Detecting Pain Points from User-Generated Social Media Posts Using Machine Learning

被引:22
作者
Salminen, Joni [1 ]
Mustak, Mekhail [2 ]
Corporan, Juan [3 ]
Jung, Soon-gyo [4 ]
Jansen, Bernard J. [5 ]
机构
[1] Univ Vaasa, Vaasa, Finland
[2] Turku Sch Econ & Business Adm, Turku, Finland
[3] Banco Santa Cruz RD, Santo Domingo, Dominican Rep
[4] Hamad Bin Khalifa Univ, Qatar Comp Res Inst, Ar Rayyan, Qatar
[5] Hamad Bin Khalifa Univ, Qatar Comp Res Inst, Social Comp Grp, Ar Rayyan, Qatar
关键词
marketing; artificial intelligence; AI; machine learning; customer insight; user-generated content; UGC; pain points; MARKETING-RESEARCH; ARTIFICIAL-INTELLIGENCE; CUSTOMER; TOUCHPOINTS; JOURNEY; SEARCH; DESIGN; AI;
D O I
10.1177/10949968221095556
中图分类号
F [经济];
学科分类号
02 ;
摘要
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.
引用
收藏
页码:517 / 539
页数:23
相关论文
共 115 条
[61]   Interrater reliability: the kappa statistic [J].
McHugh, Mary L. .
BIOCHEMIA MEDICA, 2012, 22 (03) :276-282
[62]   WORDNET - A LEXICAL DATABASE FOR ENGLISH [J].
MILLER, GA .
COMMUNICATIONS OF THE ACM, 1995, 38 (11) :39-41
[63]  
Mitchell T., 1997, MACH LEARN
[64]   Neurobiology and consequences of social isolation stress in animal model-A comprehensive review [J].
Mumtaz, Faiza ;
Khan, Muhammad Imran ;
Zubair, Muhammad ;
Dehpour, Ahmad Reza .
BIOMEDICINE & PHARMACOTHERAPY, 2018, 105 :1205-1222
[65]   Artificial intelligence in marketing: Topic modeling, scientometric analysis, and research agenda [J].
Mustak, Mekhail ;
Salminen, Joni ;
Ple, Loic ;
Wirtz, Jochen .
JOURNAL OF BUSINESS RESEARCH, 2021, 124 :389-404
[66]   Customer participation and value creation: a systematic review and research implications [J].
Mustak, Mekhail ;
Jaakkola, Elina ;
Halinen, Aino .
MANAGING SERVICE QUALITY, 2013, 23 (04) :341-359
[67]  
Patel S., 2020, REVE CHAT
[68]  
Patnaik Dev, 1999, Design Management Journal (Former Series), V10, P37, DOI [DOI 10.1111/J.1948-7169.1999.TB00250.X, 10.1111/j.1948-7169.1999.tb00250.x, 10.1111/j.1948-7169.1999.tb00250.xarXiv:https://onlinelibrary.wiley.com/doi/pdf/10.1111/j.1948-7169.1999.tb00250.x]
[69]  
Pawar U., 2020, ANAL VIDHYA
[70]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825