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#114 - Secrets of Deep Reinforcement Learning (Minqi Jiang)

Machine Learning Street Talk (MLST)

NOTE

Optimizing Decisions Under Uncertainty by Minimizing Maximum Regret (MiniMax)

Minimax regret is a notion of an agent minimizing its worst case regret from decision theory./nMinimax regret is a departure from the typical objective used in reinforcement learning, which is based on expectation maximization./nBuilding a general agent that inhabits the world requires an alternative objective, as the agent is making decisions under uncertainty.

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