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Understanding relationship quality in hospitality services A study based on text analytics and partial least squares

机译:了解酒店服务的关系质量基于文本分析和部分最小二乘的研究

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Purpose The purpose of this paper is to analyze the occurrence of terms to identify the relevant topics and then to investigate the area (based on topics) of hospitality services that is highly associated with relationship quality. This research represents an opportunity to fill the gap in the current literature, and clarify the understanding of guests' affective states by evaluating all aspects of their relationship with a hotel. Design/methodology/approach This research focuses on natural opinions upon which machine-learning algorithms can be executed: text summarization, sentiment analysis and latent Dirichlet allocation (LDA). Our data set contains 47,172 reviews of 33 hotels located in Las Vegas, and registered with Yelp. A component-based structural equation modeling (partial least squares (PLS)) is applied, with a dual - exploratory and predictive - purpose. Findings To maintain a truly loyal relationship and to achieve competitive success, hospitality managers must take into account both tangible and intangible features when allocating their marketing efforts to satisfaction-, trust- and commitment-based cues. On the other hand, the application of the PLS predict algorithm demonstrates the predictive performance (out-of-sample prediction) of our model that supports its ability to predict new and accurate values for individual cases when further samples are added. Originality/value LDA and PLS produce relevant informative summaries of corpora, and confirm and address more specifically the results of the previous literature concerning relationship quality. Our results are more reliable and accurate (providing insights not indicated in guests' ratings into how hotels can improve their services) than prior statistical results based on limited sample data and on numerical satisfaction ratings alone.
机译:目的本文的目的是分析确定相关主题的术语,然后调查与关系质量高度相关的酒店服务的区域(基于主题)。该研究代表了填补当前文献中差距的机会,并通过评估与酒店的关系的各个方面来澄清对客人的情感国家的理解。设计/方法/方法本研究侧重于可以执行机器学习算法的自然意见:文本摘要,情感分析和潜在的Dirichlet分配(LDA)。我们的数据集包含47,172条点评的33家位于拉斯维加斯的33家酒店,并配有Yelp。应用基于组分的结构方程建模(部分最小二乘(PLS)),具有双重探索性和预测目的。调查结果以维持真正忠诚的关系,实现竞争成功,酒店经理必须考虑到分配他们的营销努力,以满足满足,信任和承诺的提示。另一方面,PLS预测算法的应用演示了我们模型的预测性能(样本预测),其支持其在添加其他样本时预测各个情况的新的和准确值的能力。原创性/价值LDA和PLS产生了基础的相关信息摘要,并更具体地确认和解决了先前文献的结果。我们的结果更加可靠,准确(在客人的评级中提供的洞察力在宾馆如何改进其服务)而不是基于有限的样本数据和单独的数值满意度评级的统计结果。

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