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OSPAci: Online Sentiment-Preference Analysis of User Reviews for Continues App Improvement

机译:OSPACI:在线情绪优先考虑继续应用程序改进的用户评论

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摘要

Detecting user's sentiment and preference (e.g., complain or new feature wanted) timely and precisely is crucial for developers to improve their apps correspondingly to win the competitive mobile-app market. In this paper, we propose a novel and automated framework OSPAci, which aims to identify user's sentiment and preference effectively based on online user reviews. OSPAci uses sentiment analysis and natural language processing techniques to obtain sentence-level sentiment scores and fine-grained user preference from mobile app reviews. Then, it analysis the evolution of user's sentiment trend and preference. Finally, the user sentiment trend and preference correlation is analyzed along the time dimension, thus this model can be used to monitor user's sentiment tendency and preference almost in time. We evaluate the feasibility and performance of OSPAci by using real Google play's user reviews. The experimental results show that OSPAci can effectively and efficiently identify the user's sentiment tendency and detect user preference timely and precisely.
机译:检测用户的情绪和偏好(例如,抱怨或新功能)及时,准确地对开发人员来说至关重要,以便相应地改善他们的应用程序,以赢得竞争激烈的移动应用市场。在本文中,我们提出了一种新颖和自动化的框架OSPACI,其旨在根据在线用户评论识别用户的情绪和偏好。 OSPACI采用情感分析和自然语言处理技术从移动应用程序评论中获取句子级情绪分数和细粒度的用户偏好。然后,它分析了用户的情绪趋势和偏好的演变。最后,沿着时间尺寸分析了用户情绪趋势和偏好相关,因此该模型可用于监测用户的情绪趋势和几乎及时的偏好。我们通过使用真正的Google Play的用户评论评估OSPaci的可行性和性能。实验结果表明,OSPACI可以有效地有效地识别用户的情绪趋势,并及时且精确地检测用户偏好。

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