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Adaptive entropy-based learning with dynamic artificial neural network

机译:基于自适应熵的动态人工神经网络学习

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Entropy models the added information associated to data uncertainty, proving that stochasticity is not purely random. This paper explores the potential improvement of machine learning methodologies through the incorporation of entropy analysis in the learning process. A multi-layer perceptron is applied to identify patterns in previous forecasting errors achieved by a machine learning methodology. The proposed learning approach is adaptive to the training data through a re-training process that includes only the most recent and relevant data, thus excluding misleading information from the training process. The learnt error patterns are then combined with the original forecasting results in order to improve forecasting accuracy, using the Renyi entropy to determine the amount in which the original forecasted value should be adapted considering the learnt error patterns. The proposed approach is combined with eleven different machine learning methodologies, and applied to the forecasting of electricity market prices using real data from the Iberian electricity market operator - OMIE. Results show that through the identification of patterns in the forecasting error, the proposed methodology is able to improve the learning algorithms' forecasting accuracy and reduce the variability of their forecasting errors. (C) 2019 Elsevier B.V. All rights reserved.
机译:熵模拟与数据不确定性相关的附加信息,证明了随机性并不纯粹是随机的。本文通过在学习过程中纳入熵分析,探讨了机器学习方法的潜在改进。应用多层的Perceptron以识别通过机器学习方法实现的先前预测误差中的模式。所提出的学习方法通​​过重新培训过程自适应,该过程仅包括最新和相关数据,从而排除训练过程中的误导信息。然后,使用瑞尼熵来改善预测精度的原始预测结果,以提高预测精度来确定所学习错误模式应调整原始预测值的金额,以便提高预测误差模式。该方法与11种不同的机器学习方法相结合,并应用于利用Iberian电力市场运营商的真实数据的电力市场价格预测。结果表明,通过识别预测误差中的模式,所提出的方法能够提高学习算法的预测精度,并降低预测误差的可变性。 (c)2019 Elsevier B.v.保留所有权利。

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