JOURNAL ARTICLE

Knowledge‐first perceptual epistemology: A comment on Littlejohn and Millar.

  • Published In: Analytic Philosophy, 2023, v. 64, n. 3. P. 329 1 of 3

  • Database: Academic Search Ultimate 2 of 3

  • Authored By: de Bruijn, David 3 of 3

Abstract

According to epistemological disjunctivism (ED), ordinary perceptual experience ensures an opportunity for perceptual knowledge. In recent years, two distinct models of this idea have been developed. For Duncan Pritchard (Epistemological disjunctivism, 2012, Oxford University Press; Epistemic angst: Radical skepticism and the groundlessness of our believing, 2012, Princeton University Press), perception provides distinctly powerful reasons for belief. By contrast, Clayton Littlejohn (Journal of Philosophical Research, 41, 201; Knowledge first, 2017, Oxford University Press; Normativity: Epistemic and practical, 2018, Oxford University Press) and Alan Millar (The nature and value of knowledge: Three investigations, 2010, Oxford University Press; Philosophical Issues, 21, 332) argue for a version of ED in terms of a "knowledge first" program, on which perception directly provides knowledge, without relying on antecedent reasons or justification. Specifically, both Littlejohn and Millar argue that "reasons first" ED faces a problematic regress. In this article, I defend "reasons first" ED by arguing that experience provides a type of reason that escapes the regress. I also argue that reasons are a fundamental aspect of ED, especially in its anti‐skeptical stance. [ABSTRACT FROM AUTHOR]

Additional Information

  • Source:Analytic Philosophy. 2023/09, Vol. 64, Issue 3, p329
  • Document Type:Article
  • Subject Area:Religion and Philosophy
  • Publication Date:2023
  • ISSN:2153-9596
  • DOI:10.1111/phib.12256
  • Accession Number:169875660
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