Optimizing Sharpe Ratio: Risk-Adjusted Decision-Making in Multi-Armed Bandits
- URL: http://arxiv.org/abs/2406.06552v1
- Date: Tue, 28 May 2024 14:24:36 GMT
- Title: Optimizing Sharpe Ratio: Risk-Adjusted Decision-Making in Multi-Armed Bandits
- Authors: Sabrina Khurshid, Mohammed Shahid Abdulla, Gourab Ghatak,
- Abstract summary: We consider the Sharpe Ratio (SR) as a critical parameter in characterizing financial time series.
We propose a novel algorithm for optimizing the SR called UCB- RSSR for Regret Minimization (RM) and Best Arm Identification (BAI)
We demonstrate that UCB- RSSR outperforms the only other known SR optimizing bandit algorithm, U-UCB Cassel et al (2023)
- Score: 3.5502600490147196
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Sharpe Ratio (SR) is a critical parameter in characterizing financial time series as it jointly considers the reward and the volatility of any stock/portfolio through its variance. Deriving online algorithms for optimizing the SR is particularly challenging since even offline policies experience constant regret with respect to the best expert Even-Dar et al (2006). Thus, instead of optimizing the usual definition of SR, we optimize regularized square SR (RSSR). We consider two settings for the RSSR, Regret Minimization (RM) and Best Arm Identification (BAI). In this regard, we propose a novel multi-armed bandit (MAB) algorithm for RM called UCB-RSSR for RSSR maximization. We derive a path-dependent concentration bound for the estimate of the RSSR. Based on that, we derive the regret guarantees of UCB-RSSR and show that it evolves as O(log n) for the two-armed bandit case played for a horizon n. We also consider a fixed budget setting for well-known BAI algorithms, i.e., sequential halving and successive rejects, and propose SHVV, SHSR, and SuRSR algorithms. We derive the upper bound for the error probability of all proposed BAI algorithms. We demonstrate that UCB-RSSR outperforms the only other known SR optimizing bandit algorithm, U-UCB Cassel et al (2023). We also establish its efficacy with respect to other benchmarks derived from the GRA-UCB and MVTS algorithms. We further demonstrate the performance of proposed BAI algorithms for multiple different setups. Our research highlights that our proposed algorithms will find extensive applications in risk-aware portfolio management problems. Consequently, our research highlights that our proposed algorithms will find extensive applications in risk-aware portfolio management problems.
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