Deep Reinforcement Learning for Asset Allocation in US Equities
Miquel Noguer i Alonso, Sonam Srivastava

TL;DR
This paper applies deep reinforcement learning with various neural network architectures to US stock asset allocation, demonstrating improved performance over traditional methods in a model-free, data-driven approach.
Contribution
It introduces a deep reinforcement learning framework for asset allocation using time series data and compares different neural network architectures, showing superior results over traditional methods.
Findings
Deep RL outperforms traditional portfolio management approaches.
LSTM, CNN, and RNN architectures are effective for stock prediction and allocation.
The model handles transaction costs and time series prediction in finance.
Abstract
Reinforcement learning is a machine learning approach concerned with solving dynamic optimization problems in an almost model-free way by maximizing a reward function in state and action spaces. This property makes it an exciting area of research for financial problems. Asset allocation, where the goal is to obtain the weights of the assets that maximize the rewards in a given state of the market considering risk and transaction costs, is a problem easily framed using a reinforcement learning framework. It is first a prediction problem for expected returns and covariance matrix and then an optimization problem for returns, risk, and market impact. Investors and financial researchers have been working with approaches like mean-variance optimization, minimum variance, risk parity, and equally weighted and several methods to make expected returns and covariance matrices' predictions more…
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