Analysis of Emotional Tendency Based on Chinese Sugar-water Shop Evaluation Text

Xueqi Feng
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Abstract

The catering market has developed rapidly, and under the influence of the Internet and the epidemic, online consumption has become increasingly strong. Food is the life of the people, and sweets are an important factor in improving happiness in life. For the sugar water store, combined with online and offline fine operation, grasp the user evaluation, in order to stand out in the competition. This research uses the evaluation data of the eight sugar water shops in Guangzhou to extract keywords using TextRank for the texts with long evaluation data, so that the evaluation texts are controlled within 200 words, and then machine learning algorithms are used to analyze, mine and classify them. The experimental results show that this method can solve the binary classification problem of positive emotion and negative emotion in short time.
基于中文糖水店评价文本的情感倾向分析
餐饮市场发展迅速,在互联网和流行病的影响下,网络消费日益旺盛。民以食为天,甜食是提高生活幸福感的重要因素。对于糖水店来说,结合线上线下精细化运营,把握好用户评价,才能在竞争中脱颖而出。本研究利用广州八家糖水店的评价数据,针对评价数据较长的文本,利用TextRank提取关键词,使评价文本控制在200字以内,然后利用机器学习算法对其进行分析、挖掘和分类。实验结果表明,该方法可以在短时间内解决正面情绪和负面情绪的二元分类问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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