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  1. Theory of Probability.Harold Jeffreys - 1939 - Oxford, England: Clarendon Press.
    Another title in the reissued Oxford Classic Texts in the Physical Sciences series, Jeffrey's Theory of Probability, first published in 1939, was the first to develop a fundamental theory of scientific inference based on the ideas of Bayesian statistics. His ideas were way ahead of their time and it is only in the past ten years that the subject of Bayes' factors has been significantly developed and extended. Until recently the two schools of statistics were distinctly different and set apart. (...)
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  • Theory of Probability. [REVIEW]Ernest Nagel - 1940 - Journal of Philosophy 37 (19):524-528.
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  • Who Should Be Afraid of the Jeffreys-Lindley Paradox?Aris Spanos - 2013 - Philosophy of Science 80 (1):73-93.
    The article revisits the large n problem as it relates to the Jeffreys-Lindley paradox to compare the frequentist, Bayesian, and likelihoodist approaches to inference and evidence. It is argued that what is fallacious is to interpret a rejection of as providing the same evidence for a particular alternative, irrespective of n; this is an example of the fallacy of rejection. Moreover, the Bayesian and likelihoodist approaches are shown to be susceptible to the fallacy of acceptance. The key difference is that (...)
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  • A statistical paradox.D. V. Lindley - 1957 - Biometrika 44 (1/2):187-192.
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  • Probability Theory. The Logic of Science.Edwin T. Jaynes - 2002 - Cambridge University Press: Cambridge. Edited by G. Larry Bretthorst.
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  • Severe testing as a basic concept in a neyman–pearson philosophy of induction.Deborah G. Mayo & Aris Spanos - 2006 - British Journal for the Philosophy of Science 57 (2):323-357.
    Despite the widespread use of key concepts of the Neyman–Pearson (N–P) statistical paradigm—type I and II errors, significance levels, power, confidence levels—they have been the subject of philosophical controversy and debate for over 60 years. Both current and long-standing problems of N–P tests stem from unclarity and confusion, even among N–P adherents, as to how a test's (pre-data) error probabilities are to be used for (post-data) inductive inference as opposed to inductive behavior. We argue that the relevance of error probabilities (...)
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  • Bayesian inference given data?significant at??: Tests of point hypotheses.D. J. Johnstone & D. V. Lindley - 1995 - Theory and Decision 38 (1):51-60.
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  • Theory of Probability.Harold Jeffreys - 1940 - Philosophy of Science 7 (2):263-264.
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