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Deborah Mayo

Virginia Tech
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  • Virginia Tech
    Department of Philosophy
    Retired faculty
Blacksburg, Virginia, United States of America
  • All publications (67)
  •  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
    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 Seidenfeld considers, the 'best' NP confidence interval is not [CIλ] as Seidenfeld suggests, but rather a one-sided interval [CI0]; and since [CI0] never yields trivial intervals, NP theory escapes Seidenfeld's criticism entirely; (3) Seidenfeld's criterion of non-triviality is inadequate, for it leads him to judge an alternative confidence interval, [CI alt. ], superior to [CIλ] although [CI alt. ] results in counterintuitive inferences. I conclude that Seidenfeld has not shown that the NP theory of confidence intervals is inadequate for a theory of inductive inference
    Applications of ProbabilityBayesian ReasoningDecision Theory and Hypothesis Testing
  •  35
    Explanation and testing exchanges with Clark Glymour
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. pp. 351. 2009.
  •  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
    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 standard error statistics. I illustrate a portion of my proposal using Galison's experimental narrative on neutral currents
    Formal Epistemology
  •  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
    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 series of trials. Most philosophers of statistics, however, view the task of statistical methods as providing appropriate measures of the evidential-strength that data affords hypotheses. Since tests appropriate for the behavioral-decision task fail to provide measures of evidential-strength, philosophers of statistics claim the use of orthodox tests in science is misleading and unjustified. What critics of orthodox tests overlook, I argue, is that the primary function of statistical tests in science is neither to decide how to behave nor to assign measures of evidential strength to hypotheses. Rather, tests provide a tool for using incomplete data to learn about the process that generated it. This they do, I show, by providing a standard for distinguishing differences (between observed and hypothesized results) due to accidental or trivial errors from those due to systematic or substantively important discrepancies. I propose a reinterpretation of a commonly used orthodox test to make this learning model of tests explicit
    Bayesian ReasoningPhilosophy of StatisticsDecision Theory and Hypothesis TestingConfirmation, MiscEv…Read more
    Bayesian ReasoningPhilosophy of StatisticsDecision Theory and Hypothesis TestingConfirmation, MiscEvidence, MiscLearning, Misc
  •  37
    Sins of the epistemic probabilist : exchanges with Peter Achinstein
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. pp. 189. 2009.
    Evidence, MiscJohn Stuart MillProbabilistic FrameworksInterpretation of ProbabilityPhilosophy of Sta…Read more
    Evidence, MiscJohn Stuart MillProbabilistic FrameworksInterpretation of ProbabilityPhilosophy of StatisticsConfirmation, Misc
  •  121
    Novel work on problems of novelty? Comments on Hudson
    Studies in History and Philosophy of Science Part B: Studies in History and Philosophy of Modern Physics 34 (1): 131-134. 2003.
    Science, Logic, and Mathematics
  •  175
    Error statistics and learning from error: Making a virtue of necessity
    Philosophy of Science 64 (4): 212. 1997.
    The error statistical account of testing uses statistical considerations, not to provide a measure of probability of hypotheses, but to model patterns of irregularity that are useful for controlling, distinguishing, and learning from errors. The aim of this paper is (1) to explain the main points of contrast between the error statistical and the subjective Bayesian approach and (2) to elucidate the key errors that underlie the central objection raised by Colin Howson at our PSA 96 Symposium
    Bayesian Reasoning, Misc
  •  89
    Understanding frequency-dependent causation
    Philosophical Studies 49 (1). 1986.
    Theories of Causation
  •  480
    Ducks, Rabbits, and Normal Science: Recasting the Kuhn’s-Eye View of Popper’s Demarcation of Science
    British Journal for the Philosophy of Science 47 (2): 271-290. 1996.
    Kuhn maintains that what marks the transition to a science is the ability to carry out ‘normal’ science—a practice he characterizes as abandoning the kind of testing that Popper lauds as the hallmark of science. Examining Kuhn's own contrast with Popper, I propose to recast Kuhnian normal science. Thus recast, it is seen to consist of severe and reliable tests of low-level experimental hypotheses (normal tests) and is, indeed, the place to look to demarcate science. While thereby vindicating Kuh…Read more
    Kuhn maintains that what marks the transition to a science is the ability to carry out ‘normal’ science—a practice he characterizes as abandoning the kind of testing that Popper lauds as the hallmark of science. Examining Kuhn's own contrast with Popper, I propose to recast Kuhnian normal science. Thus recast, it is seen to consist of severe and reliable tests of low-level experimental hypotheses (normal tests) and is, indeed, the place to look to demarcate science. While thereby vindicating Kuhn on demarcation, my recasting of normal science is seen to tell against Kuhn's view of revolutionary science.
    Demarcation of ScienceThomas KuhnPopper: Demarcation of Science
  •  114
    Severe tests, arguing from error, and methodological underdetermination
    Philosophical Studies 86 (3): 243-266. 1997.
    Underdetermination of Theory by Data, Misc
  •  80
    An error in the argument from conditionality and sufficiency to the likelihood principle
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. pp. 305. 2009.
    Philosophy of StatisticsBayesian ReasoningFrequentism
  •  51
    Philosophy of Science Association
    In Richard Boyd, Philip Gasper & J. D. Trout (eds.), The Philosophy of Science, Mit Press. pp. 58--4. 1991.
    General Philosophy of Science, Misc
  •  78
    Learning from error, severe testing, and the growth of theoretical knowledge
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. pp. 28. 2009.
    General RelativityDecision Theory and Hypothesis TestingPhilosophy of StatisticsEvidence, MiscScient…Read more
    General RelativityDecision Theory and Hypothesis TestingPhilosophy of StatisticsEvidence, MiscScientific Change, MiscQuine-Duhem Thesis
  •  54
    Error and the law : exchanges with Larry Laudan
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. pp. 397. 2009.
    Experimentation in ScienceEvidence and KnowledgeEvidence and Proof in LawNature of Law, Misc
  •  39
    The Objective Epistemic Probabilist and the Severe Tester
    In Gregory J. Morgan (ed.), Philosophy of Science Matters: The Philosophy of Peter Achinstein, Oxford University Press. pp. 135-150. 2011.
    While this chapter and Achinstein agree that an account of evidence should be objective, not subjective, and empirical, not a priori, Achinstein has argued that we may reach conflicting assessments of evidence. There are cases where little has been done to rule out threats of error to H—as severity requires—that Achinstein construes as good evidence for H. Conversely, data x may fail to count as evidence for H, according to Achinstein's epistemic probabilist, even where H has passed a severe tes…Read more
    While this chapter and Achinstein agree that an account of evidence should be objective, not subjective, and empirical, not a priori, Achinstein has argued that we may reach conflicting assessments of evidence. There are cases where little has been done to rule out threats of error to H—as severity requires—that Achinstein construes as good evidence for H. Conversely, data x may fail to count as evidence for H, according to Achinstein's epistemic probabilist, even where H has passed a severe test by dint of x. We may call this the “highly probed vs. highly probable” conflict. This chapter argues, based on Achinstein's most recent installment to this debate, that the severity account is more in sync with the Achinstein's goals and the special features of his brand of Bayesianism. This chapter also considers how Achinstein's defense of Mill's account of induction gives further grounds for viewing his objective epistemologist as a severe tester.
    Evidence, MiscChance and Objective ProbabilityScientific MetamethodologyProbabilistic Reasoning
  •  66
    Cartwright, Causality, and Coincidence
    PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1986. 1986.
    Cartwright argues for being a realist about theoretical entities but non-realist about theoretical laws. Her reason is that while the former involves causal explanation, the latter involves theoretical explanation; and inferences to causes, unlike inferences to theories, can avoid the redundancy objection--that one cannot rule out alternatives that explain the phenomena equally well. I sketch Cartwright's argument for inferring the most probable cause, focusing on Perrin's inference to molecular…Read more
    Cartwright argues for being a realist about theoretical entities but non-realist about theoretical laws. Her reason is that while the former involves causal explanation, the latter involves theoretical explanation; and inferences to causes, unlike inferences to theories, can avoid the redundancy objection--that one cannot rule out alternatives that explain the phenomena equally well. I sketch Cartwright's argument for inferring the most probable cause, focusing on Perrin's inference to molecular collisions as the cause of Brownian motion. I argue that either the inference she describes fails to be a genuinely causal one, or else it too is open to the redundancy objection. However, I claim there is a way to sustain Cartwright's main insight: that it is possible to avoid the redundancy objection in certain cases of causal inference from experiments (e.g., Perrin). But, contrary to Cartwright, I argue that in those cases one is able to infer causes only by inferring some theoretical laws about how they produce experimental effects.
    Entity RealismCausal ExplanationCausal RealismInference to the Best Explanation
  •  117
    Some problems with Chow's problems with power
    Behavioral and Brain Sciences 21 (2): 212-213. 1998.
    Chow correctly pinpoints several confusions in the criticisms of statistical hypothesis testing but his book is considerably weakened by its own confusions about concepts of testing (perhaps owing to an often very confusing literature). My focus is on his critique of power analysis (Ch. 6). Having denied that NHSTP considers alternative statistical hypotheses, and having been misled by a quotation from Cohen, Chow finds power analysis conceptually suspect.
    Philosophy of Cognitive Science
  •  52
    On After-Trial Criticisms of Neyman-Pearson Theory of Statistics
    PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1982. 1982.
    Despite its widespread use in science, the Neyman-Pearson Theory of Statistics (NPT) has been rejected as inadequate by most philosophers of induction and statistics. They base their rejection largely upon what the author refers to as after-trial criticisms of NPT. Such criticisms attempt to show that NPT fails to provide an adequate analysis of specific inferences after the trial is made, and the data is known. In this paper, the key types of after-trial criticisms are considered and it is argu…Read more
    Despite its widespread use in science, the Neyman-Pearson Theory of Statistics (NPT) has been rejected as inadequate by most philosophers of induction and statistics. They base their rejection largely upon what the author refers to as after-trial criticisms of NPT. Such criticisms attempt to show that NPT fails to provide an adequate analysis of specific inferences after the trial is made, and the data is known. In this paper, the key types of after-trial criticisms are considered and it is argued that each fails to demonstrate the inadequacy of NPT because each is based on judging NPT on the grounds of a criterion that is fundamentally alien to NPT. As such, each may be seen to either misconstrue the aims of NPT, or to beg the question against it.
    Bayesian Reasoning
  •  348
    How everyone can have a rare property: Response to Sober on frequency-dependent causation
    Philosophy of Science 54 (2): 266-276. 1987.
    In a recent discussion note Sober (1985) elaborates on the argument given in Sober (1982) to show the inadequacy of Ronald Giere's (1979, 1980) causal model for cases of frequency-dependent causation, and denies that Giere's (1984) response avoids the problem he raises. I argue that frequency-dependent effects do not pose a problem for Giere's original causal model, and that all parties in this dispute have been guity of misinterpreting the counterfactual populations involved in applying Giere's…Read more
    In a recent discussion note Sober (1985) elaborates on the argument given in Sober (1982) to show the inadequacy of Ronald Giere's (1979, 1980) causal model for cases of frequency-dependent causation, and denies that Giere's (1984) response avoids the problem he raises. I argue that frequency-dependent effects do not pose a problem for Giere's original causal model, and that all parties in this dispute have been guity of misinterpreting the counterfactual populations involved in applying Giere's model
    Causal Reasoning, MiscCausation in Biology
  •  152
    Error statistical modeling and inference: Where methodology meets ontology
    with Aris Spanos
    Synthese 192 (11): 3533-3555. 2015.
    In empirical modeling, an important desiderata for deeming theoretical entities and processes as real is that they can be reproducible in a statistical sense. Current day crises regarding replicability in science intertwines with the question of how statistical methods link data to statistical and substantive theories and models. Different answers to this question have important methodological consequences for inference, which are intertwined with a contrast between the ontological commitments o…Read more
    In empirical modeling, an important desiderata for deeming theoretical entities and processes as real is that they can be reproducible in a statistical sense. Current day crises regarding replicability in science intertwines with the question of how statistical methods link data to statistical and substantive theories and models. Different answers to this question have important methodological consequences for inference, which are intertwined with a contrast between the ontological commitments of the two types of models. The key to untangling them is the realization that behind every substantive model there is a statistical model that pertains exclusively to the probabilistic assumptions imposed on the data. It is not that the methodology determines whether to be a realist about entities and processes in a substantive field. It is rather that the substantive and statistical models refer to different entities and processes, and therefore call for different criteria of adequacy.
    Probabilistic Frameworks
  •  176
    Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science (edited book)
    with Aris Spanos
    Cambridge University Press. 2009.
    Although both philosophers and scientists are interested in how to obtain reliable knowledge in the face of error, there is a gap between their perspectives that has been an obstacle to progress. By means of a series of exchanges between the editors and leaders from the philosophy of science, statistics and economics, this volume offers a cumulative introduction connecting problems of traditional philosophy of science to problems of inference in statistical and empirical modelling practice. Phil…Read more
    Although both philosophers and scientists are interested in how to obtain reliable knowledge in the face of error, there is a gap between their perspectives that has been an obstacle to progress. By means of a series of exchanges between the editors and leaders from the philosophy of science, statistics and economics, this volume offers a cumulative introduction connecting problems of traditional philosophy of science to problems of inference in statistical and empirical modelling practice. Philosophers of science and scientific practitioners are challenged to reevaluate the assumptions of their own theories - philosophical or methodological. Practitioners may better appreciate the foundational issues around which their questions revolve and thereby become better 'applied philosophers'. Conversely, new avenues emerge for finally solving recalcitrant philosophical problems of induction, explanation and theory testing.
    RationalityEmpirical Testing in EconomicsPhilosophy of StatisticsTheories and Models, MiscEvidence, …Read more
    RationalityEmpirical Testing in EconomicsPhilosophy of StatisticsTheories and Models, MiscEvidence, MiscFalsificationPhilosophy of Science, General WorksExperimentation in ScienceConfirmation, MiscScientific Method, Miscellaneous
  •  60
    Toward a More Objective Understanding of the Evidence of Carcinogenic Risk
    PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1988. 1988.
    I argue that although the judgments required to reach statistical risk assessments may reflect policy values, it does not follow that the task of evaluating whether a given risk assessment is warranted by the evidence need also be imbued with policy values. What has led many to conclude otherwise, I claim, stems from misuses of the statistical testing methods involved. I set out rules for interpreting what specific test results do and do not say about the extent of a given risk. By providing a m…Read more
    I argue that although the judgments required to reach statistical risk assessments may reflect policy values, it does not follow that the task of evaluating whether a given risk assessment is warranted by the evidence need also be imbued with policy values. What has led many to conclude otherwise, I claim, stems from misuses of the statistical testing methods involved. I set out rules for interpreting what specific test results do and do not say about the extent of a given risk. By providing a more objective understanding of the evidence, such rules help in adjudicating conflicting risk assessments. To illustrate, I consider the risk assessment conflict at the EPA concerning the carcinogenicity of formaldehyde.
    Science and ValuesEvolutionary Biology
  •  9
    An ad hoc save of a theory of adhocness? Exchanges with John Worrall
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. 2009.
    Scientific PracticeEvidence, MiscConfirmation, Misc
  •  227
    Philosophical Scrutiny of Evidence of Risks: From Bioethics to Bioevidence
    with Aris Spanos
    Philosophy of Science 73 (5): 803-816. 2006.
    We argue that a responsible analysis of today's evidence-based risk assessments and risk debates in biology demands a critical or metascientific scrutiny of the uncertainties, assumptions, and threats of error along the manifold steps in risk analysis. Without an accompanying methodological critique, neither sensitivity to social and ethical values, nor conceptual clarification alone, suffices. In this view, restricting the invitation for philosophical involvement to those wearing a "bioethicist…Read more
    We argue that a responsible analysis of today's evidence-based risk assessments and risk debates in biology demands a critical or metascientific scrutiny of the uncertainties, assumptions, and threats of error along the manifold steps in risk analysis. Without an accompanying methodological critique, neither sensitivity to social and ethical values, nor conceptual clarification alone, suffices. In this view, restricting the invitation for philosophical involvement to those wearing a "bioethicist" label precludes the vitally important role philosophers of science may be able to play as bioevidentialists. The goal of this paper is to give a brief and partial sketch of how a metascientific scrutiny of risk evidence might work.
    Medical EpistemologyBiomedical EthicsEvolutionary Biology
  •  325
    Models of group selection
    with Norman L. Gilinsky
    Philosophy of Science 54 (4): 515-538. 1987.
    The key problem in the controversy over group selection is that of defining a criterion of group selection that identifies a distinct causal process that is irreducible to the causal process of individual selection. We aim to clarify this problem and to formulate an adequate model of irreducible group selection. We distinguish two types of group selection models, labeling them type I and type II models. Type I models are invoked to explain differences among groups in their respective rates of pr…Read more
    The key problem in the controversy over group selection is that of defining a criterion of group selection that identifies a distinct causal process that is irreducible to the causal process of individual selection. We aim to clarify this problem and to formulate an adequate model of irreducible group selection. We distinguish two types of group selection models, labeling them type I and type II models. Type I models are invoked to explain differences among groups in their respective rates of production of contained individuals. Type II models are invoked to explain differences among groups in their respective rates of production of distinct new groups. Taking Elliott Sober's model as an exemplar, we argue that although type I models have some biological importance--they force biologists to consider the role of group properties in influencing the fitness of organisms--they fail to identify a distinct group-level causal selection process. Type II models if properly framed, however, do identify a group-level causal selection process that is not reducible to individual selection. We propose such a type II model and apply it to some of the major candidates for group selection
    Group Selection
  •  56
    Error and the growth of experimental knowledge
    International Studies in the Philosophy of Science 15 (1): 455-459. 1996.
    Science, Logic, and MathematicsConfirmation
  •  74
    Toward progressive critical rationalism : exchanges with Alan Musgrave
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. pp. 113. 2009.
    Popper: Critical Rationalism
  •  3
    Can scientific theories be warranted with severity? Exchanges with Alan Chalmers
    In Deborah G. Mayo & Aris Spanos (eds.), Error and Inference: Recent Exchanges on Experimental Reasoning, Reliability, and the Objectivity and Rationality of Science, Cambridge University Press. 2009.
    Scientific MetamethodologyScientific Method, MiscellaneousEvidence, MiscConfirmation, MiscFalsificat…Read more
    Scientific MetamethodologyScientific Method, MiscellaneousEvidence, MiscConfirmation, MiscFalsificationDecision Theory and Hypothesis Testing
  •  86
    Scientific Reasoning: The Bayesian Approach. Colin Howson, Peter Urbach
    Isis 82 (4): 788-789. 1991.
    Bayesian Reasoning, MiscConfirmation, MiscPhilosophy of Statistics
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