieved semantically similar reviews, for enhancing the relevance and accuracy of the generated review responses. Experiments on practical review data show that CoRe can outperform the state-of-the-art method by 11.53% in terms of BLEU-4, an accuracy metric that is widely used to evaluate text generation systems.
翻译:移动应用程序的用户经验是影响受众数量和应用程序收入的一个基本要素。为确保良好的用户经验和帮助应用程序开发,一些先前的研究采用分析应用程序审查的方法,这是一种直接反映用户对应用程序意见的应用程序存储器。对应用程序审查作出准确反应是减轻用户关切,从而改善用户经验的一种方法。但是,现有方法的响应质量取决于其他工具的预选功能,包括人工标签关键词和预测审查感,这可能妨碍该方法的通用性和灵活性。在本文件中,我们提议采用名为CoRe的新型端到端神经网络方法,其背景知识是自然结合的,不涉及外部工具。具体地说,CoRe将两种背景知识纳入培训教材,包括应用程序储存的正式应用程序说明和检索到的语义类似的审查的答复,以提高所产生审查答复的相关性和准确性。对实际审查数据的实验表明,CoRe可以比最新方法高出11.53%的BLEU-4的文本生成系统,这种精确度指标被广泛用于评估。