pith. sign in

Variance Reduction for Reinforcement Learning in Input-Driven Environments

1 Pith paper cite this work. Polarity classification is still indexing.

1 Pith paper citing it
abstract

We consider reinforcement learning in input-driven environments, where an exogenous, stochastic input process affects the dynamics of the system. Input processes arise in many applications, including queuing systems, robotics control with disturbances, and object tracking. Since the state dynamics and rewards depend on the input process, the state alone provides limited information for the expected future returns. Therefore, policy gradient methods with standard state-dependent baselines suffer high variance during training. We derive a bias-free, input-dependent baseline to reduce this variance, and analytically show its benefits over state-dependent baselines. We then propose a meta-learning approach to overcome the complexity of learning a baseline that depends on a long sequence of inputs. Our experimental results show that across environments from queuing systems, computer networks, and MuJoCo robotic locomotion, input-dependent baselines consistently improve training stability and result in better eventual policies.

fields

cs.LG 1

years

2024 1

verdicts

UNVERDICTED 1

representative citing papers

TRAM: Test-Time Risk Adaptation with Mixture of Agents

cs.LG · 2024-08-16 · unverdicted · novelty 7.0

TRAM is a test-time mixture method that scores and composes risk-neutral source policies using reward and occupancy-based risk to achieve new reward-risk tradeoffs without parameter updates.

citing papers explorer

Showing 1 of 1 citing paper.

  • TRAM: Test-Time Risk Adaptation with Mixture of Agents cs.LG · 2024-08-16 · unverdicted · none · ref 25 · internal anchor

    TRAM is a test-time mixture method that scores and composes risk-neutral source policies using reward and occupancy-based risk to achieve new reward-risk tradeoffs without parameter updates.