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A New Combining Prediction Method of visitor numbers at Shanghai Expo

机译:上海世博会游客人数组合预测的新方法

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Forecast of visitor numbers to the large-scale activities is the key issue of collective behaviors analysis and control. At present,forecasting visitor numbers is mainly based on traditional research approach or sole artificial neural network technology. Recent study results show that combining forecast model approach enjoys more precise forecast than monomial forecast approach. In this paper,a new forecast approach based on inflexion point was proposed. Then,we combined BP neural network and the inflexion approach to make comprehensive analysis and to predict visitor numbers to Shanghai Expo per day. Experimental results indicate that the proposed combining approach is feasible and effective in forecast of the visitor numbers,and is more precise in terms of monomial forecast method. Respectively, the average relative error of combining model is 0.1085. 0.1177,0.1875 less than that of "inflexion" model. BP model and ARIMA model.
机译:预测大型活动的访客人数是集体行为分析和控制的关键问题。目前,预测访客人数主要是基于传统的研究方法或唯一的人工神经网络技术。最近的研究结果表明,结合预测模型方法比单项预测方法具有更精确的预测。本文提出了一种基于拐点的新预测方法。然后,结合BP神经网络和拐点方法进行综合分析,并预测每天上海世博会的游客人数。实验结果表明,所提出的组合方法在游客人数预测中是可行和有效的,而在单项预测方法方面则更为精确。组合模型的平均相对误差分别为0.1085。比“变形”模型小0.1177,0.1875。 BP模型和ARIMA模型。

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