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A novel probabilistic graphic model to detect product defects from social media data

机译:一种新颖的概率图形模型,可检测社交媒体数据的产品缺陷

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摘要

Product defects are a major concern for manufacturers and customers. Detecting product defects is vital for manufacturers to prevent enormous product failure costs. As the surge of social media is in vogue, social media data become an important information source for manufacturers to collect defect information. In this study, we propose a novel probabilistic graphic model to discover defects from social media data. We first use three filters, namely, sentiment filter, component-symptom filter and similarity filter, to select informative data. Second, we analyze the remaining data via the proposed probabilistic graphic model and identify defect-related data. Our method provides detailed defect information including defect types, defective components and defect symptoms which is omitted by previous research. A case study in the automobile industry validates the effectiveness and superior performance of our method compared to prior approaches.
机译:产品缺陷是制造商和客户的主要问题。检测产品缺陷对制造商至关重要,以防止巨大的产品故障成本。随着社交媒体激增的流行,社交媒体数据成为制造商收集缺陷信息的重要信息来源。在本研究中,我们提出了一种新颖的概率图形模型,以发现来自社交媒体数据的缺陷。我们首先使用三个过滤器,即情感滤波器,组件症状过滤器和相似性过滤器,选择信息性数据。其次,我们通过所提出的概率图形模型分析剩余数据并识别与缺陷相关的数据。我们的方法提供了详细的缺陷信息,包括缺陷类型,有缺陷的组件和缺陷症状,以前的研究省略。与现有方法相比,汽车行业的案例研究验证了我们方法的有效性和优越性。

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