To see accurate pricing, please choose your delivery country.
 
 
United States
£ GBP
All Shops

British Wildlife

8 issues per year 84 pages per issue Subscription only

British Wildlife is the leading natural history magazine in the UK, providing essential reading for both enthusiast and professional naturalists and wildlife conservationists. Published eight times a year, British Wildlife bridges the gap between popular writing and scientific literature through a combination of long-form articles, regular columns and reports, book reviews and letters.

Subscriptions from £33 per year

Conservation Land Management

4 issues per year 44 pages per issue Subscription only

Conservation Land Management (CLM) is a quarterly magazine that is widely regarded as essential reading for all who are involved in land management for nature conservation, across the British Isles. CLM includes long-form articles, events listings, publication reviews, new product information and updates, reports of conferences and letters.

Subscriptions from £26 per year
Academic & Professional Books  Reference  Data Analysis & Modelling  Data Analysis & Statistics

The World of Zero-Inflated Models, Volume 3: Using Multivariate GLMM and GLLVM

Handbook / Manual Coming Soon
By: Alain F Zuur(Author), Elena N Ieno(Author)
illustrations
The World of Zero-Inflated Models, Volume 3: Using Multivariate GLMM and GLLVM
Click to have a closer look
  • The World of Zero-Inflated Models, Volume 3: Using Multivariate GLMM and GLLVM ISBN: 9781739963620 Paperback Nov 2024 Available for pre-order
    £145.00
    #265383
Price: £145.00
About this book Customer reviews Related titles

About this book

This is Volume 3 of the book series The World of Zero-Inflated Models. The central theme of this book is the multivariate extensions of generalised linear models (GLM) and generalised linear mixed-effects models (GLMM). Although this book is published under the umbrella of The World of Zero-Inflated Models, it also provides a good introduction to ordinary multivariate GLMM and GLLVM. It is published simultaneously with volume 2, which covers generalised linear mixed effects models (GLMMs) with dependency structures. The planned treatment of zero-inflated GAMMs is deferred to volume 4.

In volume 1 and volume 2, the authors analysed univariate response variables as a function of multiple covariates. In most chapters, the original datasets consisted of multiple response variables that were typically converted into a diversity index, such as species richness or total abundance, or put aside with the analyses focusing on one specific species or variable. However, in most of these datasets, the response variables are correlated. There are several reasons why response variables might be correlated beyond direct cause-effect relationships or mutually exclusive activities. Additional biologically relevant reasons can include:
- Shared underlying factors: Different response variables might be influenced by the same underlying environmental or biological factors. For instance, both feeding time and vigilance in caribou could be influenced by the availability of food and the presence of predators.
- Temporal or spatial proximity: Variables might be correlated due to occurring at the same time or in the same location. For example, if certain behaviours tend to happen during specific times of the day, variables measured during those times might show correlation.
- Biological constraints: Organisms often face biological limitations that cause correlations between different traits or behaviours. For instance, physiological needs might limit how much time an animal can spend on certain activities, creating correlations between them.
- Behavioural syndromes: Animals might exhibit consistent behaviour patterns across different contexts, known as behavioural syndromes. For example, an animal that is generally more active might spend more time both walking and feeding, leading to a positive correlation between these activities.
- Environmental conditions: Correlation can arise due to shared responses to environmental conditions. For example, during harsh weather, an animal might reduce overall activity, affecting multiple behaviours similarly.

Instead of applying multiple univariate GLMMs, this book discusses multivariate GLMMs for datasets with a relatively small number of response variables and generalised linear latent variable models (GLLVMs) for datasets with a relatively large number of response variables.

This volume continues the pagination and chapter numbering from volume 2, thus starting with chapter 18.

Customer Reviews

Handbook / Manual Coming Soon
By: Alain F Zuur(Author), Elena N Ieno(Author)
illustrations
Current promotions
New and Forthcoming BooksBest of WinterNHBS Moth TrapBuyers Guides