Thinking About Statistics

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A01=Jun Otsuka
Author_Jun Otsuka
Bayesian Statistics
Binomial Distribution
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Causal Graph
causal inference theory
Coin Toss
Counterfactual Model
Data Generating Process
Deep Learning Models
Deep Neural Network
Epistemic Agent
epistemic justification
Epistemic Virtue
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Inductive Inference
Internalist Epistemology
machine learning philosophy
Natural Kinds
Non-informative Prior
Null Hypothesis
ontological assumptions
philosophy of science
Posterior Distribution
Posterior Predictive Distribution
Prior Distribution
Probability Models
Regression Model
Regularity Theory
Sample Space
scientific methodology
statistical epistemology foundations
Structural Causal Models
Virtue Epistemology

Product details

  • ISBN 9781032326108
  • Weight: 453g
  • Dimensions: 152 x 229mm
  • Publication Date: 19 Jan 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Simply stated, this book bridges the gap between statistics and philosophy. It does this by delineating the conceptual cores of various statistical methodologies (Bayesian/frequentist statistics, model selection, machine learning, causal inference, etc.) and drawing out their philosophical implications. Portraying statistical inference as an epistemic endeavor to justify hypotheses about a probabilistic model of a given empirical problem, the book explains the role of ontological, semantic, and epistemological assumptions that make such inductive inference possible. From this perspective, various statistical methodologies are characterized by their epistemological nature: Bayesian statistics by internalist epistemology, classical statistics by externalist epistemology, model selection by pragmatist epistemology, and deep learning by virtue epistemology.

Another highlight of the book is its analysis of the ontological assumptions that underpin statistical reasoning, such as the uniformity of nature, natural kinds, real patterns, possible worlds, causal structures, etc. Moreover, recent developments in deep learning indicate that machines are carving out their own "ontology" (representations) from data, and better understanding this—a key objective of the book—is crucial for improving these machines’ performance and intelligibility.

Key Features

  • Without assuming any prior knowledge of statistics, discusses philosophical aspects of traditional as well as cutting-edge statistical methodologies.
  • Draws parallels between various methods of statistics and philosophical epistemology, revealing previously ignored connections between the two disciplines.
  • Written for students, researchers, and professionals in a wide range of fields, including philosophy, biology, medicine, statistics and other social sciences, and business.
  • Originally published in Japanese with widespread success, has been translated into English by the author.

Jun Otsuka is Associate Professor of Philosophy at Kyoto University and a visiting researcher at the RIKEN Center for Advanced Intelligence Project in Saitama, Japan. He is the author of The Role of Mathematics in Evolutionary Theory (Cambridge UP, 2019).

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