Buch, Englisch, 488 Seiten, Format (B × H): 156 mm x 234 mm
Reihe: Chapman and Hall/CRC Series on Statistics in Business and Economics
Buch, Englisch, 488 Seiten, Format (B × H): 156 mm x 234 mm
Reihe: Chapman and Hall/CRC Series on Statistics in Business and Economics
ISBN: 978-1-032-91525-8
Verlag: Taylor & Francis Ltd
This book delves into scalable Bayesian statistical methods designed to tackle the challenges posed by big data. It explores a variety of divide-and-conquer and subsampling techniques, seamlessly integrating these scalable methods into a broad spectrum of econometric models.
In addition to its focus on big data, the book introduces novel concepts within traditional statistics, such as the summation, subtraction, and multiplication of conjugate distributions. These arithmetic operators conceptualize pseudo data in the conjugate prior, sufficient statistics that determine the likelihood, and the posterior as a balance between data and prior information, adding an intriguing dimension to Bayesian analysis. This book also offers a deep dive into Bayesian computation. Given the intricacies of floating-point representation of real numbers, computer programs can sometimes yield unexpected or theoretically impossible results. Drawing from his experience as a senior statistical software developer, the author shares valuable strategies for designing numerically stable algorithms.
The book is an essential resource for a diverse audience: graduate students seeking foundational knowledge in Bayesian econometric models, early-career statisticians eager to explore cutting-edge advancements in scalable Bayesian methods, data analysts struggling with out-of-memory challenges in large datasets, and statistical software users and developers striving to program with efficiency and numerical stability.
Zielgruppe
Academic
Autoren/Hrsg.
Weitere Infos & Material
Preface 1. Linear Regressions 2. Markov Chain Monte Carlo Methods 3. Shrinkage and Variable Selection 4. Correlation, Heteroscedasticity and Non-Gaussian Regressions 5. Limited Dependent Variable Models 6. Linear State Space Models 7. Nonlinear State Space Models 8. Applications of State Space Models Bibliography Index