Abstract
AbstractThis paper proposes a framework for representing in Bayesian terms the idea that analogical arguments of various degrees of strength may provide inductive support to yet untested scientific hypotheses. On this account, contextual information plays a crucial role in determining whether, and to what extent, a given similarity or dissimilarity between source and target may confirm an empirical hypothesis over a rival one. In addition to showing confirmation by analogy compatible with the adoption of a Bayesian standpoint, the proposal outlined in this paper reveals a close agreement between the fulfillment of Hesse’s (Models and analogies in science, University of Notre Dame Press, 1963) criteria for analogical arguments capable of inductive support and the attribution of confirmatory power by the lights of Bayesian confirmation theory. In this sense, the Bayesian representation not only enriches a framework, Hesse’s, of enduring relevance for understanding scientific activity, but may offer something akin to a proof of concept of it.
Funder
Ministero dell’Istruzione, dell’Università e della Ricerca
Publisher
Springer Science and Business Media LLC
Subject
General Social Sciences,Philosophy
Reference49 articles.
1. Agassi, J. (1964). Analogies as generalizations. Philosophy of Science, 31, 351–356.
2. Bartha, P. (2019). Analogy and analogical reasoning, in Zalta, E. (ed.), Stanford Encyclopedia of Philosophy, Fall 2020 Edition.
3. Bartha, P. (2009). By parallel reasoning. Oxford University Press.
4. Bartha, P. (2020). Norton’s material theory of analogy. Studies in History and Philosophy of Science Part A, 82, 104–113.
5. Bekenstein, J. (1972). Black holes and the second law. Lettere Al Nuovo Cimento, 4, 737–740.
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