A General Non-Probabilistic Theory of Inductive Reasoning
Wolfgang Spohn

TL;DR
This paper develops a non-probabilistic framework for inductive reasoning based on plain belief, addressing limitations of probability theory in representing belief change and proposing a new formal approach.
Contribution
It introduces a novel non-probabilistic theory of inductive reasoning that models plain belief and its revision without relying on probability, filling a gap in formal epistemology.
Findings
Proposes a formal model for belief change based on plain belief.
Addresses issues with probability-based belief representation.
Provides a new perspective on inductive reasoning and belief revision.
Abstract
Probability theory, epistemically interpreted, provides an excellent, if not the best available account of inductive reasoning. This is so because there are general and definite rules for the change of subjective probabilities through information or experience; induction and belief change are one and same topic, after all. The most basic of these rules is simply to conditionalize with respect to the information received; and there are similar and more general rules. 1 Hence, a fundamental reason for the epistemological success of probability theory is that there at all exists a well-behaved concept of conditional probability. Still, people have, and have reasons for, various concerns over probability theory. One of these is my starting point: Intuitively, we have the notion of plain belief; we believe propositions2 to be true (or to be false or neither). Probability theory, however,…
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Taxonomy
TopicsLogic, Reasoning, and Knowledge · Epistemology, Ethics, and Metaphysics · Bayesian Modeling and Causal Inference
