Quantitative Research Methods in Chaos and Complexity: From Probability to Post Hoc Regression Analyses
Author(s) -
Donald L. Gilstrap
Publication year - 2013
Publication title -
complicity an international journal of complexity and education
Language(s) - English
Resource type - Journals
ISSN - 1710-5668
DOI - 10.29173/cmplct20400
Subject(s) - collinearity , computer science , chaos (operating system) , quantitative research , markov chain , econometrics , management science , statistical physics , mathematics , machine learning , statistics , sociology , social science , economics , physics , computer security
In addition to qualitative methods presented in chaos and complexity theories in educational research, this article addresses quantitative methods that may show potential for future research studies. Although much in the social and behavioral sciences literature has focused on computer simulations, this article explores current chaos and complexity methods that have the potential to bridge the divide between qualitative and quantitative, as well as theoretical and applied, human research studies. These methods include multiple linear regression, nonlinear regression, stochastics, Monte Carlo methods, Markov Chains, and Lyapunov exponents. A postulate for post hoc regression analysis is then presented as an example of an emergent, recursive, and iterative quantitative method when dealing with interaction effects and collinearity among variables. This postulate also highlights the power of both qualitative and quantitative chaos and complexity theories in order to observe and describe both the micro and macro levels of systemic emergence.
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