On empirical generalisations

Federica Russo

    Research output: Chapter in Book/Report/Conference proceedingChapterResearchpeer-review

    6 Citations (Scopus)

    Abstract

    Manipulationism holds that information about the results of interventions is of utmost importance for scienti? c practices such as causal assessment or explanation. Speci? cally, manipulation provides information about the stability, or invariance, of the (causal) relationship between (variables) X and Y: were we to wiggle the cause X, the effect Y would accordingly wiggle and, additionally, the relation between the two will not be disrupted. This sort of relationship between variables are called 'invariant empirical generalisations'. The paper focuses on questions about causal assessment and analyses the status of manipulation. It is argued that manipulationism is trapped in a dilemma. If manipulationism is read as providing a conceptual analysis of causation, then it fails to provide a story about the methods for causal assessment. If, instead, manipulationism is read as providing a method for causal assessment, then it is at an impasse concerning causal assessment in areas where manipulations are not performed. Empirical generalisations are then reassessed, in such a way that manipulation is not taken as methodologically fundamental. The paper concludes that manipulation is the appropriate tool for some scienti? c (experimental) contexts, but not for all.
    Original languageEnglish
    Title of host publicationProbabilities, Laws, and Structures
    EditorsDennis Dieks, Wenceslao J. Gonzalez, Stephan Hartmann, Michael Stöltzner, Marcel Weber
    PublisherSpringer
    Pages123-139
    ISBN (Print)978-94-007-3029-8
    Publication statusPublished - 2012

    Publication series

    NameThe Philosophy of Science in a European Perspective
    Volume3

    Keywords

    • causality
    • empirical generalisations
    • laws of nature
    • manipulation

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