Performance of Deep Learning models with transfer learning for multiple-step-ahead forecasts in monthly time series

M. Sol'is, L. Calvo-Valverde
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引用次数: 1

Abstract

Deep Learning and transfer learning models are being used to generate time series forecasts; however, there is scarce evidence about their performance prediction that it is more evident for monthly time series. The purpose of this paper is to compare Deep Learning models with transfer learning and without transfer learning and other traditional methods used for monthly forecasts to answer three questions about the suitability of Deep Learning and Transfer Learning to generate predictions of time series. Time series of M4 and M3 competitions were used for the experiments. The results suggest that deep learning models based on TCN, LSTM, and CNN with transfer learning tend to surpass the performance prediction of other traditional methods. On the other hand, TCN and LSTM, trained directly on the target time series, got similar or better performance than traditional methods for some forecast horizons.
基于迁移学习的深度学习模型在月时间序列中多步预测的性能
深度学习和迁移学习模型被用于生成时间序列预测;然而,很少有证据表明,月度时间序列的业绩预测更为明显。本文的目的是比较使用迁移学习和不使用迁移学习的深度学习模型以及用于月度预测的其他传统方法,以回答关于深度学习和迁移学习是否适合生成时间序列预测的三个问题。采用M4和M3比赛时间序列进行实验。结果表明,基于迁移学习的TCN、LSTM和CNN深度学习模型有超越其他传统方法的性能预测的趋势。另一方面,直接在目标时间序列上训练的TCN和LSTM在某些预测范围内的表现与传统方法相似或更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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