Anomaly detection in consumer review analytics for idea generation in product innovation: Comparing machine learning and deep learning techniques

IF 11.1 1区 管理学 Q1 ENGINEERING, INDUSTRIAL Technovation Pub Date : 2024-05-08 DOI:10.1016/j.technovation.2024.103028
Xiling Cui , Zhongshan Zhu , Libo Liu , Qiang Zhou , Qiang Liu
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引用次数: 0

Abstract

With the development of big data analytics, consumers' online reviews are becoming increasingly useful for product innovation with hidden innovative ideas that can be extracted. However, these ideas may be only hidden in a small part of the massive reviews. This study aims to investigate the potential of using anomaly detection technology to identify unique reviews for more effective innovation generation. Three classical anomaly detection approaches (including both machine and deep learning) were explored, namely, isolation forest, density-based cluster analysis, and autoencoder methods. Using the consumer reviews on Dyson Vacuum cleaner from Xiaohongshu (one of the most popular social media platforms in China), we tested and compared the application of these three approaches in detecting innovation-relevant reviews. The results indicate that the two machine learning approaches, aka., density-based cluster analysis and isolation forest are too sensitive to the length of the reviews. The deep learning method, autoencoder, on the contrary, shows good stability and capability to detect the unique reviews from the whole dataset. Furthermore, the experts’ rating also confirms the effectiveness of autoencoder in identifying innovation-relevant reviews. Future studies and implications are then discussed.

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消费者评论分析中的异常检测,促进产品创新创意的产生:比较机器学习和深度学习技术
随着大数据分析技术的发展,消费者的在线评论对产品创新的作用越来越大,其中隐藏的创新想法可以被提取出来。然而,这些创意可能只隐藏在海量评论的一小部分中。本研究旨在探讨使用异常检测技术识别独特评论的潜力,以便更有效地产生创新。研究探索了三种经典的异常检测方法(包括机器学习和深度学习),即隔离林、基于密度的聚类分析和自动编码器方法。我们利用小红书(中国最受欢迎的社交媒体平台之一)上关于戴森吸尘器的消费者评论,测试并比较了这三种方法在检测创新相关评论方面的应用。结果表明,基于密度的聚类分析和隔离森林这两种机器学习方法对评论的长度过于敏感。相反,深度学习方法自动编码器则表现出良好的稳定性和从整个数据集中检测出独特评论的能力。此外,专家的评分也证实了自动编码器在识别创新相关评论方面的有效性。随后讨论了未来的研究和意义。
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来源期刊
Technovation
Technovation 管理科学-工程:工业
CiteScore
15.10
自引率
11.20%
发文量
208
审稿时长
91 days
期刊介绍: The interdisciplinary journal Technovation covers various aspects of technological innovation, exploring processes, products, and social impacts. It examines innovation in both process and product realms, including social innovations like regulatory frameworks and non-economic benefits. Topics range from emerging trends and capital for development to managing technology-intensive ventures and innovation in organizations of different sizes. It also discusses organizational structures, investment strategies for science and technology enterprises, and the roles of technological innovators. Additionally, it addresses technology transfer between developing countries and innovation across enterprise, political, and economic systems.
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