声誉
危害
忠诚
电话
忠诚计划
服务(商务)
投诉
业务
价值(数学)
客户关系管理
互联网隐私
知识管理
营销
计算机科学
心理学
忠诚商业模式
服务质量
社会心理学
社会科学
语言学
哲学
机器学习
社会学
政治学
法学
作者
Aytac Gokce,Mina Tajvidi,Nick Hajli
标识
DOI:10.1109/tem.2024.3432457
摘要
The reputation of a business is significantly influenced by online reviews, with negative feedback having the potential to harm a brand's image and dissuade potential customers. To safeguard their image and convert dissatisfied users into loyal ones, businesses must formulate effective strategies for managing negative reviews. This study investigates response strategies aimed at enhancing the relationship between people and organizations among dissatisfied users upon their return. Using AI as a methodology by leveraging machine learning in our research, we managed to achieve remarkable accuracy using only response attributes to predict there is an increase in subsequent ratings of dissatisfied return customers. The study reveals that specific actions taken or planned in response to a user's complaint, a statement accepting responsibility for service failures, and a request for direct contact through phone or email can positively impact user loyalty and elevate subsequent ratings from returning dissatisfied customers. However, there is a noteworthy negative correlation between the length of the response text and the subsequent rating from returning customers. These findings not only provide theoretical insights but also have practical implications, underscoring the value of machine learning and data analytics in effective reputation management.
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