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127The Evaluation of Discovery: Models, Simulation and Search through “Big Data”Open Philosophy 2 (1): 39-48. 2019.A central theme in western philosophy was to find formal methods that can reliably discover empirical relationships and their explanations from data assembled from experience. As a philosophical project, that ambition was abandoned in the 20th century and generally dismissed as impossible. It was replaced in philosophy by neo-Kantian efforts at reconstruction and justification, and in professional statistics by the more limited ambition to estimate a small number of parameters in pre-specified h…Read more
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81It is commonplace to encounter nonstationary or heterogeneous data, of which the underlying generating process changes over time or across data sets. Such a distribution shift feature presents both challenges and opportunities for causal discovery. In this paper we develop a principled framework for causal discovery from such data, called Constraint-based causal Discovery from Nonstationary/heterogeneous Data, which addresses two important questions. First, we propose an enhanced constraint-base…Read more
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90We study the identifiability and estimation of functional causal models under selection bias, with a focus on the situation where the selection depends solely on the effect variable, which is known as outcome-dependent selection. We address two questions of identifiability: the identifiability of the causal direction between two variables in the presence of selection bias, and, given the causal direction, the identifiability of the model with outcome-dependent selection. Regarding the first, we …Read more
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Logic, Methodology and Philosophy of Science. Proceedings of the 13th International Congress (edited book)King’s College. 2009.
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6Einstein and Hilbert: Two months in the history of general relativityArchive for History of Exact Sciences 19 (3): 291-308. 1978.
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755Confirmation and chaosPhilosophy of Science 69 (2): 256-265. 2002.Recently, Rueger and Sharp (1996) and Koperski (1998) have been concerned to show that certain procedural accounts of model confirmation are compromised by non‐linear dynamics. We suggest that the issues raised are better approached by considering whether chaotic data analysis methods allow for reliable inference from data. We provide a framework and an example of this approach.
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1Review: Cause and Chance: Causation in an Indeterministic World (review)Mind 114 (455): 728-733. 2005.
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2Logic, Methodology and Philosophy of Science. Proceedings of the Thirteenth International Congress (edited book)King’s College Publications. 2009.
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The Hierarchies of Knowledge and the Mathematics of DiscoveryIn P. J. R. Millican & A. Clark (eds.), Machines and Thought: The Legacy of Alan Turing, Volume 1, Clarendon Press. 1996.
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49The ability to identify the mineral composition of rocks and softs is an important tool for the exploration of geological sites. For instance, NASA intends to design robots that are sufficiently autonomous to perform this task on planetary missions. Spectrometer readings provide one important source of data for identifying sites with minerals of interest. Reflectance spectrometers measure intensities of light reflected from surfaces over a range of wavelengths. Spectral intensity patterns may in…Read more
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7Explanation and RealismIn Jarrett Leplin (ed.), Scientific Realism, University of California Press. pp. 173-192. 1984.
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95Introduction to the Philosophy of ScienceHackett Publishing Company. 1999.A reprint of the Prentice-Hall edition of 1992. Prepared by nine distinguished philosophers and historians of science, this thoughtful reader represents a cooperative effort to provide an introduction to the philosophy of science focused on cultivating an understanding of both the workings of science and its historical and social context. Selections range from discussions of topics in general methodology to a sampling of foundational problems in various physical, biological, behavioral, and soci…Read more
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The Hierarchies of Knowledge and the Mathematics of DiscoveryIn Peter Millican & Andy Clark (eds.), Machines and Thought: The Legacy of Alan Turing, Volume I, Clarendon Press. 1999.
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The Hierarchies of Knowledge and the Mathematics of DiscoveryIn Peter Millican & Andy Clark (eds.), Machines and Thought: The Legacy of Alan Turing, Volume I, Clarendon Press. 1999.
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Foundations of Space-Time TheoriesBritish Journal for the Philosophy of Science 31 (3): 311-315. 1980.
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407Elga's presentation of The Sleeping Beauty Problem is often misread, with analyses that impute extra premises and derive false answers to the problem as Elga presented it. Here it is shown that hewing to the text requires that the Sleeping Beauty's degree of belief in a coin flip upon her first awakening is 1/2.
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116Why you'll never know whether Roger Penrose is a computerBehavioral and Brain Sciences 13 (4): 666-667. 1990.
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195Clark Glymour, Richard Scheines, Peter Spirtes and Kevin Kelly. Discovering Causal Structure: Artifical Intelligence, Philosophy of Science and Statistical Modeling
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37Consensus Institute StaffIn C. Wade Savage (ed.), Scientific Theories, University of Minnesota Press. pp. 417. 1956.
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13In recent papers we have described a framework for inferring causal structure from relations of statistical independence among a set of measured variables. Using Pearl's notion of the perfect representation of a set of independence relations by a directed acyclic graph we proved..
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12Probabilistic Reasoning in Intelligent Systems: Networks of Plausible InferenceSynthese 104 (1): 161-176. 1988.
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41Review: The Grand Leap; Reviewed Work: Causation, Prediction, and Search (review)British Journal for the Philosophy of Science 47 (1): 113-123. 1996.
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110Clark Glymour, Richard Scheines, Peter Spirtes, and Christopher Meek. Regression and Causation
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95Peter Spirtes, Clark Glymour and Richard Scheines. Causality From Probability
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