Abstract

Properties of psychological variables at the mean or variance level can differ between persons and within persons across multiple time points. For example, cross-sectional findings between persons of different ages do not necessarily reflect the development of a single person over time. Recently, there has been an increased interest in the difference between covariance structures, expressed by covariance matrices, that evolve between persons and within a single person over multiple time points. If these structures are identical at the population level, the structure is called ergodic. However, recent data confirms that ergodicity is not generally given, particularly not for cognitive variables. For example, the g factor that is dominant for cognitive abilities between persons seems to explain far less variance when concentrating on a single person’s data. However, other subdimensions of cognitive abilities seem to appear both between and within persons; that is, there seems to be a lower-dimensional subspace of cognitive abilities in which cognitive abilities are in fact ergodic. In this article, we present ergodic subspace analysis (ESA), a mathematical method to identify, for a given set of variables, which subspace is most important within persons, which is most important between person, and which is ergodic. Similar to the common spatial patterns method, the ESA method first whitens a joint distribution from both the between and the within variance structure and then performs a principle component analysis (PCA) on the between distribution, which then automatically acts as an inverse PCA on the within distribution. The difference of the eigenvalues allows a separation of the rotated dimensions into the three subspaces corresponding to within, between, and ergodic substructures. We apply the method to simulated data and to data from the COGITO study to exemplify its usage.

Highlights

  • Ergodicity in the behavioral sciences describes how the interrelation seen between some variables between persons is the same within a person

  • We first manually calculate a very simple example to demonstrate the mathematics and perform a number of simulations using the backend of the graphical structural equation modeling (SEM) program Onyx

  • The standard error of the ergodicity value reduces with larger ergodicity, which means that researchers are more likely to find values close to zero if the data are fully ergodic than to find values close to one if one factor is only present between participants

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Summary

Introduction

Ergodicity (see Petersen 1983 for the first use of the term; for a more general discussion in the behavioral sciences, see Molenaar 2004) in the behavioral sciences describes how the interrelation seen between some variables between persons is the same within a person. It can be assumed that the variables are positively related between persons because of inter-individually different availability of this resource. Consider the task of writing a text on a typewriter quickly and accurately Since both require similar cognitive resources, it can be expected that a person who is a very fast typist will at the same time be more accurate. Methods to identify the degree of ergodicity in a given set of variables are scarce, and in particular regarding the parts of the data in which ergodicity is present and in which it is not This problem can be seen analogously to a dimension-reduction problem: Even though a dataset is initially high-dimensional, sometimes only a small number of dimensions are necessary to describe what is considered important for some analyses. The opposite holds for factors on the third group: Here, predictions from variables with high loadings can be made over time, but not between different participants

Definition of Ergodicity
Ergodic Subspace Analysis
Performance in Artificial Situations
Manual Computational Example
Larger-Scale Computational Example
Simulation 1
Simulation 2
Simulation 3
Application to COGITO Data
Discussion
Full Text
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