Measuring Online Customer Satisfaction Based on Customer Reviews: Topic Modeling Method Using Latent Dirichlet Allocation (LDA) Algorithm

Gehan S Dhameeth
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Abstract

Companies invest significant resources in retaining their customers. Nonetheless, organizations have witnessed customer attrition due to inadequate loyalty. This trend is particularly prevalent among online customer bases. The root cause of this issue lies in the absence of an effective tool for measuring online customer satisfaction that surpasses the capabilities of existing methods. To address this concern, a quantitative study explored the dimensions of online customer satisfaction measurement and established a model applicable across industries for gauging and predicting online customer satisfaction. This was accomplished by conducting an online survey via SurveyMonkey with 384 respondents, employing supervised and unsupervised machine learning techniques in conjunction with the topic modeling algorithm, Latent Dirichlet Allocation (LDA). The findings of this study revealed a significant relationship between predictor variables such as navigation, playfulness, information quality, trust, personalization, and responsiveness and the target variable, online customer satisfaction, employing multiple linear modeling (LSM). Furthermore, it was observed that this phenomenon transcends age groups, impacting both younger and older customers alike. However, it is essential to acknowledge certain limitations, including the risk of overfitting, challenges in establishing external validity, a narrow focus on the retail sector (B2C), and a restricted scope limited to the United States market.
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基于客户评论衡量在线客户满意度:使用潜在德里希勒分配(LDA)算法的主题建模方法
公司为留住客户投入了大量资源。然而,由于忠诚度不够,企业也出现了客户流失的现象。这一趋势在在线客户群中尤为普遍。造成这一问题的根本原因在于缺乏一种超越现有方法的有效工具来衡量在线客户满意度。为了解决这一问题,一项定量研究探讨了在线客户满意度测量的各个维度,并建立了一个适用于各行业的模型,用于衡量和预测在线客户满意度。这项研究通过 SurveyMonkey 对 384 名受访者进行了在线调查,并结合主题建模算法 Latent Dirichlet Allocation (LDA) 使用了监督和非监督机器学习技术。研究结果表明,通过多重线性建模(LSM),导航、趣味性、信息质量、信任、个性化和响应性等预测变量与目标变量(在线客户满意度)之间存在显著关系。此外,研究还发现,这种现象超越了年龄组,对年轻和年长的客户都有影响。然而,必须承认存在某些局限性,包括过度拟合的风险、建立外部有效性的挑战、对零售行业(B2C)的狭隘关注以及仅限于美国市场的范围限制。
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