使用机器学习从用户生成的社交媒体帖子中检测痛点

IF 6.8 1区 管理学 Q1 BUSINESS Journal of Interactive Marketing Pub Date : 2022-06-03 DOI:10.1177/10949968221095556
Joni O. Salminen, M. Mustak, Juan Corporan, Soon-Gyo Jung, B. Jansen
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引用次数: 10

摘要

人工智能,特别是机器学习,在自动检测客户痛点方面具有很高的潜力,这是客户表达的一个特别关注的问题,公司可以解决。然而,分散在社交媒体上的非结构化数据使检测成为一项不平凡的任务。因此,为了帮助企业更深入地了解客户的痛点,作者对各种机器学习模型的性能进行了实验和评估,以自动检测痛点和痛点类型,从而增强客户的洞察力。数据包括4.2 针对来自五个不同行业的20个全球品牌的数百万条用户生成的推文。在他们训练的模型中,神经网络在整体痛点检测方面表现出最好的性能,准确率为85%(F1得分 = .80)。检测五个特定疼痛点的最佳模型是使用SYNONYM增强的RoBERTa 100样本。本研究通过对基于自然语言的内容识别和分类的机器学习模型的应用和比较评估,为营销学界的机器学习研究增添了另一个基础性的组成部分。此外,作者建议公司使用痛点分析,这是一种将子类应用于已识别的痛点消息的技术,以更深入地了解客户的担忧。
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Detecting Pain Points from User-Generated Social Media Posts Using Machine Learning
Artificial intelligence, particularly machine learning, carries high potential to automatically detect customers’ pain points, which is a particular concern the customer expresses that the company can address. However, unstructured data scattered across social media make detection a nontrivial task. Thus, to help firms gain deeper insights into customers’ pain points, the authors experiment with and evaluate the performance of various machine learning models to automatically detect pain points and pain point types for enhanced customer insights. The data consist of 4.2 million user-generated tweets targeting 20 global brands from five separate industries. Among the models they train, neural networks show the best performance at overall pain point detection, with an accuracy of 85% (F1 score = .80). The best model for detecting five specific pain points was RoBERTa 100 samples using SYNONYM augmentation. This study adds another foundational building block of machine learning research in marketing academia through the application and comparative evaluation of machine learning models for natural language–based content identification and classification. In addition, the authors suggest that firms use pain point profiling, a technique for applying subclasses to the identified pain point messages to gain a deeper understanding of their customers’ concerns.
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来源期刊
CiteScore
20.20
自引率
5.90%
发文量
39
期刊介绍: The Journal of Interactive Marketing aims to explore and discuss issues in the dynamic field of interactive marketing, encompassing both online and offline topics related to analyzing, targeting, and serving individual customers. The journal seeks to publish innovative, high-quality research that presents original results, methodologies, theories, and applications in interactive marketing. Manuscripts should address current or emerging managerial challenges and have the potential to influence both practice and theory in the field. The journal welcomes conceptually rigorous approaches of any type and does not favor or exclude specific methodologies.
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