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Inference in Statistical Modelling and Machine Learning|James Burridge

Inference in Statistical Modelling and Machine Learning : A Concise Introduction

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Overview

Statistical modelling and machine learning offer a vast toolbox of inference methods with which to model the world, discover patterns and reach beyond the data to make predictions when the truth is not certain. This concise book provides a clear introduction to those tools and to the core ideas - probabilistic model, likelihood, prior, posterior, overfitting, underfitting, cross-validation - that unify them. Toy and real examples illustrate diverse applications ranging from biomedical data to treasure hunts, while the accompanying datasets and computational notebooks in R and Python encourage hands-on learning. Instructors can benefit from online lecture slides and solutions to all the exercises. Requiring only first-year university-level knowledge of calculus, probability and linear algebra, the book equips students in statistics, data science and machine learning, as well as those in quantitative applied and social science programmes, with the tools and conceptual foundations to explore more advanced techniques.

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Details

  • ISBN-13: 9781009630726
  • ISBN-10: 1009630725
  • Publisher: Cambridge University Press
  • Publish Date: May 2026
  • Page Count: 323

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