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Forecasting Customers Visiting Using Machine Learning and Characteristics Analysis with Low Forecasting Accuracy Days

机译:预测使用机器学习和特性分析访问客户,低预测准确度

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In this paper, the number of customers visiting restaurants is forecasted using machine learning and statistical analysis. There are some researches on forecasting the number of customers visiting restaurants using past data on the number of visitors. In this research, in addition to the above data, external data such as weather data and events existing in ubiquitous was used for forecasting. Bayesian Linear Regression, Boosted Decision Tree Regression, Decision Forest Regression and Random Forest Regression are used for machine learning, Stepwise is used for statistical analysis. Among above five methods, the forecasting accuracy using Bayesian Linear Regression was the highest. The forecasting accuracy did not tend to improve even if the training data period was extended. Based on these forecasting results, the characteristics of days with low forecasting accuracy are analyzed. It was found that the human psychology around the payday and the reservation customers affected the number of visitors. On the other hand, the weather data such as temperature, precipitation and wind speed did not affect the accuracy.
机译:在本文中,使用机器学习和统计分析预测了拜访餐厅的客户数量。有一些关于使用过去数据访问游客的客户的客户数量的研究。在本研究中,除了上述数​​据外,外部数据还用于预测普遍存在的天气数据和事件等。贝叶斯线性回归,提升决策树回归,决策森林回归和随机森林回归用于机器学习,逐步用于统计分析。在上述五种方法中,使用贝叶斯线性回归的预测精度最高。即使延长培训数据期限,预测准确性也没有提高。基于这些预测结果,分析了预测精度低的天数。有人发现,发薪日和预订客户周围的人类心理影响了访客人数。另一方面,温度,降水量和风速等天气数据不影响精度。

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