“你的应用程序的哪些部分受到用户的喜爱?”(T)

Xiaodong Gu, Sunghun Kim
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引用次数: 151

摘要

最近,Begel等人发现软件开发人员问的最重要的问题之一是“用户使用/喜爱软件的哪些部分”。用户评论提供了一个解决这个问题的有效渠道。然而,大多数现有的评审总结工具将评审视为词包(即混合评审类别),并且仅限于提取软件方面和用户偏好。我们提出了一个新颖的综述总结框架,SUR-Miner。它没有使用“词袋”假设,而是将评论分为五类,并使用基于模式的解析器提取句子的方面,其中包括方面评估。然后,SUR-Miner使用两个交互式图表将摘要可视化。我们对17个流行应用程序的评估表明,与最先进的技术相比,su - miner总结了更准确、更清晰的方面,f1得分为0.81,显著高于ReviewSpotlight(0.56)和Guzmans的方法(0.55)。来自开发人员的反馈显示,88%的开发人员同意su - miner总结的有用性。
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"What Parts of Your Apps are Loved by Users?" (T)
Recently, Begel et al. found that one of the most important questions software developers ask is "what parts of software are used/loved by users." User reviews provide an effective channel to address this question. However, most existing review summarization tools treat reviews as bags-of-words (i.e., mixed review categories) and are limited to extract software aspects and user preferences. We present a novel review summarization framework, SUR-Miner. Instead of a bags-of-words assumption, it classifies reviews into five categories and extracts aspects for sentences which include aspect evaluation using a pattern-based parser. Then, SUR-Miner visualizes the summaries using two interactive diagrams. Our evaluation on seventeen popular apps shows that SUR-Miner summarizes more accurate and clearer aspects than state-of-the-art techniques, with an F1-score of 0.81, significantly greater than that of ReviewSpotlight (0.56) and Guzmans' method (0.55). Feedback from developers shows that 88% developers agreed with the usefulness of the summaries from SUR-Miner.
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