基于长短期记忆模型的情感分析在餐饮服务管理中的应用

Y. Heryadi, B. Wijanarko, Dina Fitria Murad, C. Tho, Kiyota Hashimoto
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摘要

总的来说,酒店业被认为是一个主要部门,为包括印度尼西亚在内的许多国家的经济发展做出了很高的贡献。因此,已经实施了许多举措,以帮助包括印度尼西亚在内的许多国家的酒店业从Covid-19大流行的严重影响中复苏。其中一项举措是改善作为酒店业主要部门的餐厅服务。本文提出了情感分析的实证结果,作为评价餐厅服务质量的手段,作为提高服务质量的第一步。特别是,本研究探索了基于方面的情感分析方法,通过了解顾客对餐馆服务的极性,而不必直接与顾客见面,从而识别出餐馆服务中需要改进的方面。采用基于方面的情感分析方法,以顾客的在线评论为输入,分析餐馆服务中的顾客情感,包括意见、情感、评价、态度和情感。主要实验结果表明,长短期记忆模型能较好地预测餐馆服务评价的方面极化。其他研究结果表明,与ReLU、Tanh和ELU激活函数相比,Sigmoid作为激活函数的平均训练精度为0.97,平均测试精度为0.69,具有更好的模型性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aspect-based Sentiment Analysis using Long Short-term Memory Model for Leveraging Restaurant Service Management
In general, the hospitality industry has been acknowledged as a major sector that gives a high contribution to economic development in many countries including Indonesia. For that reason, many initiatives have been implemented to help the growth of the hospitality industry in many countries including Indonesia to rebound from the harsh impact of the Covid-19 Pandemic. One such initiative is improving restaurant services as the main sector of the hospitality industry. This paper presents empirical results of sentiment analysis as a means to assess the quality of restaurant services as the first step to improving service quality. In particular, this study explores the aspect-based sentiment analysis method to identify some aspects of restaurant service which need improvement by learning the polarity of customers toward the restaurant services without having to meet the customers directly. By using the aspect-based sentiment analysis method, the customer sentiments comprising opinions, sentiments, evaluations, attitudes, and emotions from restaurant service can be analyzed using customers’ online reviews as input. The main experiment findings showed that the Long Short-term Memory model can achieve high performance in predicting aspect polarization in restaurant service reviews. Other findings suggest that Sigmoid as an activation function achieved 0.97 average training accuracy and 0.69 average testing accuracy giving a better performance to the model in comparison to ReLU, Tanh, and ELU activation functions.
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