Targeted Data Acquisition for Evolving Negotiation Agents

06/14/2021
by   Minae Kwon, et al.
0

Successful negotiators must learn how to balance optimizing for self-interest and cooperation. Yet current artificial negotiation agents often heavily depend on the quality of the static datasets they were trained on, limiting their capacity to fashion an adaptive response balancing self-interest and cooperation. For this reason, we find that these agents can achieve either high utility or cooperation, but not both. To address this, we introduce a targeted data acquisition framework where we guide the exploration of a reinforcement learning agent using annotations from an expert oracle. The guided exploration incentivizes the learning agent to go beyond its static dataset and develop new negotiation strategies. We show that this enables our agents to obtain higher-reward and more Pareto-optimal solutions when negotiating with both simulated and human partners compared to standard supervised learning and reinforcement learning methods. This trend additionally holds when comparing agents using our targeted data acquisition framework to variants of agents trained with a mix of supervised learning and reinforcement learning, or to agents using tailored reward functions that explicitly optimize for utility and Pareto-optimality.

READ FULL TEXT

page 6

page 13

research
08/05/2022

A Cooperation Graph Approach for Multiagent Sparse Reward Reinforcement Learning

Multiagent reinforcement learning (MARL) can solve complex cooperative t...
research
01/04/2023

Emergent collective intelligence from massive-agent cooperation and competition

Inspired by organisms evolving through cooperation and competition betwe...
research
12/31/2019

Reward-Conditioned Policies

Reinforcement learning offers the promise of automating the acquisition ...
research
07/18/2019

Prioritized Guidance for Efficient Multi-Agent Reinforcement Learning Exploration

Exploration efficiency is a challenging problem in multi-agent reinforce...
research
02/28/2021

Exploration and Incentives in Reinforcement Learning

How do you incentivize self-interested agents to explore when they prefe...
research
07/04/2017

Maintaining cooperation in complex social dilemmas using deep reinforcement learning

Social dilemmas are situations where individuals face a temptation to in...
research
12/29/2019

Loss aversion fosters coordination among independent reinforcement learners

We study what are the factors that can accelerate the emergence of colla...

Please sign up or login with your details

Forgot password? Click here to reset