TY - BOOK AU - Phil Gregory TI - Bayesian logical data analysis for the physical sciences: : a comparative approach with mathematica® support SN - 9780521841504 AV - QA279.5 PY - 2005///] CY - Cambridge, U.K. PB - Cambridge University Press KW - Statistics and probability N1 - 1 - Role of probability theory in science 2 - Probability theory as extended logic 3 - The how-to of Bayesian inference 4 - Assigning probabilities 5 - Frequentist statistical inference 6 - What is a statistic? 7 - Frequentist hypothesis testing 8 - Maximum entropy probabilities 9 - Bayesian inference with Gaussian errors 10 - Linear model fitting (Gaussian errors) 11 - Nonlinear model fitting 12 - Markov chain Monte Carlo 13 - Bayesian revolution in spectral analysis 14 - Bayesian inference with Poisson sampling N2 - Bayesian inference provides a simple and unified approach to data analysis, allowing experimenters to assign probabilities to competing hypotheses of interest, on the basis of the current state of knowledge. By incorporating relevant prior information, it can sometimes improve model parameter estimates by many orders of magnitude. This book provides a clear exposition of the underlying concepts with many worked examples and problem sets. It also discusses implementation, including an introduction to Markov chain Monte-Carlo integration and linear and nonlinear model fitting. Particularly extensive coverage of spectral analysis (detecting and measuring periodic signals) includes a self-contained introduction to Fourier and discrete Fourier methods. There is a chapter devoted to Bayesian inference with Poisson sampling, and three chapters on frequentist methods help to bridge the gap between the frequentist and Bayesian approaches. Supporting Mathematica® notebooks with solutions to selected problems, additional worked examples, and a Mathematica tutorial are available at www.cambridge.org/9780521150125.---Provided by publisher UR - https://assets.cambridge.org/97805218/41504/toc/9780521841504_toc.pdf ER -