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#continuous-control

Delta-JEPA: Learning Action-Sensitive World Models via Latent Difference Decoding

arXiv cs.AI · 5d ago Cached

Delta-JEPA introduces a reconstruction-free world model that augments latent forward prediction with a Latent Difference Action Decoder to prevent collapse and improve action-sensitivity, achieving better planning performance on visual continuous-control tasks.

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#continuous-control

Safe Online Learning via Smooth Safety-Structured Policy Composition

arXiv cs.LG · 5d ago Cached

This paper proposes AutoSafe, a safety-aware policy architecture for safe online reinforcement learning that integrates structured safety monitoring and intervention directly into action generation, enabling smooth, risk-dependent transitions between performance and safety behaviors, demonstrated on benchmarks and a physical cart-pole system.

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#continuous-control

Low-power analogue neural networks with trainable nonlinear connections for continuous control

arXiv cs.LG · 2026-06-24 Cached

This paper presents low-power analogue neural networks that place trainable nonlinear functions on connections, inspired by Kolmogorov-Arnold networks, enabling efficient continuous control tasks with far fewer nodes and connections than multilayer perceptrons, demonstrated on hardware with projected microWatt power.

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Test-Time Gradient Guidance of Flow Policies in Reinforcement Learning

Hugging Face Daily Papers · 2026-06-09 Cached

QGF is an RL algorithm that improves policies at test time by using a value gradient to guide a pre-trained flow policy, avoiding training-time instability while maintaining competitive performance.

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GenPO++: Generative Policy Optimization with Jacobian-free Likelihood Ratios

arXiv cs.LG · 2026-06-08 Cached

GenPO++ proposes a reversible generative policy optimization framework that uses history states as auxiliary memory in a high-order reversible ODE solver, enabling exact inversion and Jacobian-free likelihood-ratio computation for flow-based policies in reinforcement learning. It achieves competitive performance on large-scale control, fine-tuning, and real-world robotic tasks while improving stability and efficiency.

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Representation Learning Enables Scalable Multitask Deep Reinforcement Learning

arXiv cs.LG · 2026-06-05 Cached

This paper argues that representation learning, not model-based planning, is the key to scalable multitask deep reinforcement learning. It introduces MR.Q, a simple model-free algorithm with auxiliary predictive objectives that outperforms prior world-model-based methods across diverse continuous control tasks.

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NOML-NOML: hierarchical TD3 + anchor policy for flight control [P]

Reddit r/MachineLearning · 2026-05-20

Introduced NOML, a custom reinforcement learning algorithm for continuous flight control that uses a hierarchical actor, anchor policy, and mirror learning to prevent oscillation and improve stability. The code is open-sourced on GitHub.

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#continuous-control

QuantFPFlow: Quantum Amplitude Estimation for Fokker--Planck Policy Optimisation in Continuous Reinforcement Learning

arXiv cs.LG · 2026-05-19 Cached

Introduces QuantFPFlow, a reinforcement learning framework that uses quantum amplitude estimation to achieve a quadratic speedup in estimating the Fokker-Planck partition function for continuous control, improving exploration and avoiding local optima.

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R2R2: Robust Representation for Intensive Experience Reuse via Redundancy Reduction in Self-Predictive Learning

arXiv cs.LG · 2026-05-15 Cached

Proposes R2R2, a regularization method for self-predictive learning in reinforcement learning to mitigate overfitting under high update-to-data ratios, achieving significant improvements on continuous control tasks.

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Multi-Goal Reinforcement Learning: Challenging robotics environments and request for research

OpenAI Blog · 2018-02-26 Cached

OpenAI introduces a suite of challenging multi-goal reinforcement learning tasks for robotics using Fetch and Shadow Dexterous Hand hardware, integrated with OpenAI Gym, along with research directions for improving RL algorithms.

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