Tuesday 19 May 2015

BioMaths Colloquia - 22/05/2015

BioMaths Colloquium Series - 2014/15

22 May 2015 - 3pm Maths Seminar Room 

(room 224 Talbot Building 2nd floor)



Why are species distribution models so poor at prediction?

Prof Jason Matthiopoulos

from: imgkid.com

Ecologists and biomathematicians are increasingly asked to predict how individuals, populations, communities, or biodiversity and ecosystem characteristics will respond to environmental change ('ecological forecasting'). However, quite frequently the realized predictive ability is quite low, as often discussed (e.g. see here and here). Our BioMaths Colloquium speaker of this month, Prof Jason Matthiopolous from the Institute of Biodiversity, Animal Health and Comparative Medicine at Glasgow University, has addressed this topic since several years and will present us some potential solutions.

Jason is Professor of Spatial and Population Ecology and has a long-standing research interest in understanding and modelling how populations of organisms change in space and time. A key aim of this research, and the subject of this weeks colloquium seminar, is how to turn ecology into a predictive science (see here).


Abstract

Spatial ecology aims to understand where organisms are, why they are there, and where else they might be. This latter objective requires us to extrapolate species distributions to regions we have never observed, or forecast change in the future. Such predictive capabilities can only be attained given rich field data, constant environments, a deep understanding of the study species and suitable theoretical models. It is certainly frustrating (if not entirely unexpected) that despite the frequent violation of most of these requirements, the scientific literature is teeming with publications that attempt such predictions for important issues in conservation and wildlife resource management. 

I will present a brief review of existing theoretical approaches to the analysis of species distribution data and of the reasons why their predictions regularly fail. I will present recent work that successfully extends the predictive reach of these models and illustrate their application with both synthetic and real data, using telemetry from grey wolves (Canis lupus). 
dx.doi.org/10.1890/10-0751.1


Beyond these developments, I will examine the underlying reason why spatial ecology has yet to fulfil its original promise: Its inadvertent de-coupling from the other two cornerstones of ecology – population dynamics and evolution. 

I therefore propose a synthetic approach to these three fundamental areas and outline ways in which it can be achieved mathematically and estimated statistically. An interesting by-product of this approach is that it offers the potential to quantify from field data such chimeric concepts as the critical habitat and the carrying capacity.




The discussions will continue over biscuits and tea/coffee after the seminar. 
Hope to see many of you!

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