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Ensemble Learning for Crowd Flows Prediction on Campus

机译:集团学习人群流动在校园预测

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Campus security is an increasing-attention problem in recent years. Crowd flows prediction on campus is helpful for people monitoring and can avoid potential risks. In this paper, based on distributed visiting data collection on campus, we propose a crowd flows prediction method with ensemble learning. For feature selection, we introduce more information than people visiting data, such as vocation and weather, and evaluate the feature importance as well as their combinations. For prediction model, we use stacking method with Random Forest, Gradient Boosting Tree and XGBoost for a better performance of prediction. Experimental results show that our method obtain high accuracy for crowd flows prediction with low extra cost.
机译:校园安全性是近年来的越来越关注的问题。校园里的人群流预测对人们的监测有用,可以避免潜在的风险。本文基于校园的分布式访问数据收集,我们提出了一群流量的学习预测方法。对于特征选择,我们介绍了比访问数据的更多信息,例如职业和天气,以及评估特征重要性以及它们的组合。对于预测模型,我们使用具有随机林,渐变升压树和XGBoost的堆叠方法,以更好地进行预测。实验结果表明,我们的方法为人群流量预测获得了高精度,额外成本低。

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