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Generalized Exponentiated Gradient Algorithms and Their Application to On-Line Portfolio Selection

Generalized Exponentiated Gradient Algorithms and Their Application to On-Line Portfolio Selection ArXiv ID: 2406.00655 “View on arXiv” Authors: Unknown Abstract This paper introduces a novel family of generalized exponentiated gradient (EG) updates derived from an Alpha-Beta divergence regularization function. Collectively referred to as EGAB, the proposed updates belong to the category of multiplicative gradient algorithms for positive data and demonstrate considerable flexibility by controlling iteration behavior and performance through three hyperparameters: $α$, $β$, and the learning rate $η$. To enforce a unit $l_1$ norm constraint for nonnegative weight vectors within generalized EGAB algorithms, we develop two slightly distinct approaches. One method exploits scale-invariant loss functions, while the other relies on gradient projections onto the feasible domain. As an illustration of their applicability, we evaluate the proposed updates in addressing the online portfolio selection problem (OLPS) using gradient-based methods. Here, they not only offer a unified perspective on the search directions of various OLPS algorithms (including the standard exponentiated gradient and diverse mean-reversion strategies), but also facilitate smooth interpolation and extension of these updates due to the flexibility in hyperparameter selection. Simulation results confirm that the adaptability of these generalized gradient updates can effectively enhance the performance for some portfolios, particularly in scenarios involving transaction costs. ...

June 2, 2024 · 2 min · Research Team

Benchmarking Robustness of Deep Reinforcement Learning approaches to Online Portfolio Management

Benchmarking Robustness of Deep Reinforcement Learning approaches to Online Portfolio Management ArXiv ID: 2306.10950 “View on arXiv” Authors: Unknown Abstract Deep Reinforcement Learning approaches to Online Portfolio Selection have grown in popularity in recent years. The sensitive nature of training Reinforcement Learning agents implies a need for extensive efforts in market representation, behavior objectives, and training processes, which have often been lacking in previous works. We propose a training and evaluation process to assess the performance of classical DRL algorithms for portfolio management. We found that most Deep Reinforcement Learning algorithms were not robust, with strategies generalizing poorly and degrading quickly during backtesting. ...

June 19, 2023 · 2 min · Research Team