Model-based analysis of latent factors

<p>The detection of community or population structure through analysis of explicit cause–effect modeling of given observations has received considerable attention. The complexity of the task is mirrored by the large number of existing approaches and methods, the applicability of which heav...

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Main Author: H.-R. Gregorius
Format: Article
Language:English
Published: Copernicus Publications 2018-11-01
Series:Web Ecology
Online Access:https://www.web-ecol.net/18/153/2018/we-18-153-2018.pdf
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spelling doaj-fb13c41ecd6d4e00b8502f2b2b545d9d2020-11-25T02:02:48ZengCopernicus PublicationsWeb Ecology2193-30811399-11832018-11-011815316210.5194/we-18-153-2018Model-based analysis of latent factorsH.-R. Gregorius0H.-R. Gregorius1Institut für Populations- und ökologische Genetik, Am Pfingstanger 58, 37075 Göttingen, Germany Abteilung Forstgenetik und Forstpflanzenzüchtung, Universität Göttingen, Büsgenweg 2, 37077 Göttingen, Germany<p>The detection of community or population structure through analysis of explicit cause–effect modeling of given observations has received considerable attention. The complexity of the task is mirrored by the large number of existing approaches and methods, the applicability of which heavily depends on the design of efficient algorithms of data analysis. It is occasionally even difficult to disentangle concepts and algorithms. To add more clarity to this situation, the present paper focuses on elaborating the system analytic framework that probably encompasses most of the common concepts and approaches by classifying them as model-based analyses of latent factors. Problems concerning the efficiency of algorithms are not of primary concern here. In essence, the framework suggests an input–output model system in which the inputs are provided as latent model parameters and the output is specified by the observations. There are two types of model involved, one of which organizes the inputs by assigning combinations of potentially interacting factor levels to each observed object, while the other specifies the mechanisms by which these combinations are processed to yield the observations. It is demonstrated briefly how some of the most popular methods (Structure, BAPS, Geneland) fit into the framework and how they differ conceptually from each other. Attention is drawn to the need to formulate and assess qualification criteria by which the validity of the model can be judged. One probably indispensable criterion concerns the cause–effect character of the model-based approach and suggests that measures of association between assignments of factor levels and observations be considered together with maximization of their likelihoods (or posterior probabilities). In particular the likelihood criterion is difficult to realize with commonly used estimates based on Markov chain Monte Carlo (MCMC) algorithms. Generally applicable MCMC-based alternatives that allow for approximate employment of the primary qualification criterion and the implied model validation including further descriptors of model characteristics are suggested.</p>https://www.web-ecol.net/18/153/2018/we-18-153-2018.pdf
collection DOAJ
language English
format Article
sources DOAJ
author H.-R. Gregorius
H.-R. Gregorius
spellingShingle H.-R. Gregorius
H.-R. Gregorius
Model-based analysis of latent factors
Web Ecology
author_facet H.-R. Gregorius
H.-R. Gregorius
author_sort H.-R. Gregorius
title Model-based analysis of latent factors
title_short Model-based analysis of latent factors
title_full Model-based analysis of latent factors
title_fullStr Model-based analysis of latent factors
title_full_unstemmed Model-based analysis of latent factors
title_sort model-based analysis of latent factors
publisher Copernicus Publications
series Web Ecology
issn 2193-3081
1399-1183
publishDate 2018-11-01
description <p>The detection of community or population structure through analysis of explicit cause–effect modeling of given observations has received considerable attention. The complexity of the task is mirrored by the large number of existing approaches and methods, the applicability of which heavily depends on the design of efficient algorithms of data analysis. It is occasionally even difficult to disentangle concepts and algorithms. To add more clarity to this situation, the present paper focuses on elaborating the system analytic framework that probably encompasses most of the common concepts and approaches by classifying them as model-based analyses of latent factors. Problems concerning the efficiency of algorithms are not of primary concern here. In essence, the framework suggests an input–output model system in which the inputs are provided as latent model parameters and the output is specified by the observations. There are two types of model involved, one of which organizes the inputs by assigning combinations of potentially interacting factor levels to each observed object, while the other specifies the mechanisms by which these combinations are processed to yield the observations. It is demonstrated briefly how some of the most popular methods (Structure, BAPS, Geneland) fit into the framework and how they differ conceptually from each other. Attention is drawn to the need to formulate and assess qualification criteria by which the validity of the model can be judged. One probably indispensable criterion concerns the cause–effect character of the model-based approach and suggests that measures of association between assignments of factor levels and observations be considered together with maximization of their likelihoods (or posterior probabilities). In particular the likelihood criterion is difficult to realize with commonly used estimates based on Markov chain Monte Carlo (MCMC) algorithms. Generally applicable MCMC-based alternatives that allow for approximate employment of the primary qualification criterion and the implied model validation including further descriptors of model characteristics are suggested.</p>
url https://www.web-ecol.net/18/153/2018/we-18-153-2018.pdf
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