Bayesianism for Non-ideal Agents

Erkenntnis 87 (1):93-115 (2022)
  Copy   BIBTEX

Abstract

Orthodox Bayesianism is a highly idealized theory of how we ought to live our epistemic lives. One of the most widely discussed idealizations is that of logical omniscience: the assumption that an agent’s degrees of belief must be probabilistically coherent to be rational. It is widely agreed that this assumption is problematic if we want to reason about bounded rationality, logical learning, or other aspects of non-ideal epistemic agency. Yet, we still lack a satisfying way to avoid logical omniscience within a Bayesian framework. Some proposals merely replace logical omniscience with a different logical idealization; others sacrifice all traits of logical competence on the altar of logical non-omniscience. We think a better strategy is available: by enriching the Bayesian framework with tools that allow us to capture what agents can and cannot infer given their limited cognitive resources, we can avoid logical omniscience while retaining the idea that rational degrees of belief are in an important way constrained by the laws of probability. In this paper, we offer a formal implementation of this strategy, show how the resulting framework solves the problem of logical omniscience, and compare it to orthodox Bayesianism as we know it.

Similar books and articles

Dynamic Epistemic Logic and Logical Omniscience.Mattias Skipper Rasmussen - 2015 - Logic and Logical Philosophy 24 (3):377-399.
Plantinga e a justificação Bayesiana de crenças.Agnaldo Cuoco Portugal - 2012 - Veritas – Revista de Filosofia da Pucrs 57 (2):15-25.
Rational Credence Through Reasoning.Sinan Dogramaci - 2018 - Philosophers' Imprint 18.
Evidential Probabilities and Credences.Anna-Maria Asunta Eder - 2023 - British Journal for the Philosophy of Science 74 (1).
Two dogmas of strong objective bayesianism.Prasanta S. Bandyopadhyay & Gordon Brittan - 2010 - International Studies in the Philosophy of Science 24 (1):45 – 65.
Bayesianism and the Idea of Scientific Rationality.Jeremiah Joven Joaquin - 2017 - Croatian Journal of Philosophy 17 (1):33-43.
Introduction: Bayesianism into the 21st Century.Jon Williamson & David Corfield - 2001 - In David Corfield & Jon Williamson (eds.), Foundations of Bayesianism. Kluwer Academic Publishers. pp. 1--16.
How to Be a Bayesian Dogmatist.Brian T. Miller - 2016 - Australasian Journal of Philosophy 94 (4):766-780.
Ramsey and the measurement of belief.Richard Bradley - 2001 - In David Corfield & Jon Williamson (eds.), Foundations of Bayesianism.
Bayesianism and Simplicity.Ben Escoto - 2004 - Dissertation, Stanford University
Bayesian Scientific Methodology: A Naturalistic Approach.Yeongseo Yeo - 2002 - Dissertation, University of Missouri - Columbia

Analytics

Added to PP
2019-09-16

Downloads
967 (#13,508)

6 months
146 (#20,538)

Historical graph of downloads
How can I increase my downloads?

Author Profiles

Mattias Skipper
Inland Norway University of Applied Sciences

References found in this work

Knowledge and belief.Jaakko Hintikka - 1962 - Ithaca, N.Y.,: Cornell University Press.
Impossible Worlds.Francesco Berto & Mark Jago - 2019 - Oxford: Oxford University Press. Edited by Mark Jago.
Theory and Evidence.Clark N. Glymour - 1980 - Princeton University Press.

View all 43 references / Add more references