eprintid: 1431801
rev_number: 26
eprint_status: archive
userid: 608
dir: disk0/01/43/18/01
datestamp: 2014-06-09 19:14:09
lastmod: 2021-11-07 23:58:01
status_changed: 2016-01-15 11:10:09
type: article
metadata_visibility: show
item_issues_count: 0
creators_name: Ward, EJ
creators_name: Holmes, EE
creators_name: Thorson, JT
creators_name: Collen, B
title: Complexity is costly: A meta-analysis of parametric and non-parametric methods for short-term population forecasting
ispublished: pub
divisions: UCL
divisions: B02
divisions: C08
note: This is the peer reviewed version of the following article: Ward, EJ; Holmes, EE; Thorson, JT; Collen, B; (2014) Complexity is costly: A meta-analysis of parametric and non-parametric methods for short-term population forecasting. Oikos, 123 (6) 652 - 661, which has been published in final form at: http://dx.doi.org/10.1111/j.1600-0706.2014.00916.x. This article may be used for non-commercial purposes in accordance with Wiley Terms and Conditions for Self-Archiving (http://olabout.wiley.com/WileyCDA/Section/id-820227.html#terms).
abstract: Short-term forecasts based on time series of counts or survey data are widely used in population biology to provide advice concerning the management, harvest and conservation of natural populations. A common approach to produce these forecasts uses time-series models, of different types, fit to time series of counts. Similar time-series models are used in many other disciplines, however relative to the data available in these other disciplines, population data are often unusually short and noisy and models that perform well for data from other disciplines may not be appropriate for population data. In order to study the performance of time-series forecasting models for natural animal population data, we assembled 2379 time series of vertebrate population indices from actual surveys. Our data were comprised of three vastly different types: highly variable (marine fish productivity), strongly cyclic (adult salmon counts), and small variance but long-memory (bird and mammal counts). We tested the predictive performance of 49 different forecasting models grouped into three broad classes: autoregressive time-series models, non-linear regression-type models and non-parametric time-series models. Low-dimensional parametric autoregressive models gave the most accurate forecasts across a wide range of taxa; the most accurate model was one that simply treated the most recent observation as the forecast. More complex parametric and non-parametric models performed worse, except when applied to highly cyclic species. Across taxa, certain life history characteristics were correlated with lower forecast error; specifically, we found that better forecasts were correlated with attributes of slow growing species: large maximum age and size for fishes and high trophic level for birds. © 2014 Nordic Society Oikos.
date: 2014-06
official_url: http://dx.doi.org/10.1111/j.1600-0706.2014.00916.x
vfaculties: VFLS
oa_status: green
full_text_type: other
language: eng
primo: open
primo_central: open_green
verified: verified_manual
elements_source: Scopus
elements_id: 950459
doi: 10.1111/j.1600-0706.2014.00916.x
lyricists_name: Collen, Benjamin
lyricists_id: BCOLL39
full_text_status: public
publication: Oikos
volume: 123
number: 6
pagerange: 652 - 661
issn: 0030-1299
citation:        Ward, EJ;    Holmes, EE;    Thorson, JT;    Collen, B;      (2014)    Complexity is costly: A meta-analysis of parametric and non-parametric methods for short-term population forecasting.                   Oikos , 123  (6)   652 - 661.    10.1111/j.1600-0706.2014.00916.x <https://doi.org/10.1111/j.1600-0706.2014.00916.x>.       Green open access   
 
document_url: https://discovery.ucl.ac.uk/id/eprint/1431801/1/Collen_Ward%20etal%202014%20OIKOS%20Submitted.pdf