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Mathematics / Game theory / Cognitive science / Epistemology / Belief / Truth / Bayesian probability / Agree to disagree / Artificial intelligence / Common knowledge / Aumann's agreement theorem
Date: 2014-01-16 15:23:02
Mathematics
Game theory
Cognitive science
Epistemology
Belief
Truth
Bayesian probability
Agree to disagree
Artificial intelligence
Common knowledge
Aumann's agreement theorem

The hypothesis suggests that remaining disagreements should be expected ones

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Source URL: mason.gmu.edu

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