We introduce and investigate a family of consequence relations with the goal of capturing certain important patterns of data-driven inference. The inspiring idea for our framework is the fact that data may reject, possibly to some degree, and possibly by mistake, any given scientific hypothesis. There is no general agreement in science about how to do this, which motivates putting forward a logical formulation of the problem. We do so by investigating distinct definitions of 'rejection degrees' each yielding a consequence relation. Our investigation leads to novel variations on the theme of rational consequence relations, prominent among non-monotonic logics.

A logical framework for data-driven reasoning / P. Baldi, E.A. Corsi, H. Hosni. - In: LOGIC JOURNAL OF THE IGPL. - ISSN 1367-0751. - (2024), pp. jzae113.1-jzae113.36. [Epub ahead of print] [10.1093/jigpal/jzae113]

A logical framework for data-driven reasoning

P. Baldi
;
E.A. Corsi
;
H. Hosni
2024

Abstract

We introduce and investigate a family of consequence relations with the goal of capturing certain important patterns of data-driven inference. The inspiring idea for our framework is the fact that data may reject, possibly to some degree, and possibly by mistake, any given scientific hypothesis. There is no general agreement in science about how to do this, which motivates putting forward a logical formulation of the problem. We do so by investigating distinct definitions of 'rejection degrees' each yielding a consequence relation. Our investigation leads to novel variations on the theme of rational consequence relations, prominent among non-monotonic logics.
data-driven inference; significance inference; null hypothesis significance testing; non-monotonic logic
Settore PHIL-02/A - Logica e filosofia della scienza
   Reasoning with Data
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   FIS00003279
2024
10-dic-2024
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1160844
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