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Univariate Time Series Forecasting of Temperature and Precipitation with a Focus on Machine Learning Algorithms: a Multiple-Case Study from Greece

机译:以机器学习算法为重点的温度和降水的单变量时间序列预测:来自希腊的多案例研究

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摘要

We provide contingent empirical evidence on the solutions to three problems associated with univariate time series forecasting using machine learning (ML) algorithms by conducting an extensive multiple-case study. These problems are: (a) lagged variable selection, (b) hyperparameter handling, and (c) comparison between ML and classical algorithms. The multiple-case study is composed by 50 single-case studies, which use time series of mean monthly temperature and total monthly precipitation observed in Greece. We focus on two ML algorithms, i.e. neural networks and support vector machines, while we also include four classical algorithms and a naive benchmark in the comparisons. We apply a fixed methodology to each individual case and, subsequently, we perform a cross-case synthesis to facilitate the detection of systematic patterns. We fit the models to the deseasonalized time series. We compare the one- and multi-step ahead forecasting performance of the algorithms. Regarding the one-step ahead forecasting performance, the assessment is based on the absolute error of the forecast of the last monthly observation. For the quantification of the multi-step ahead forecasting performance we compute five metrics on the test set (last year's monthly observations), i.e. the root mean square error, the Nash-Sutcliffe efficiency, the ratio of standard deviations, the coefficient of correlation and the index of agreement. The evidence derived by the experiments can be summarized as follows: (a) the results mostly favour using less recent lagged variables, (b) hyperparameter optimization does not necessarily lead to better forecasts, (c) the ML and classical algorithms seem to be equally competitive.
机译:通过进行广泛的多案例研究,我们提供了使用机器学习(ML)算法解决与单变量时间序列预测相关的三个问题的解决方案的经验证据。这些问题是:(a)滞后变量选择;(b)超参数处理;(c)ML与经典算法之间的比较。多案例研究由50个单案例研究组成,这些研究使用了在希腊观察到的平均月温度和总月降水量的时间序列。我们专注于两种机器学习算法,即神经网络和支持向量机,同时在比较中还包括四种经典算法和一个朴素的基准测试。我们将固定方法应用于每个个案,然后执行跨个案综合以促进系统模式的检测。我们将模型拟合到反季节的时间序列。我们比较了算法的一步和一步预测性能。关于一步一步的预测性能,评估是基于最近一次月度观测的预测绝对误差。为了量化多步超前预测性能,我们在测试集(去年的每月观测值)上计算了五个指标,即均方根误差,纳什-苏克利夫效率,标准差比,相关系数和协议索引。通过实验得出的证据可以概括如下:(a)结果大多倾向于使用更新的滞后变量,(b)超参数优化不一定会导致更好的预测,(c)ML和经典算法似乎是平等的竞争的。

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