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Identifying Product Defects from User Complaints: A Probabilistic Defect Model

机译:从用户投诉中识别产品缺陷:概率缺陷模型

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The recent surge in using social media has created a massive amount of unstructured textual complaints about products and services. However, discovering potential product defects from large amounts of unstructured text is a nontrivial task. In this paper, we develop a probabilistic defect model (PDM) that identifies the most critical product issues and corresponding product attributes, simultaneously. We facilitate domain-oriented key attributes (e.g., product model, year of production, defective components, symptoms, etc.) of a product to identify and acquire integral information of defect. We conduct comprehensive evaluations including quantitative evaluations and qualitative evaluations to ensure the quality of discovered information. Experimental results demonstrate that our proposed model outperforms existing unsupervised method (K-Means Clustering), and could find more valuable information. Our research has significant managerial implications for mangers, manufacturers, and policy makers.
机译:最近使用社交媒体的热潮已引起了大量关于产品和服务的非结构化文本投诉。但是,从大量的非结构化文本中发现潜在的产品缺陷是一项艰巨的任务。在本文中,我们开发了一个概率缺陷模型(PDM),该模型可以同时识别最关键的产品问题和相应的产品属性。我们促进产品的面向领域的关键属性(例如产品型号,生产年份,有缺陷的组件,症状等)来识别和获取缺陷的完整信息。我们进行综合评估,包括定量评估和定性评估,以确保所发现信息的质量。实验结果表明,我们提出的模型优于现有的无监督方法(K-Means聚类),并且可以找到更多有价值的信息。我们的研究对管理人员,制造商和政策制定者具有重要的管理意义。

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