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
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Jeff Running
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다음 볼만한 동영상
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Multimodal & Embodied Intelligence (Pt 1), Panel on Multimodal AI: Progress, Pitfalls, Possibilities
- Madhava Krishna,
- Sriram Ganapathy,
- Somak Aditya
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Session on Compute & Trust (Security)
- Krishna Pillutla,
- Danish Pruthi
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Session on Reasoning
- Hongxiang Fan,
- Nagarajan Natarajan
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Session on Retrieval
- Lokesh Nagalapatti,
- Soumen Chakrabarti
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