The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data

In accordance with the theme of this special issue, we present a model that indirectly discovers symmetries and asymmetries between past and present assessments within continuous sequences. More specifically, we present an alternative use of a latent variable version of the Mixture Transition Distri...

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Main Authors: Zhivko Taushanov, Paolo Ghisletta
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Symmetry
Subjects:
GMM
Online Access:https://www.mdpi.com/2073-8994/12/10/1618
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spelling doaj-3ea803ccd292462e9b5672be5938b3ea2020-11-25T02:49:02ZengMDPI AGSymmetry2073-89942020-09-01121618161810.3390/sym12101618The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills DataZhivko Taushanov0Paolo Ghisletta1Faculty of Psychology and Educational Sciences, University of Geneva, 1205 Geneva, SwitzerlandFaculty of Psychology and Educational Sciences, University of Geneva, 1205 Geneva, SwitzerlandIn accordance with the theme of this special issue, we present a model that indirectly discovers symmetries and asymmetries between past and present assessments within continuous sequences. More specifically, we present an alternative use of a latent variable version of the Mixture Transition Distribution (MTD) model, which allows for clustering of continuous longitudinal data, called the Hidden MTD (HMTD) model. We compare the HMTD and its clustering performance to the popular Growth Mixture Model (GMM), as well as to the recently introduced GMM based on individual case residuals (ICR-GMM). The GMM and the ICR-GMM contrast with HMTD, because they are based on an explicit change function describing the individual sequences on the dependent variable (here, we implement a non-linear exponential change function). This paper has three objectives. First, it introduces the HMTD. Second, we present the GMM and the ICR-GMM and compare them to the HMTD. Finally, we apply the three models and comment on how the conclusions differ depending on the clustering model, when using a specific dataset in psychology, which is characterized by a small number of sequences (n = 102), but that are relatively long (for the domains of psychology and social sciences: t = 20). We use data from a learning experiment, in which healthy adults (19–80 years old) were asked to perform a perceptual–motor skills over 20 trials.https://www.mdpi.com/2073-8994/12/10/1618Longitudinal dataclusteringHMTDresidual-based clusteringGMMMixture Transition Distribution
collection DOAJ
language English
format Article
sources DOAJ
author Zhivko Taushanov
Paolo Ghisletta
spellingShingle Zhivko Taushanov
Paolo Ghisletta
The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data
Symmetry
Longitudinal data
clustering
HMTD
residual-based clustering
GMM
Mixture Transition Distribution
author_facet Zhivko Taushanov
Paolo Ghisletta
author_sort Zhivko Taushanov
title The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data
title_short The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data
title_full The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data
title_fullStr The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data
title_full_unstemmed The Use of a Hidden Mixture Transition Distribution Model in Clustering Few but Long Continuous Sequences: An Illustration with Cognitive Skills Data
title_sort use of a hidden mixture transition distribution model in clustering few but long continuous sequences: an illustration with cognitive skills data
publisher MDPI AG
series Symmetry
issn 2073-8994
publishDate 2020-09-01
description In accordance with the theme of this special issue, we present a model that indirectly discovers symmetries and asymmetries between past and present assessments within continuous sequences. More specifically, we present an alternative use of a latent variable version of the Mixture Transition Distribution (MTD) model, which allows for clustering of continuous longitudinal data, called the Hidden MTD (HMTD) model. We compare the HMTD and its clustering performance to the popular Growth Mixture Model (GMM), as well as to the recently introduced GMM based on individual case residuals (ICR-GMM). The GMM and the ICR-GMM contrast with HMTD, because they are based on an explicit change function describing the individual sequences on the dependent variable (here, we implement a non-linear exponential change function). This paper has three objectives. First, it introduces the HMTD. Second, we present the GMM and the ICR-GMM and compare them to the HMTD. Finally, we apply the three models and comment on how the conclusions differ depending on the clustering model, when using a specific dataset in psychology, which is characterized by a small number of sequences (n = 102), but that are relatively long (for the domains of psychology and social sciences: t = 20). We use data from a learning experiment, in which healthy adults (19–80 years old) were asked to perform a perceptual–motor skills over 20 trials.
topic Longitudinal data
clustering
HMTD
residual-based clustering
GMM
Mixture Transition Distribution
url https://www.mdpi.com/2073-8994/12/10/1618
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