Linguistique de l’écrit

Revue internationale en libre accès

Revue | Volume | Article

235997

Science without (parametric) models

the case of bootstrap resampling

Jan Sprenger

pp. 65-76

Résumé

Scientific and statistical inferences build heavily on explicit, parametric models, and often with good reasons. However, the limited scope of parametric models and the increasing complexity of the studied systems in modern science raise the risk of model misspecification. Therefore, I examine alternative, data-based inference techniques, such as bootstrap resampling. I argue that their neglect in the philosophical literature is unjustified: they suit some contexts of inquiry much better and use a more direct approach to scientific inference. Moreover, they make more parsimonious assumptions and often replace theoretical understanding and knowledge about mechanisms by careful experimental design. Thus, it is worthwhile to study in detail how nonparametric models serve as inferential engines in science.

Détails de la publication

Publié dans:

Frigg Roman, Hartmann Stephan, Imbert Cyrille (2011) Models and simulations 2. Synthese 180 (1).

Pages: 65-76

DOI: 10.1007/s11229-009-9567-z

Citation complète:

Sprenger Jan, 2011, Science without (parametric) models: the case of bootstrap resampling. Synthese 180 (1), Models and simulations 2, 65-76. https://doi.org/10.1007/s11229-009-9567-z.