基于遗传算法的霍尔特温特斯方法的最优短期预测

M. M. Navarro, B. B. Navarro
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引用次数: 10

摘要

目前应用霍尔特-温特斯法进行预测的关键问题之一是平滑系数的合理选择。为了确定平滑系数的值,探索了一种最小化均方误差(MSE)或平均绝对偏差(MAD)等预测误差的优化方法。本文提出了一种利用遗传算法确定霍尔特-温特斯法的最优平滑系数以优化预测误差的方法。本文重点研究了均方误差(MSE)作为优化问题的客观值。以菲律宾大米库存商品为例,验证了该方法的有效性。对不同的霍尔特温特斯法进行了检验,结果表明季节加性效应更适用于水稻存量数据。将该方法与其他模型进行了比较,结果令人满意。
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Optimal Short-Term Forecasting Using GA-Based Holt-Winters Method
One of the key issues nowadays in using Holt-Winters Method of forecasting is the appropriate selection of smoothing coefficients. To identify values of smoothing coefficients, an optimization approach is explored that minimizes a forecasting error like Mean Squared Errors (MSE) or Mean Absolute Deviation (MAD). This paper develops a methodology that optimizes forecasting error by determining the optimal smoothing coefficients of the Holt-Winters Method using Genetic Algorithm (GA). This paper focuses on the Mean Square Error (MSE) as an objective value of the optimization problem. The efficiency of the proposed approach was verified using actual test cases based on rice stock commodity in the Philippines. Different variants of the Holt-Winters Method were examined and the result shows that additive seasonal effect was more appropriate for the rice stock data. The proposed approach was compared to other models and the results are promising.
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