Running Head: Mixture Modeling
@inproceedings{Morin2017RunningHM, title={Running Head: Mixture Modeling}, author={A. Morin and J. Wang}, year={2017} }
This chapter provides a non-technical introduction to mixture modeling for sport and exercise sciences researchers. Although this method has been around for quite some time, it is still underutilized in sport and exercise research. The data set used for this illustration consists of a sample of 10,000 students who annually completed physical fitness tests for 7 years in Singapore. First, we illustrate latent profile analyses (LPA). Next, we illustrate how to include covariates in LPA and how to… CONTINUE READING
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