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Efficient Exploration

Efficient Exploration is one of the main obstacles in scaling up modern deep reinforcement learning algorithms. The main challenge in Efficient Exploration is the balance between exploiting current estimates, and gaining information about poorly understood states and actions.

Source: Randomized Value Functions via Multiplicative Normalizing Flows

Papers

Showing 171180 of 514 papers

TitleStatusHype
Opinion-Guided Reinforcement Learning0
GLaD: Synergizing Molecular Graphs and Language Descriptors for Enhanced Power Conversion Efficiency Prediction in Organic Photovoltaic Devices0
Intrinsic Rewards for Exploration without Harm from Observational Noise: A Simulation Study Based on the Free Energy Principle0
MESA: Cooperative Meta-Exploration in Multi-Agent Learning through Exploiting State-Action Space Structure0
Efficient Exploration of Image Classifier Failures with Bayesian Optimization and Text-to-Image Models0
Evolutionary Reinforcement Learning via Cooperative Coevolution0
An Offline Reinforcement Learning Algorithm Customized for Multi-Task Fusion in Large-Scale Recommender Systems0
Sampling for Model Predictive Trajectory Planning in Autonomous Driving using Normalizing Flows0
Learning Off-policy with Model-based Intrinsic Motivation For Active Online Exploration0
Cognitive Planning for Object Goal Navigation using Generative AI Models0
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