Analyzing Customer Needs of Product Ecosystems Using Online Product Reviews

Jackie Ayoub, Feng Zhou, Qianli Xu, Jessie X. Yang
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引用次数: 3

Abstract

It is necessary to analyze customer needs of a product ecosystem in order to increase customer satisfaction and user experience, which will, in turn, enhance its business strategy and profits. However, it is often time-consuming and challenging to identify and analyze customer needs of product ecosystems using traditional methods due to numerous products and services as well as their interdependence within the product ecosystem. In this paper, we analyzed customer needs of a product ecosystem by capitalizing on online product reviews of multiple products and services of the Amazon product ecosystem with machine learning techniques. First, we filtered the noise involved in the reviews using a fastText method to categorize the reviews into informative and uninformative regarding customer needs. Second, we extracted various customer needs related topics using a latent Dirichlet allocation technique. Third, we conducted sentiment analysis using a valence aware dictionary and sentiment reasoner method, which not only predicted the sentiment of the reviews, but also its intensity. Based on the first three steps, we classified customer needs using an analytical Kano model dynamically. The case study of Amazon product ecosystem showed the potential of the proposed method.
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利用在线产品评论分析产品生态系统的客户需求
分析产品生态系统的客户需求是必要的,以提高客户满意度和用户体验,从而提高其商业战略和利润。然而,由于众多的产品和服务以及它们在产品生态系统中的相互依存关系,使用传统方法识别和分析产品生态系统的客户需求通常是耗时和具有挑战性的。在本文中,我们利用机器学习技术,利用亚马逊产品生态系统中多种产品和服务的在线产品评论,分析了产品生态系统的客户需求。首先,我们使用fastText方法过滤评论中涉及的噪声,将评论分类为关于客户需求的信息和非信息。其次,我们使用潜在狄利克雷分配技术提取各种客户需求相关主题。第三,我们使用价感知词典和情感推理方法进行情感分析,该方法不仅预测评论的情感,而且预测其强度。基于前三个步骤,我们使用分析式Kano模型动态地对客户需求进行分类。通过对亚马逊产品生态系统的案例研究,证明了该方法的潜力。
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