在线产品评论的内容评级一致性及其对有用性的影响:一个细粒度层次的情感分析

Anas Husain, Mohammad Alsharo, saif Addeen AlRababah, Mohammed-Issa Riad Jaradat
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引用次数: 0

摘要

目的:本研究旨在探讨评鉴内容与评鉴评分的一致性对评鉴有用性的影响。引入了一种评价一致性度量来确定文本内容的评价情感与评价评分的一致程度。采用基于信号理论的理论模型,探讨不同变量(评论情绪、评论等级、评论长度和评论等级方差)对评论一致性的影响,以及评论一致性与评论有用性的关系。背景:在线评论的特点各不相同,因此具有不同的质量特征和帮助程度。高质量的在线评论使消费者能够做出明智的购买决定,提高对电子商务网站的信任。无论不同因素的独立或共同影响,在线评论的有用性仍然是研究的焦点问题。本研究认为评论内容与评论评分的一致性是影响在线评论有用性的重要质量指标。在线评论的一致性是保持在线评论重要性和感知价值的另一个重要要求。顺便提一下,这个参数在文献中没有得到充分的讨论。一个可能的原因是,在电子商务网站上,评论一致性不是一个容易监控的评论特性。方法:从亚马逊网站上收集了超过10万条产品评论,并使用自然语言处理工具进行预处理。然后,识别质量评论,提取相关特征用于模型训练。实现了机器学习和情感分析技术,并为每个评论分配了0(不一致)和1(完全一致)之间的一致性分数。最后,运用信号理论,对所得数据进行分析,确定复习一致性对复习帮助性的影响、各因素对复习一致性的影响以及它们与复习帮助性的关系。贡献:本研究通过引入数学度量来确定在线评论的文本内容与其相关评级之间的一致性,从而对文献做出贡献。此外,我们建立了一个基于信号理论的理论模型来研究复习帮助的影响。这项工作可以大大扩展在线评论的有用性的知识体系,对研究和实践具有显著的意义。研究结果:实证结果表明,评论一致性显著影响在线评论的感知有用性。研究同样发现,评价等级是影响评价一致性的重要因素;本文还证实了评论情绪、评论等级、评论长度和评论等级差异对评论一致性和评论有用性之间的关系有调节作用。总体而言,研究结果表明:(1)具有正确解释相关评分的文本内容的在线评论往往更有帮助;(2)评分极端的评论更有可能与其文本内容一致;(3)相对而言,短文本内容、正极性文本内容、评分分数和方差较低的评论对评论的帮助性影响更大。对从业者的建议:电子商务系统应该包含评论一致性度量,以对消费者评论进行排名,并为客户提供对最有帮助的评论的快速而准确的访问。对社会的影响:结合在线评论的评论一致性评分可以帮助消费者获得最好的评论并做出更好的购买决定,电子商务系统可以改善他们的业务,最终导致更有效的电子商务。未来研究:在不同的数据集、产品类型和不同的调节变量中,应该进行更多的研究来测试评论一致性对有用性的影响。
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Content-Rating Consistency of Online Product Review and Its Impact on Helpfulness: A Fine-Grained Level Sentiment Analysis
Aim/Purpose: The objective of this research is to investigate the effect of review consistency between textual content and rating on review helpfulness. A measure of review consistency is introduced to determine the degree to which the review sentiment of textual content conforms with the review rating score. A theoretical model grounded in signaling theory is adopted to explore how different variables (review sentiment, review rating, review length, and review rating variance) affect review consistency and the relationship between review consistency and review helpfulness. Background: Online reviews vary in their characteristics and hence their different quality features and degrees of helpfulness. High-quality online reviews offer consumers the ability to make informed purchase decisions and improve trust in e-commerce websites. The helpfulness of online reviews continues to be a focal research issue regardless of the independent or joint effects of different factors. This research posits that the consistency between review content and review rating is an important quality indicator affecting the helpfulness of online reviews. The review consistency of online reviews is another important requirement for maintaining the significance and perceived value of online reviews. Incidentally, this parameter is inadequately discussed in the literature. A possible reason is that review consistency is not a review feature that can be readily monitored on e-commerce websites. Methodology: More than 100,000 product reviews were collected from Amazon.com and preprocessed using natural language processing tools. Then, the quality reviews were identified, and relevant features were extracted for model training. Machine learning and sentiment analysis techniques were implemented, and each review was assigned a consistency score between 0 (not consistent) and 1 (fully consistent). Finally, signaling theory was employed, and the derived data were analyzed to determine the effect of review consistency on review helpfulness, the effect of several factors on review consistency, and their relationship with review helpfulness. Contribution: This research contributes to the literature by introducing a mathematical measure to determine the consistency between the textual content of online reviews and their associated ratings. Furthermore, a theoretical model grounded in signaling theory was developed to investigate the effect on review helpfulness. This work can considerably extend the body of knowledge on the helpfulness of online reviews, with notable implications for research and practice. Findings: Empirical results have shown that review consistency significantly affects the perceived helpfulness of online reviews. The study similarly finds that review rating is an important factor affecting review consistency; it also confirms a moderating effect of review sentiment, review rating, review length, and review rating variance on the relationship between review consistency and review helpfulness. Overall, the findings reveal the following: (1) online reviews with textual content that correctly explains the associated rating tend to be more helpful; (2) reviews with extreme ratings are more likely to be consistent with their textual content; and (3) comparatively, review consistency more strongly affects the helpfulness of reviews with short textual content, positive polarity textual content, and lower rating scores and variance. Recommendations for Practitioners: E-commerce systems should incorporate a review consistency measure to rank consumer reviews and provide customers with quick and accurate access to the most helpful reviews. Impact on Society: Incorporating a score of review consistency for online reviews can help consumers access the best reviews and make better purchase decisions, and e-commerce systems improve their business, ultimately leading to more effective e-commerce. Future Research: Additional research should be conducted to test the impact of review consistency on helpfulness in different datasets, product types, and different moderating variables.
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