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Lecture notes detail uncertainty quantification for optimal AI decision-making

This lecture note, titled "Decision Making Needs Uncertainty Quantification," explores how agents can make optimal decisions when faced with uncertainty about their environment. It establishes a link between an agent's objective, its knowledge, and the appropriate representation of uncertainty. The note differentiates between risk-neutral agents, who require posterior distributions, and risk-averse agents, who can use prediction sets and worst-case decision rules. For unknown environments, it proposes three methods: calibration of fixed predictors, credal sets with robust optimization, and Bayesian inference over model parameters, emphasizing that reliable decisions necessitate an uncertainty representation aligned with the agent's objective and knowledge. AI

IMPACT Provides a theoretical framework for agents to make more reliable and trustworthy decisions in uncertain environments.

RANK_REASON The item is a lecture note published on arXiv, detailing theoretical research in AI decision-making. [lever_c_demoted from research: ic=1 ai=1.0]

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Lecture notes detail uncertainty quantification for optimal AI decision-making

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  1. arXiv cs.AI TIER_1 English(EN) · Osvaldo Simeone ·

    Decision Making Needs Uncertainty Quantification [Lecture Notes]

    arXiv:2607.14407v1 Announce Type: cross Abstract: Many signal processing systems ultimately exist to {act}. Whenever the state variable that determines the action to be taken by a decision maker, or agent, is uncertain, the way that uncertainty is represented decides how well the…