Introduction to Statistical Modelling and Inference Introduction to Statistical Modelling and Inference

Introduction to Statistical Modelling and Inference

    • 97,99 €
    • 97,99 €

Description de l’éditeur

The complexity of large-scale data sets (“Big Data”) has stimulated the development of advanced
computational methods for analysing them. There are two different kinds of methods to aid this. The
model-based method uses probability models and likelihood and Bayesian theory, while the model-free
method does not require a probability model, likelihood or Bayesian theory. These two approaches
are based on different philosophical principles of probability theory, espoused by the famous
statisticians Ronald Fisher and Jerzy Neyman.
Introduction to Statistical Modelling and Inference covers simple experimental and survey designs,
and probability models up to and including generalised linear (regression) models and some
extensions of these, including finite mixtures. A wide range of examples from different application
fields are also discussed and analysed. No special software is used, beyond that needed for maximum
likelihood analysis of generalised linear models. Students are expected to have a basic
mathematical background in algebra, coordinate geometry and calculus.
Features
• Probability models are developed from the shape of the sample empirical cumulative distribution
function (cdf) or a transformation of it.
• Bounds for the value of the population cumulative distribution function are obtained from the
Beta distribution at each point of the empirical cdf.
• Bayes’s theorem is developed from the properties of the screening test for a rare condition.
• The multinomial distribution provides an always-true model for any randomly sampled data.
• The model-free bootstrap method for finding the precision of a sample estimate has a model-based
parallel – the Bayesian bootstrap – based on the always-true multinomial distribution.
• The Bayesian posterior distributions of model parameters can be obtained from the maximum
likelihood analysis of the model.

This book is aimed at students in a wide range of disciplines including Data Science. The book is
based on the model-based theory, used widely by scientists in many fields, and compares it, in less
detail, with the model-free theory, popular in computer science, machine learning and official
survey analysis. The development of the model-based theory is accelerated by recent developments
in Bayesian analysis.

GENRE
Science et nature
SORTIE
2022
30 septembre
LANGUE
EN
Anglais
LONGUEUR
390
Pages
ÉDITIONS
CRC Press
TAILLE
23,8
Mo

Plus de livres similaires

Bayesian Inference Bayesian Inference
2009
Bayesian Statistical Methods Bayesian Statistical Methods
2019
Bayesian Regression Modeling with INLA Bayesian Regression Modeling with INLA
2018
Confidence, Likelihood, Probability Confidence, Likelihood, Probability
2016
Statistical Data Fusion Statistical Data Fusion
2017
A Course in Categorical Data Analysis A Course in Categorical Data Analysis
2020

Plus de livres par Murray Aitkin