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属性嵌入:从消费者评论中学习产品属性的层次化表示

Attribute Embedding: Learning Hierarchical Representations of Product Attributes from Consumer Reviews

Journal of Marketing · 2021
被引 58
人大 AFT50UTD24ABS 4*

中文导读

利用机器学习和自然语言处理,从消费者评论中提取产品属性的层次结构,揭示工程属性与元属性之间的关联,帮助管理者进行灵活的情感分析和产品比较。

Abstract

Sales, product design, and engineering teams benefit immensely from better understanding customer perspectives. How do customers combine a product's technical specifications (i.e., engineered attributes) to form abstract product benefits (i.e., meta-attributes)? To address this question, the authors use machine learning and natural language processing to develop a methodological framework that extracts a hierarchy of product attributes based on contextual information of how attributes are expressed in consumer reviews. The attribute hierarchy reveals linkages between engineered attributes and meta-attributes within a product category, enabling flexible sentiment analysis that can identify how consumers receive meta-attributes, and which engineered attributes are main drivers. The framework can guide managers to monitor only portions of review content that are relevant to specific attributes of interest. Moreover, managers can compare products within and between brands, where different names and attribute combinations are often associated with similar benefits. The authors apply the framework to the tablet computer category to generate dashboards and perceptual maps and provide validations of the attribute hierarchy using both primary and secondary data. Resultant insights allow the exploration of substantive questions, such as how Apple improved successive generations of iPads and why Hewlett-Packard and Toshiba discontinued their tablet product lines.

机器学习自然语言处理消费者评论分析产品属性层次情感分析