•  81
    Why Coherence Matters
    Journal of Philosophy. forthcoming.
    Explicating the concept of coherence and establishing a measure for assessing the coherence of an information set are two of the most important tasks of coherentist epistemology. To this end, several principles have been proposed to guide the specification of a measure of coherence. We depart from this prevailing path by challenging two well-established and prima facie plausible principles: Agreement and Dependence. Instead, we propose a new probabilistic measure of coherence that combines basic…Read more
  •  8
  •  3
    Various scientific theories stand in a reductive relation to each other. In a recent article, we have argued that a generalized version of the Nagel-Schaffner model (GNS) is the right account of this relation. In this article, we present a Bayesian analysis of how GNS impacts on confirmation. We formalize the relation between the reducing and the reduced theory before and after the reduction using Bayesian networks, and thereby show that, post-reduction, the two theories are confirmatory of each…Read more
  •  33
    Coherence-based measures of explanatory power
    Philosophical Studies 183 (6): 1817-1843. 2026.
    Recent critiques have cast doubt on the viability of probabilistic measures of explanatory power. We respond by developing a coherence-based family of measures that sidesteps these challenges. Rather than assessing explanatory power solely by how well a hypothesis accounts for the evidence, these measures evaluate how well the entire explanatory package, including multiple explanantia, coheres with the explanandum compared to how well it coheres with its negation. We show that this approach acco…Read more
  •  5
    We reconsider the Nagelian theory of reduction and argue that, contrary to a widely held view, it is the right analysis of intertheoretic reduction. The alleged difficulties of the theory either vanish upon closer inspection or turn out to be substantive philosophical questions rather than knock-down arguments.
  •  22
    We appeal to the theory of Bayesian Networks to model different strategies for obtaining confirmation for a hypothesis from experimental test results provided by less than fully reliable instruments. In particular, we consider (i) repeated measurements of a single test consequence of the hypothesis, (ii) measurements of multiple test consequences of the hypothesis, (iii) theoretical support for the reliability of the instrument, and (iv) calibration procedures. We evaluate these strategies on th…Read more
  •  27
    Models in science
    The Stanford Encyclopedia of Philosophy. 2016.
  •  3
    New Directions in the Philosophy of Science (edited book)
    with Maria Carla Galavotti, Dennis Dieks, Marcel Weber, Wenceslao J. Gonzalez, and Thomas Uebel
    Springer. 2014.
    This volume sheds light on still unexplored issues and raises new questions in the main areas addressed by the philosophy of science. Bringing together selected papers from three main events, the book presents the most advanced scientific results in the field and suggests innovative lines for further investigation. It explores how discussions on several notions of the philosophy of science can help different scientific disciplines in learning from each other. Finally, it focuses on the relations…Read more
  •  7
    Models in Science
    with Roman Frigg
    Stanford Encyclopedia of Philosophy. 2006.
  •  15
    Author Index
    with Ulrich Gähde, Matthias Bartelmann, Andreas Bartels, Martin Golubitsky, Thomas A. C. Reydon, Dirk Helbing, Uskali Mäki, Julian Reiss, Peter König, Kai-Uwe Kühnberger, Tim C. Kietzmann, Markus Werning, Michela C. Tacca, Aleksandra Mroczko-Wąsowicz, Reinhold Kliegl, Ralf Engbert, Martin Hoffmann, Wolfgang Marquardt, Robin Findlay Hendry, Valerio Lucarini, and Gregor Betz
    In Ulrich Gähde, Stephan Hartmann & Jörn Henning Wolf (eds.), Models, Simulations, and the Reduction of Complexity, De Gruyter. pp. 269-276. 2013.
  •  29
    Subject Index
    with Ulrich Gähde, Matthias Bartelmann, Andreas Bartels, Martin Golubitsky, Thomas A. C. Reydon, Dirk Helbing, Uskali Mäki, Julian Reiss, Peter König, Kai-Uwe Kühnberger, Tim C. Kietzmann, Markus Werning, Michela C. Tacca, Aleksandra Mroczko-Wąsowicz, Reinhold Kliegl, Ralf Engbert, Martin Hoffmann, Wolfgang Marquardt, Robin Findlay Hendry, Valerio Lucarini, and Gregor Betz
    In Ulrich Gähde, Stephan Hartmann & Jörn Henning Wolf (eds.), Models, Simulations, and the Reduction of Complexity, De Gruyter. pp. 265-268. 2013.
  •  86
    Die zeitgenössische Wissenschaftstheorie leidet unter ähnlichen Problemen wie die Wissenschaften, mit denen sie sich befasst. So nimmt auch in der Wissenschaftstheorie die Spezialisierung stark zu, und bei vielen der behandelten Fragestellungen geht es einzig um Detailprobleme, die sich aus einem sich verselbständigenden Diskussionszusammenhang entwickelt haben, wobei der Bezug zur jeweiligen Ausgangsfrage und die größere philosophische Perspektive leicht aus den Augen verloren geht.
  •  12
    Normativität und Bayesianismus
    with Ludwig Fahrbach
    In Bernward Gesang (ed.), Deskriptive oder normative Wissenschaftstheorie?, De Gruyter. pp. 177-204. 2005.
  •  10
    Subject Index
    with Ulrich Gähde and Jörn Henning Wolf
    In Ulrich Gähde, Stephan Hartmann & Jörn Henning Wolf (eds.), Models, Simulations, and the Reduction of Complexity, De Gruyter. pp. 265-268. 2013.
  •  7
    Author Index
    with Ulrich Gähde and Jörn Henning Wolf
    In Ulrich Gähde, Stephan Hartmann & Jörn Henning Wolf (eds.), Models, Simulations, and the Reduction of Complexity, De Gruyter. pp. 269-276. 2013.
  • Introduction
    In Claus Beisbart & Stephan Hartmann (eds.), Probabilities in Physics, Oxford University Press. 2011.
  •  21
    The Bayesian Research Programme in the Methodology of Science, or Lakatos Meets Bayes
    In Roman Frigg, J. McKenzie Alexander, Laurenz Hudetz, Miklos Rédei, Lewis Ross & John Worrall (eds.), Proofs and Research Programmes: Lakatos at 100, Springer Nature Switzerland. pp. 127-144. 2025.
    Lakatos argued that Carnap’s research programme in inductive logic was degenerative because it underwent a degenerative problem-shift by dealing with ever more specific internal problems and thereby moving further and further away from its original goals. Here I show that this criticism (which may apply to Carnap) cannot be levelled at the contemporary successor to Carnap’s programme, Bayesianism. To this end, I discuss various challenges and show how they can be addressed within the Bayesian re…Read more
  •  54
    Bayesian Epistemology
    with Luc Bovens
    Oxford University Press. 2004.
    Probabilistic models have much to offer to epistemology and philosophy of science. Arguably, the coherence theory of justification claims that the more coherent a set of propositions is, the more confident one ought to be in its content, ceteris paribus. An impossibility result shows that there cannot exist a coherence ordering. A coherence quasi-ordering can be constructed that respects this claim and is relevant to scientific-theory choice. Bayesian-Network models of the reliability of informa…Read more
  •  4
    Voting, deliberation and truth
    Synthese 195 (3): 1273-1293. 2018.
    There are various ways to reach a group decision on a factual yes–no question. One way is to vote and decide what the majority votes for. This procedure receives some epistemological support from the Condorcet Jury Theorem. Alternatively, the group members may prefer to deliberate and will eventually reach a decision that everybody endorses—a consensus. While the latter procedure has the advantage that it makes everybody happy (as everybody endorses the consensus), it has the disadvantage that i…Read more
  •  445
    Various scientific theories stand in a reductive relation to each other. In a recent article, we have argued that a generalized version of the Nagel-Schaffner model (GNS) is the right account of this relation. In this article, we present a Bayesian analysis of how GNS impacts on confirmation. We formalize the relation between the reducing and the reduced theory before and after the reduction using Bayesian networks, and thereby show that, post-reduction, the two theories are confirmatory of each…Read more
  •  92
    Suppose that we acquire various items of information from various sources and that our degree of confidence in the content of the information set is sufficiently high to believe the information. Now a new item of information is being presented by a new information source. Are we justified to add this new item of information to what we already believe? Consider the following parable: “I go to a lecture about wildlife in Greenland which was supposed to be delivered by an expert in the field…Read more