Forecasting of consumer price index using the ensemble learning model with multi-objective evolutionary algorithms: Preliminary results

Dinh Thi Thu Huong, Vũ Văn Trường, Bùi Thu Lâm
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引用次数: 2

Abstract

Time series forecasting is paid a considerable attention of the researchers. At present, in the field of machine learning, there are a lot of studies using an ensemble of artificial neural networks to construct the model for time series forecasting in general, and consumer price index (CPI) forecasting, in particular. However, determining the number of members of an ensemble is still debatable. This paper proposes the way of constructing a model for CPI forecasting and designing a multi-objective evolutionary algorithm in training neural networks ensembles in order to increase the diversity of the population. Two objectives of the training problem include: Mean Sum of Squared Errors and diversity. We experimented the model on three data sets and compared methods. The experimental results showed that the proposed model produced better in investigated cases.
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基于多目标进化算法的集成学习模型的消费者物价指数预测:初步结果
时间序列预测一直是研究人员非常关注的问题。目前,在机器学习领域,有很多研究使用人工神经网络的集合来构建时间序列预测模型,特别是消费者价格指数(CPI)预测。然而,确定一个乐团成员的数量仍然存在争议。本文提出了构建CPI预测模型和设计多目标进化算法训练神经网络集合的方法,以增加种群的多样性。训练问题的两个目标包括:误差平方和和多样性。我们在三个数据集上对模型进行了实验,并比较了各种方法。实验结果表明,所提出的模型在实际应用中具有较好的效果。
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