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Analysis of Tourist Flow Forecasting Model Based on Multiple Additive Regression Tree

机译:基于多元添加回归树的旅游流量预测模型分析

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Accurate prediction of tourist flow is a key issue in tourism economic analysis and development planning. This paper proposes a tourist flow prediction model based on Multiple Additive Regression Tree (MART) by using machine learning ideas. The model uses factors such as temperature, sunshine duration, air quality and so on to construct eigenvector, and constructing multiple base learners through the boosting framework to predict tourist flow accurately. Take Guilin city from 2015 to 2018 Tourist as an example for analysis, the prediction accuracy of the model is evaluated by means of the average error, square equalization error and other indicators. The experimental results show that the proposed method has high accuracy in the prediction of tourist flow.
机译:对旅游流动的准确预测是旅游经济分析和发展规划的关键问题。本文通过使用机器学习思路提出了一种基于多添加性回归树(MART)的旅游流动预测模型。该模型使用温度,阳光持续时间,空气质量等因素来构建特征向量,并通过升压框架构建多个基础学习者,以准确地预测旅游流程。从2015年到2018年桂林市作为分析示例,通过平均误差,方形均衡误差和其他指标来评估模型的预测精度。实验结果表明,该方法在预测旅游流动方面具有高精度。

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