宏观经济预测的迁移学习

Hien T. Nguyen, D. Nguyen
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引用次数: 1

摘要

在本文中,我们提出了一种基于迁移学习的宏观经济预测的新方法,该方法使用基于lstm的编码器-解码器作为构建块的归一化流。该方法包括两个步骤:(1)预训练和(2)微调。在预训练步骤中,我们基于许多不同国家的宏观经济数据训练了一个模型。得到的预训练模型可以捕捉宏观经济指标时间变化中的隐藏模式。然后根据目标国家的宏观经济数据对预先训练的模型进行微调。在该方法中,基于lstm的编码器-解码器旨在学习输入数据的向量表示。然后使用条件规范化流转换获得的表示,以便将表示中编码的数据的分布转换为更复杂的分布。我们在公共数据集的17个宏观经济变量上评估了所提出的方法。实验结果表明,以基于lstm的编码器-解码器为条件的归一化流作为构建块的迁移学习显著提高了提前一步预测的宏观经济预测性能。据我们所知,这是第一次神经迁移学习被成功地应用于同时预测许多宏观经济变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning for Macroeconomic Forecasting
In this paper we present a novel approach to macroeconomic forecasting based on transfer learning using normalizing flows conditioned on LSTM-based encoder-decoder as building blocks. The approach consists of two steps: (1) pretraining and (2) fine-tuning. At the pre-training step, we train a model based on macroeconomic data of many different countries. The obtained pre-trained model can capture hidden patterns in temporal changes of macroeconomic indicators. The pre-trained model is then fine-tuned on macroeconomic data of the target country. In the approach, LSTM-based encoder-decoder aims at learning vector representations of the input data. The obtained representations are then transformed by using conditional normalizing flows so that the distribution of the data encoded in the representations is transformed into a more complex distribution. We evaluate the proposed approach on seventeen macroeconomic variables of a public dataset. The experimental results show that transfer learning using normalizing flows conditioned on LSTM-based encoder-decoder as building blocks significantly improves the performance of macroeconomic forecasting with one-step ahead forecasts. To the best of our knowledge, this is the first time neural transfer learning has been successfully applied to forecast many macroeconomic variables simultaneously.
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