Style Miner: Find Significant and Stable Explanatory Factors in Time Series with Constrained Reinforcement Learning

03/21/2023
by   Dapeng Li, et al.
0

In high-dimensional time-series analysis, it is essential to have a set of key factors (namely, the style factors) that explain the change of the observed variable. For example, volatility modeling in finance relies on a set of risk factors, and climate change studies in climatology rely on a set of causal factors. The ideal low-dimensional style factors should balance significance (with high explanatory power) and stability (consistent, no significant fluctuations). However, previous supervised and unsupervised feature extraction methods can hardly address the tradeoff. In this paper, we propose Style Miner, a reinforcement learning method to generate style factors. We first formulate the problem as a Constrained Markov Decision Process with explanatory power as the return and stability as the constraint. Then, we design fine-grained immediate rewards and costs and use a Lagrangian heuristic to balance them adaptively. Experiments on real-world financial data sets show that Style Miner outperforms existing learning-based methods by a large margin and achieves a relatively 10 industry-renowned factors proposed by human experts.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/29/2017

Inverse Risk-Sensitive Reinforcement Learning

We address the problem of inverse reinforcement learning in Markov decis...
research
01/06/2021

Factor Modelling for Clustering High-dimensional Time Series

We propose a new unsupervised learning method for clustering a large num...
research
02/25/2023

On Bellman's principle of optimality and Reinforcement learning for safety-constrained Markov decision process

We study optimality for the safety-constrained Markov decision process w...
research
09/22/2022

StyleTime: Style Transfer for Synthetic Time Series Generation

Neural style transfer is a powerful computer vision technique that can i...
research
07/20/2022

Learning to Solve Soft-Constrained Vehicle Routing Problems with Lagrangian Relaxation

Vehicle Routing Problems (VRPs) in real-world applications often come wi...
research
05/09/2021

Reinforcement Learning with Expert Trajectory For Quantitative Trading

In recent years, quantitative investment methods combined with artificia...
research
03/02/2018

Accelerating E-Commerce Search Engine Ranking by Contextual Factor Selection

In industrial large-scale search systems, such as Taobao.com search for ...

Please sign up or login with your details

Forgot password? Click here to reset