Impact of information consistency in online reviews on consumer behavior in the e-commerce industry: a text mining approach

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Technologies and Applications Pub Date : 2023-06-12 DOI:10.1108/dta-08-2022-0342
Qing Li, Jaeseung Park, Jaekyeong Kim
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Abstract

PurposeThe current study investigates the impact on perceived review helpfulness of the simultaneous processing of information from multiple cues with various central and peripheral cue combinations based on the elaboration likelihood model (ELM). Thus, the current study develops and tests hypotheses by analyzing real-world review data with a text mining approach in e-commerce to investigate how information consistency (rating inconsistency, review consistency and text similarity) influences perceived helpfulness. Moreover, the role of product type is examined in online consumer reviews of perceived helpfulness.Design/methodology/approachThe current study collected 61,900 online reviews, including 600 products in six categories, from Amazon.com. Additionally, 51,927 reviews were filtered that received helpfulness votes, and then text mining and negative binomial regression were applied.FindingsThe current study found that rating inconsistency and text similarity negatively affect perceived helpfulness and that review consistency positively affects perceived helpfulness. Moreover, peripheral cues (rating inconsistency) positively affect perceived helpfulness in reviews of experience goods rather than search goods. However, there is a lack of evidence to demonstrate the hypothesis that product types moderate the effectiveness of central cues (review consistency and text similarity) on perceived helpfulness.Originality/valuePrevious studies have mainly focused on numerical and textual factors to investigate the effect on perceived helpfulness. Additionally, previous studies have independently confirmed the factors that affect perceived helpfulness. The current study investigated how information consistency affects perceived helpfulness and found that various combinations of cues significantly affect perceived helpfulness. This result contributes to the review helpfulness and ELM literature by identifying the impact on perceived helpfulness from a comprehensive perspective of consumer review and information consistency.
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在线评论中信息一致性对电子商务行业消费者行为的影响:一种文本挖掘方法
目的本研究基于精化似然模型(ELM),研究了在不同中心和外围线索组合的情况下,同时处理来自多个线索的信息对感知复习有用性的影响。因此,当前的研究通过在电子商务中使用文本挖掘方法分析真实世界的评论数据来发展和测试假设,以调查信息一致性(评级不一致性、评论一致性和文本相似性)如何影响感知的帮助性。此外,产品类型在在线消费者对有用性的评价中的作用也得到了检验。设计/方法/方法当前的研究从亚马逊网站收集了61900条在线评论,包括六类600种产品。此外,还过滤了51927条获得有益投票的评论,然后应用文本挖掘和负二项回归。发现当前的研究发现,评分不一致性和文本相似性对感知的帮助性产生负面影响,而评论一致性对感知帮助性产生正面影响。此外,在体验商品而非搜索商品的评论中,外围线索(评级不一致)会积极影响感知到的有用性。然而,缺乏证据证明产品类型会调节中心线索(评论一致性和文本相似性)对感知帮助的有效性这一假设。原创性/价值以往的研究主要集中在数字和文本因素上,以调查对感知帮助的影响。此外,先前的研究已经独立证实了影响感知乐于助人的因素。目前的研究调查了信息一致性如何影响感知的帮助性,发现各种线索组合显著影响感知的助人性。这一结果通过从消费者评论和信息一致性的综合角度确定对感知帮助的影响,为评论帮助性和ELM文献做出了贡献。
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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