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Addressing Market Regime Changes and Heavy-Tailed Returns in Portfolio Optimization via Bayesian VAR and Elliptical Black-Litterman

Announce Type: new Abstract: Deep reinforcement learning (DRL) frameworks for portfolio optimization have shown promise for their ability to learn allocation rules dynamically from market data. However, these models fail to account for fat-tailed returns, which characterize actual market behavior with more frequent extreme events.

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Benchmarking Quantum Algorithmic Resilience for CVaR Portfolio Optimization: The Expressibility-Coherence Trade-off

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From Validator Selection to Portfolio Collection Optimization in Proof-of-Stake Blockchains

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Quantitative Performance Analysis of Stopping Criteria for CMA-ES

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A Game-Theoretic Decision Framework for Optimal Selection of Coordination Detection Methods in Multi-UAV Fleet Operations

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A Game-Theoretic Decision Framework for Optimal Selection of Coordination Detection Methods in Multi-UAV Fleet Operations

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Retriever Portfolios: A Principled Approach to Adaptive RAG

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Scaling Decision-Focused Learning to Large Problems with Lagrangian Decomposition

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Diffusion Models for Adaptive Sequential Data Generation

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