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Inference in Statistical Modelling and Machine Learning: A Concise Introduction [Kõva köide]

(University of Galway), (University of Portsmouth)
  • Formaat: Hardback, 323 pages, Worked examples or Exercises
  • Ilmumisaeg: 31-May-2026
  • Kirjastus: Cambridge University Press
  • ISBN-10: 1009630687
  • ISBN-13: 9781009630689
Teised raamatud teemal:
  • Kõva köide
  • Hind: 138,00 €
  • See raamat ei ole veel ilmunud. Raamatu kohalejõudmiseks kulub orienteeruvalt 3-4 nädalat peale raamatu väljaandmist.
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  • Tasuta tarne
  • Tellimisaeg 2-4 nädalat
  • Lisa soovinimekirja
  • Formaat: Hardback, 323 pages, Worked examples or Exercises
  • Ilmumisaeg: 31-May-2026
  • Kirjastus: Cambridge University Press
  • ISBN-10: 1009630687
  • ISBN-13: 9781009630689
Teised raamatud teemal:
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.

Arvustused

'Burridge and Tosh provide an accessible but detailed introduction to probability, model fitting, and machine learning. Filled with offbeat examples, this is essential reading for anyone aspiring to work in data science, artificial intelligence, or indeed any branch of experimental science or engineering.' Simon J. D. Prince, University of Bath

Muu info

A concise introduction to core ideas in statistical modelling and machine learning, preparing you to progress to more advanced techniques.
1. Orientation;
2. Supervised learning warm-up;
3. Unsupervised learning
warm-up;
4. Interlude: probability, likelihood and Bayes;
5. Probabilistic
modelling;
6. Frequentist and Bayesian uncertainty;
7. Frequentist linear
regression;
8. Directed graphical models;
9. Bayesian linear regression,
priors, and regularisation;
10. Bayesian methods;
11. Classification;
12.
Unsupervised learning: a deeper dive;
13. Neural networks and deep learning;
14. Expanding the toolkit; A. Probability theory; B. Linear algebra; C.
Jensen's and Gibbs' inequalities; References; Index.
James Burridge is Professor of Probability and Statistical Physics at the University of Portsmouth, where he teaches probability, stochastic processes and statistical learning. He models language, birdsong, rocks, tessellations and games, and develops commercial applications of machine learning in green technology. Nick Tosh is Lecturer in Philosophy at the University of Galway. He has published on methodological disputes in the history of science and on the interpretation of probability. Until 2024, he coordinated Galway's Arts with Data Science BA.
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