Exploring Equity of Climate Policies using Multi-Agent Multi-Objective Reinforcement Learning
By: Palok Biswas , Zuzanna Osika , Isidoro Tamassia and more
Potential Business Impact:
Helps countries make fair climate plans together.
Addressing climate change requires coordinated policy efforts of nations worldwide. These efforts are informed by scientific reports, which rely in part on Integrated Assessment Models (IAMs), prominent tools used to assess the economic impacts of climate policies. However, traditional IAMs optimize policies based on a single objective, limiting their ability to capture the trade-offs among economic growth, temperature goals, and climate justice. As a result, policy recommendations have been criticized for perpetuating inequalities, fueling disagreements during policy negotiations. We introduce Justice, the first framework integrating IAM with Multi-Objective Multi-Agent Reinforcement Learning (MOMARL). By incorporating multiple objectives, Justice generates policy recommendations that shed light on equity while balancing climate and economic goals. Further, using multiple agents can provide a realistic representation of the interactions among the diverse policy actors. We identify equitable Pareto-optimal policies using our framework, which facilitates deliberative decision-making by presenting policymakers with the inherent trade-offs in climate and economic policy.
Similar Papers
Multi-Agent Reinforcement Learning Simulation for Environmental Policy Synthesis
Multiagent Systems
Helps create better climate plans using smart computer learning.
Climate Surrogates for Scalable Multi-Agent Reinforcement Learning: A Case Study with CICERO-SCM
Machine Learning (CS)
Teaches computers to make better climate plans faster.
Climate Adaptation with Reinforcement Learning: Economic vs. Quality of Life Adaptation Pathways
Machine Learning (CS)
Helps plan for floods by choosing what matters most.