基于Kano模型的聚类技术从应用评论中提取有吸引力的应用方面

N. Alamoudi, Malak Baslyman, Motaz Ahmed
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引用次数: 2

摘要

Kano模型是一种基于用户满意度来评价产品特征的技术。传统的Kano方法的问题在于,它仅限于手动从用户那里收集的少量数据,并且参与者的样本可能不具有代表性。许多用户对通过社交媒体平台评估产品功能感兴趣。通过使用来自社交媒体的用户反馈作为了解其满意度的来源,可以减轻Kano模型的局限性。目前,许多移动应用程序都是为了解决相同的问题并服务于同一领域而开发的。因此,很难与同类产品竞争,提高用户的满意度来赢得市场优势。在这项研究中,应用程序评论使用自然语言处理和聚类技术进行分析,提取应用程序方面,提高用户满意度,并根据Kano模型分类进行标记。聚类是基于方面的不满意和满意值。我们基于从用户调查中建立的基础事实来评估聚类技术的结果。实验表明,我们的聚类和标记方法能够比必须的和一维的方面更好地识别有吸引力的应用程序方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting Attractive App Aspects from App Reviews using Clustering Techniques based on Kano Model
Kano model is a technique to evaluate product features based on users’ satisfaction. The problem with the traditional Kano approach is that it is limited to the small amount of data collected manually from users and the sample of participants might not be representative. Many users are interested in evaluating product features via social media platforms. The limitation of the Kano model can be mitigated by using users’ feedback from social media as a source to understand their satisfaction. Nowadays, several mobile applications are developed to solve the same problem and serve the same domain. Hence, it has become difficult to compete with similar products and increase users’ satisfaction to win the market advantage. In this research, app reviews were analyzed using natural language processing and clustering techniques to extract app aspects that increase user satisfaction by labeling them according to the Kano model categories. The clustering was based on aspects dissatisfaction and satisfaction values. We evaluated the results of the clustering technique based on a ground truth that was built from a user survey. Experiments showed that our clustering and labeling approach was able to identify the attractive app aspects better than must-be and one-dimensional aspects.
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