From Statistical Knowledge Bases to Degrees of Belief
Fahiem Bacchus, Adam Grove, Joseph Y. Halpern, and Daphne Koller

TL;DR
This paper introduces the random-worlds method, a probabilistic reasoning approach that derives degrees of belief from rich knowledge bases, integrating default and statistical reasoning for intelligent agents.
Contribution
It presents a novel framework that combines qualitative default reasoning with quantitative probabilistic reasoning using the principle of indifference.
Findings
Captures default reasoning patterns like specificity and inheritance
Integrates statistical and default reasoning in a unified language
Handles complex reasoning tasks beyond traditional systems
Abstract
An intelligent agent will often be uncertain about various properties of its environment, and when acting in that environment it will frequently need to quantify its uncertainty. For example, if the agent wishes to employ the expected-utility paradigm of decision theory to guide its actions, it will need to assign degrees of belief (subjective probabilities) to various assertions. Of course, these degrees of belief should not be arbitrary, but rather should be based on the information available to the agent. This paper describes one approach for inducing degrees of belief from very rich knowledge bases, that can include information about particular individuals, statistical correlations, physical laws, and default rules. We call our approach the random-worlds method. The method is based on the principle of indifference: it treats all of the worlds the agent considers possible as being…
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Taxonomy
TopicsLogic, Reasoning, and Knowledge · Bayesian Modeling and Causal Inference · AI-based Problem Solving and Planning
