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Methods of Integration of Ensemble of Neural Predictors of Time Series - Comparative Analysis

机译:时间序列的神经预测因子集合的集成方法-比较分析

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It is well known fact that organizing different predictors in an ensemble increases the accuracy of prediction of the time series. This paper discusses different methods of integration of predictors cooperating in an ensemble. The considered methods include the ordinary averaging, weighted averaging, application of principal component analysis to the data, blind source separation as well as application of additional neural predictor as an integrator. The proposed methods will be verified on the example of prediction of 24-hour ahead load pattern in the power system, as well as prediction of the environmental pollution for the next day.
机译:众所周知的事实是,在集合中组织不同的预测变量会提高时间序列预测的准确性。本文讨论了集成在一起的预测变量集成的不同方法。考虑的方法包括普通平均,加权平均,对数据应用主成分分析,盲源分离以及将其他神经预测器用作积分器。将以电力系统中24小时提前负荷模式的预测示例以及第二天对环境污染的预测示例为例,对所提出的方法进行验证。

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