ML Day 2014 – Learning to Act in Multiagent Sequential Environments
- Michael L. Littman | Brown University
From routing to online auctions, many decision-making tasks for learning agents are carried out in the presence of other decision makers. I will give a brief overview of results developed in the context of adapting reinforcement-learning algorithms to work effectively in multiagent environments. Of particular interest is the idea that even simple scenarios, such as the well-known Prisoner’s dilemma, require agents to work together, bearing some individual risk, to arrive at mutually beneficial outcomes
-
-
Jeff Running
-
-
Watch Next
-
-
Efficient Homomorphic Integer Computer from CKKS
- Jaehyung Kim
-
GeoMind: A Multi-Agent Framework for Geospatial Decision Support
- Muhammad Sohail Danish
-
Fuzzy Extractors are Practical
- Melissa Chase,
- Amey Shukla
-
-
-
-
-
From Microfarms to the Moon: A Teen Innovator’s Journey in Robotics
- Pranav Kumar Redlapalli
-