SOTAVerified

Shaped Policy Search for Evolutionary Strategies using Waypoints

2021-05-30Unverified0· sign in to hype

Kiran Lekkala, Laurent Itti

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

In this paper, we try to improve exploration in Blackbox methods, particularly Evolution strategies (ES), when applied to Reinforcement Learning (RL) problems where intermediate waypoints/subgoals are available. Since Evolutionary strategies are highly parallelizable, instead of extracting just a scalar cumulative reward, we use the state-action pairs from the trajectories obtained during rollouts/evaluations, to learn the dynamics of the agent. The learnt dynamics are then used in the optimization procedure to speed-up training. Lastly, we show how our proposed approach is universally applicable by presenting results from experiments conducted on Carla driving and UR5 robotic arm simulators.

Tasks

Reproductions