Applied Bayesian modelling for ecologists and epidemiologists (ABME) 

Delivered by Dr. Matt Denwood and Prof. Jason Matthiopoulos

http://prstatistics.com/course/applied-bayesian-modelling-for-ecologists-
and-epidemiologists-abme/

This 6 day course will run from 26th – 31st October 2015 at SCENE field 
station, Loch Lomond national park, Scotland.

This application-driven course will provide a founding in the basic theory 
& practice of Bayesian statistics, with a focus on MCMC modeling for 
ecological & epidemiological problems.
Starting from a refresher on probability & likelihood, the course will take 
students all the way to cutting-edge applications such as state-space 
population modeling & spatial point-process modeling. By the end of the 
week, you should have a basic understanding of how common MCMC samplers 
work and how to program them, and have practical experience with the BUGS 
language for common ecological and epidemiological models.  The experience 
gained will be a sufficient foundation enabling you to understand current 
papers using Bayesian methods, carry out simple Bayesian analyses on your 
own data and springboard into more elaborate applications such as 
dynamical, spatial and hierarchical modeling.

Ciourse contentis as follows

Day 1
•       Revision of likelihoods using full likelihood profiles and an 
introduction to the theory of Bayesian statistics.
o       Probability and likelihood
o       Conditional, joint and total probability, independence, Baye’s law
o       Probability distributions
o       Uniform, Bernoulli, Binomial, Poisson, Gamma, Beta and Normal 
distributions – their range, parameters and common usesoLikelihood and 
parameter estimation by maximum likelihood
o       Numerical likelihood profiles and maximum likelihood
•       Introduction to Bayesian statistics
o       Relationship between prior, likelihood & posterior distributions 
o       Summarising a posterior distribution; The philosophical differences 
between frequentist & Bayesian statistics, & the practical implications of 
these
o       Applying Bayes’ theorem to discrete & continuous data for common 
data types given different priors
o       Building a posterior profile for a given dataset, & compare the 
effect of different priors for the same data

Day 2
•       An introduction to the workings of mcmc, and the potential dangers 
of mcmc inference.  Participants will program their own (basic) mcmc 
sampler to illustrate the concepts and fully understand the strengths and 
weaknesses of the general approach.  The day will end with an introduction 
to the bugs language.
o       Introduction to MCMC.
o       The curse of dimensionality & the advantages of MCMC sampling to 
determine a posterior distribution.
o       Monte Carlo integration, standard error, & summarising samples from 
posterior distributions in R .
o       Writing a Metropolis algorithm & generating a posterior 
distribution for a simple problem using MCMC.
o       Markov chains, autocorrelation & convergence. 
o       Definition of a Markov chain.
o       Autocorrelation, effective sample size and Monte Carlo error.
o       The concept of a stationary distribution and burning.
o       Requirement for convergence diagnostics, and common statistics for 
assessing convergence.
o       Adapting an existing Metropolis algorithm to use two chains, & 
assessing the effect of the sampling distribution on the autocorrelation.
o       Introduction to BUGS & running simple models in JAGS.
o       Introduction to the BUGS language & how a BUGS model is translated 
to an MCMC sampler during compilation.
o       The difference between deterministic & stochastic nodes, & the 
contribution of priors & the likelihood.
o       Running, extending & interpreting the output of simple JAGS models 
from within R using the runjags interface.

Day 3
•       This day will focus on the common models for which jags/bugs would 
be used in practice, with examples given for different types of model 
code.  All aspects of writing, running, assessing and interpreting these 
models will be extensively discussed so that participants are able and 
confident to run similar models on their own.  There will be a particularly 
heavy focus on practical sessions during this day.  The day will finish 
with a discussion of how to assess the fit of mcmc models using the 
deviance information criterion (dic) and other methods.
o       Using JAGS for common problems in biology.
o       Understanding and generating code for basic generalised linear 
mixed models in JAGS.
o       Syntax for quadratic terms and interaction terms in JAGS.
o       Essential fitting tips and model selection.
o       The need for minimal cross-correlation and independence between 
parameters and how to design a model with these properties.
o       The practical methods and implications of minimizing Monte Carlo 
error and autocorrelation, including thinning.
o       Interpreting the DIC for nested models, and understanding the 
limitations of how this is calculated.
o       Other methods of model selection and where these might be more 
useful than DIC.
o       Most commonly used methods Rationale and use for fixed threshold, 
ABGD, K/theta, PTP, GMYC with computer practicals. 
o       Other methods, Haplowebs, bGMYC, etc. with computer practicals

Day 4
•       Day 4 will focus on the flexibility of mcmc, and precautions 
required for using mcmc to model commonly encountered datasets.  An 
introduction to conjugate priors and the potential benefits of exploiting 
gibbs sampling will be given. More complex types of models such as 
hierarchical models, latent class models, mixture models and state space 
models will be introduced and discussed.  The practical sessions will 
follow on from day 3.
o       General guidance for model specification.
o       The flexibility of the BUGS language and MCMC methods.
o       The difference between informative and diffuse priors.
o       Conjugate priors and how they can be used.
o       Gibbs sampling.
o       State space models.
o       Hierarchical and state space models.
o       Latent class and mixture models.
o       Conceptual application to animal movement.
o       Hands-on application to population biology.
o       Conceptual application to epidemiology

Day 5
•       Day 5 will give some additional practical guidance for the use of 
Bayesian methods in practice, and finish with a brief overview of more 
advanced Bayesian tools such as inla and stan.
o       Additional Bayesian methods.
o       Understand the usefulness of conjugate priors for robust analysis 
of proportions (Binomial and Multinomial data).
o       Be aware of some methods of prior elicitation.
o       Advanced Bayesian tools.
o       Strengths and weaknesses of Integrated Nested Laplace Approximation 
(INLA) compared to BUGS.
o       Strengths and weaknesses of Stan compared to BUGS

Day 6
•       Round table discussions and problem solving with final Q and A 
round table discussion and problem solving with final Q and A.
o       The final day will consist of round table discussions, the class 
will be split in to smaller groups to discuss set topics/problems. This 
will include participants own data where possible. After an early lunch 
there will be a general question and answer time until approx. 2pm as a 
whole group before transport to Balloch train station.

There will be a 15 minute morning coffee break, an hour for lunch, and a15 
minute afternoon coffee break. We keep the timing of these flexible 
depending how the course advances. Breakfast is from 08:00-08:45 and dinner 
is at 18:00 each day.

Please email any inquiries to [email protected] or visit our 
website www.prstatistics.com

Please feel free to distribute this material anywhere you feel is suitable
Upcoming courses - email for details [email protected]
1.      ADVANCES IN SPATIAL ANALYSIS OF MULTIVARIATE ECOLOGICAL DATA (July)
2.      INTRODUCTION TO BIOINFORMATICS USING LINUX (August)
3.      GENETIC DATA ANALYSIS / EXPLORATION USING R (August)
4.      INTRODUCTION TO BAYESIAN HIERARCHICAL MODELLING (August)
5.      INTRODUCTION TO PYTHON FOR BIOLOGISTS (October)
6.      LANDSCAPE GENETIC DATA ANALYSIS USING R (October)
7.      PHYLOGENETIC DATA ANALYSIS USING R (OctobeR/November)
8.      SPATIAL ANALYSIS OF ECOLOGIC AL DATA USING R (November)
9.      ADVANCING IN STATISTICAL MODELLING USING R (December) 
10.     MODEL BASED MULTIVARIATE ANALYSIS OF ECOLOGICAL DATA USING R 
(January)
11.     ADVANCED PYTHON FOR BIOLOGISTS (February)
12.     NETWORK ANALYSIS FOR ECOLOGISTS USING R (March)
13.     INTRODUCTION TO GEOMETRIC MORPHOMETRICS USING R (June)

Dates still to be confirmed - email for details 
[email protected]
•       STABLE ISOTOPE MIXING MODELS USING SIAR, SIBER AND MIXSIAR USING R
•       INTRODUCTION TO R AND STATISTICS FOR BIOLOGISTS
•       BIOINFORMATICS FOR GENETICISTS AND BIOLOGISTS

Oliver Hooker
PR Statistics

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