Blacksburg, Virginia, United States of America
  •  142
    Error and the Growth of Experimental Knowledge
    with Michael Kruse
    Philosophical Review 107 (2): 324. 1998.
    Once upon a time, logic was the philosopher’s tool for analyzing scientific reasoning. Nowadays, probability and statistics have largely replaced logic, and their most popular application—Bayesianism—has replaced the qualitative deductive relationship between a hypothesis h and evidence e with a quantitative measure of h’s probability in light of e.
  •  54
    Principles of inference and their consequences
    with Michael Kruse
    In David Corfield & Jon Williamson (eds.), Foundations of Bayesianism, Kluwer Academic Publishers. pp. 381--403. 2001.
  •  191
    In defense of the Neyman-Pearson theory of confidence intervals
    Philosophy of Science 48 (2): 269-280. 1981.
    In Philosophical Problems of Statistical Inference, Seidenfeld argues that the Neyman-Pearson (NP) theory of confidence intervals is inadequate for a theory of inductive inference because, for a given situation, the 'best' NP confidence interval, [CIλ], sometimes yields intervals which are trivial (i.e., tautologous). I argue that (1) Seidenfeld's criticism of trivial intervals is based upon illegitimately interpreting confidence levels as measures of final precision; (2) for the situation which…Read more
  •  180
    The New Experimentalism, Topical Hypotheses, and Learning from Error
    PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1994 270-279. 1994.
    An important theme to have emerged from the new experimentalist movement is that much of actual scientific practice deals not with appraising full-blown theories but with the manifold local tasks required to arrive at data, distinguish fact from artifact, and estimate backgrounds. Still, no program for working out a philosophy of experiment based on this recognition has been demarcated. I suggest why the new experimentalism has come up short, and propose a remedy appealing to the practice of sta…Read more
  •  391
    Behavioristic, evidentialist, and learning models of statistical testing
    Philosophy of Science 52 (4): 493-516. 1985.
    While orthodox (Neyman-Pearson) statistical tests enjoy widespread use in science, the philosophical controversy over their appropriateness for obtaining scientific knowledge remains unresolved. I shall suggest an explanation and a resolution of this controversy. The source of the controversy, I argue, is that orthodox tests are typically interpreted as rules for making optimal decisions as to how to behave--where optimality is measured by the frequency of errors the test would commit in a long …Read more