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Two Impossibility Results for Measures of Corroboration

Sprenger, Jan (2015) Two Impossibility Results for Measures of Corroboration. [Preprint]

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According to influential accounts of scientific method, e.g., critical rationalism, scientific knowledge grows by repeatedly testing our best hypotheses. But despite the popularity of hypothesis tests in statistical inference and science in general, their philosophical foundations remain shaky. In particular, the interpretation of non-significant results---those that do not refute the tested hypothesis---poses a major philosophical challenge. To what extent do they corroborate the tested hypothesis or provide a reason to accept it?

Karl R. Popper sought for measures of corroboration that could adequately answer this question. According to Popper, corroboration is different from probability-raising, and grounded in the predictive success and testability of a hypothesis. As such, corroboration becomes an indicator of the scientific value of a hypothesis and guides our practical preferences over hypotheses which have been subjected to severe tests.

This paper proves two impossibility results for corroboration measures that are specified along the above lines. The generality of these results shows that Popper's qualitative characterization of corroboration must be misguided. I explore what a more promising, and scientifically useful concept of corroboration could look like.

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Item Type: Preprint
Keywords: corroboration Popper critical rationalism confirmation theory Bayesianism confirmation theory hypothesis tests
Subjects: General Issues > Confirmation/Induction
Specific Sciences > Probability/Statistics
Depositing User: Jan Sprenger
Date Deposited: 20 Jan 2016 13:36
Last Modified: 20 Jan 2016 13:36
Item ID: 11870
Subjects: General Issues > Confirmation/Induction
Specific Sciences > Probability/Statistics
Date: February 2015

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