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A Generic Preprocessing Optimization Methodology when Predicting Time-Series Data

机译:预测时序数据时的通用预处理优化方法

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摘要

A general Methodology referred to as Daphne is introduced which is used to find optimum combinations of methods to preprocess and forecast for time-series datasets. The Daphne Optimization Methodology (DOM) is based on the idea of quantifying the effect of each method on the forecasting performance, and using this information as a distance in a directed graph. Two optimization algorithms, Genetic Algorithms and Ant Colony Optimization, were used for the materialization of the DOM. Results show that the DOM finds a near optimal solution in relatively less time than using the traditional optimization algorithms.
机译:介绍了一种称为“达芙妮”的通用方法论,该方法论用于找到对时间序列数据集进行预处理和预测的方法的最佳组合。达芙妮优化方法(DOM)的思想是量化每种方法对预测性能的影响,并将此信息用作有向图中的距离。 DOM的实现使用了两种优化算法,即遗传算法和蚁群优化。结果表明,与使用传统优化算法相比,DOM在相对较短的时间内即可找到最佳解决方案。

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