Eyjólfur Ingi Ásgeirsson

1paper

1 Paper

35.7LGMar 20
Fine-tuning Timeseries Predictors Using Reinforcement Learning

Hugo Cazaux, Ralph Rudd, Hlynur Stefánsson et al.

This chapter presents three major reinforcement learning algorithms used for fine-tuning financial forecasters. We propose a clear implementation plan for backpropagating the loss of a reinforcement learning task to a model trained using supervised learning, and compare the performance before and after the fine-tuning. We find an increase in performance after fine-tuning, and transfer learning properties to the models, indicating the benefits of fine-tuning. We also highlight the tuning process and empirical results for future implementation by practitioners.