•  47
    A symposium on Michael Strevens' book "Tychomancy", concerning the psychological roots and historical significance of physical intuition about probability in physics, biology, and elsewhere.
  •  241
    The three cardinal aims of science are prediction, control, and explanation; but the greatest of these is explanation. Also the most inscrutable: prediction aims at truth, and control at happiness, and insofar as we have some independent grasp of these notions, we can evaluate science’s strategies of prediction and control from the outside. Explanation, by contrast, aims at scientific understanding, a good intrinsic to science and therefore something that it seems we can only look to science its…Read more
  •  73
    Complexity Theory
    In Paul Humphreys (ed.), The Oxford Handbook of Philosophy of Science, Oxford University Press Usa. 2016.
    Complexity theory attempts to explain, at the most general possible level, the interesting behaviors of complex systems. Two such behaviors are the emergence of simple or stable high-level behavior from relatively complex low-level behavior, and the emergence of sophisticated high-level behavior from relatively simple low-level behavior; they are often found nested in the same system. Concerning the emergence of simplicity, this essay examines Herbert Simon's explanation from near-decomposabilit…Read more
  •  246
    Physically contingent laws and counterfactual support
    Philosophers' Imprint 8 1-20. 2008.
    The generalizations found in biology, psychology, sociology, and other high-level sciences are typically physically contingent. You might conclude that they play only a limited role in scientific investigation, on the grounds that physically contingent generalizations offer no or only feeble counterfactual support. But the link between contingency and counterfactual support is more complex than is commonly supposed. A certain class of physically contingent generalizations, comprising many, perha…Read more
  •  7
    C. S. BERTUGLIA AND F. VAIO Nonlinearity, Chaos, and Complexity (review)
    British Journal for the Philosophy of Science 60 (2): 447-451. 2009.
  •  110
    Do large probabilities explain better?
    Philosophy of Science 67 (3): 366-390. 2000.
    It is widely held that the size of a probability makes no difference to the quality of a probabilistic explanation. I argue that explanatory practice in statistical physics belies this claim. The claim has gained currency only because of an impoverished conception of probabilistic processes and an unwarranted assumption that all probabilistic explanations have a single form.
  •  188
    The Role of the Matthew Effect in Science
    Studies in History and Philosophy of Science Part A 37 (2): 159-170. 2006.
    Robert Merton observed that better-known scientists tend to get more credit than less well-known scientists for the same achievements; he called this the Matthew effect. Scientists themselves, even those eminent researchers who enjoy its benefits, regard the effect as a pathology: it results, they believe, in a misallocation of credit. If so, why do scientists continue to bestow credit in the manner described by the effect? This paper advocates an explanation of the effect on which it turns out …Read more
  •  79
    In this book, Michael Strevens aims to explain how simplicity can coexist with, indeed be caused by, the tangled interconnections between a complex system's ...
  •  197
    The bayesian treatment of auxiliary hypotheses
    British Journal for the Philosophy of Science 52 (3): 515-537. 2001.
    This paper examines the standard Bayesian solution to the Quine–Duhem problem, the problem of distributing blame between a theory and its auxiliary hypotheses in the aftermath of a failed prediction. The standard solution, I argue, begs the question against those who claim that the problem has no solution. I then provide an alternative Bayesian solution that is not question-begging and that turns out to have some interesting and desirable properties not possessed by the standard solution. This s…Read more
  •  115
    Ontology, Complexity, and Compositionality
    In Matthew H. Slater & Zanja Yudell (eds.), Metaphysics and the Philosophy of Science: New Essays, Oxford University Press. 2017.
    Sciences of complex systems thrive on compositional theories – toolkits that allow the construction of models of a wide range of systems, each consisting of various parts put together in different ways. To be tractable, a compositional theory must make shrewd choices about the parts and properties that constitute its basic ontology. One such choice is to decompose a system into spatiotemporally discrete parts. Compositional theories in the high-level sciences follow this rule of thumb to a certa…Read more
  •  31
    Remarks on Harman and Kulkarni's "Reliable Reasoning"
    Abstracta 5 (S3): 27-41. 2009.
    Reliable Reasoning is a simple, accessible, beautifully explained introduction to Vapnik and Chervonenkis’s statistical learning theory. It includes a modest discussion of the application of the theory to the philosophy of induction; the purpose of these remarks is to say something more. 27
  •  135
    Objective evidence and absence: Comment on Sober
    Philosophical Studies 143 (1). 2009.
    Elliott Sober argues that the statistical slogan “Absence of evidence is not evidence of absence” cannot be taken literally: it must be interpreted charitably as claiming that the absence of evidence is (typically) not very much evidence of absence. I offer an alternative interpretation, on which the slogan claims that absence of evidence is (typically) not objective evidence of absence. I sketch a definition of objective evidence, founded in the notion of an epistemically objective likelihood, …Read more
  •  99
    High-Level Exceptions Explained
    Erkenntnis 79 (S10): 1819-1832. 2014.
    Why are causal generalizations in the higher-level sciences “inexact”? That is, why do they have apparent exceptions? This paper offers one explanation: many causal generalizations cite as their antecedent—the \(F\) in \(Fs\,\, {\textit{are}}\,\, G\) —a property that is not causally relevant to the consequent, but which is rather “entangled” with a causally relevant property. Entanglement is a relation that may exist for many reasons, and that allows of exceptions. Causal generalizations that sp…Read more
  •  28
    Review of C. S. Bertuglia and F. Vaio, "Nonlinearity, chaos, and complexity"
    British Journal for the Philosophy of Science 60 (2): 447-451. 2009.
  •  126
    A closer look at the 'new' principle
    British Journal for the Philosophy of Science 46 (4): 545-561. 1995.
    David Lewis, Michael Thau, and Ned Hall have recently argued that the Principal Principle—an inferential rule underlying much of our reasoning about probability—is inadequate in certain respects, and that something called the ‘New Principle’ ought to take its place. This paper argues that the Principle Principal need not be discarded. On the contrary, Lewis et al. can get everything they need—including the New Principle—from the intuitions and inferential habits that inspire the Principal Princi…Read more
  •  104
    Stochastic Independence and Causal Connection
    Erkenntnis 80 (S3): 605-627. 2015.
    Assumptions of stochastic independence are crucial to statistical models in science. Under what circumstances is it reasonable to suppose that two events are independent? When they are not causally or logically connected, so the standard story goes. But scientific models frequently treat causally dependent events as stochastically independent, raising the question whether there are kinds of causal connection that do not undermine stochastic independence. This paper provides one piece of an answe…Read more