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How to Utilize my App Reviews? A Novel Topics Extraction Machine Learning Schema for Strategic Business Purposes

机译:如何利用我的应用程序评论?用于战略业务目的的新型主题提取机器学习模式

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摘要

Acquiring knowledge about users’ opinion and what they say regarding specific features within an app, constitutes a solid steppingstone for understanding their needs and concerns. App review utilization helps project management teams to identify threads and opportunities for app software maintenance, optimization and strategic marketing purposes. Nevertheless, app user review classification for identifying valuable gems of information for app software improvement, is a complex and multidimensional issue. It requires foresight and multiple combinations of sophisticated text pre-processing, feature extraction and machine learning methods to efficiently classify app reviews into specific topics. Against this backdrop, we propose a novel feature engineering classification schema that is capable to identify more efficiently and earlier terms-words within reviews that could be classified into specific topics. For this reason, we present a novel feature extraction method, the DEVMAX.DF combined with different machine learning algorithms to propose a solution in app review classification problems. One step further, a simulation of a real case scenario takes place to validate the effectiveness of the proposed classification schema into different apps. After multiple experiments, results indicate that the proposed schema outperforms other term extraction methods such as TF.IDF and χ2 to classify app reviews into topics. To this end, the paper contributes to the knowledge expansion of research and practitioners with the purpose to reinforce their decision-making process within the realm of app reviews utilization.
机译:获取关于用户意见的知识以及他们对应用程序中的特定功能的了解,构成了一个实心的跨初级船,以了解他们的需求和关注。 App Review Lifferative有助于项目管理团队识别应用程序软件维护,优化和战略营销目的的线程和机会。尽管如此,应用程序用户审查分类用于识别应用程序软件改进的有价值宝石的分类,是一个复杂和多维问题。它需要远见和多种组合的复杂文本预处理,功能提取和机器学习方法,以便有效地将应用程序审查分类为特定主题。在此背景下,我们提出了一种新颖的特征工程分类模式,能够在评论中更有效地识别可以分类为特定主题的评论中的更有效和更早的条款。因此,我们提出了一种新颖的特征提取方法,devmax.df与不同的机器学习算法相结合,提出了应用程序审查分类问题的解决方案。更进一步,进行真实情况场景的模拟,以验证所提出的分类模式到不同应用程序的效果。经过多次实验后,结果表明,所提出的架构优于其他术语提取方法,如TF.IDF和χ2,将App审核分类为主题。为此,本文有助于研究和从业者的知识扩张,目的是在应用程序评论利用率的境界中加强其决策过程。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2020(22),11
  • 年度 2020
  • 页码 1310
  • 总页数 21
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:App评论;主题提取;评论分类;特征提取方法;机器学习方法;文本分类;文本分析;应用程序业务战略;
  • 入库时间 2022-08-21 12:21:00

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