Probabilistic and Non-Monotonic Inference
Henry E. Kyburg Jr

TL;DR
This paper explores probabilistic inference as a non-monotonic reasoning process, emphasizing how new evidence can alter the probability and rational belief in statements, contrasting it with traditional deductive probabilistic logic.
Contribution
It introduces a formal perspective on probabilistic inference as non-monotonic, highlighting its distinction from deductive probabilistic logic and discussing its philosophical and practical implications.
Findings
Probabilistic inference is inherently non-monotonic.
Traditional probabilistic logic is deductive, unlike probabilistic inference.
The paper discusses the philosophical significance of non-monotonic probabilistic reasoning.
Abstract
(l) I have enough evidence to render the sentence S probable. (la) So, relative to what I know, it is rational of me to believe S. (2) Now that I have more evidence, S may no longer be probable. (2a) So now, relative to what I know, it is not rational of me to believe S. These seem a perfectly ordinary, common sense, pair of situations. Generally and vaguely, I take them to embody what I shall call probabilistic inference. This form of inference is clearly non-monotonic. Relatively few people have taken this form of inference, based on high probability, to serve as a foundation for non-monotonic logic or for a logical or defeasible inference. There are exceptions: Jane Nutter [16] thinks that sometimes probability has something to do with non-monotonic reasoning. Judea Pearl [ 17] has recently been exploring the possibility. There are any number of people whom one might call probability…
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Taxonomy
TopicsBayesian Modeling and Causal Inference
