Linear scalar-on-surface random effects regression models |
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Authors: | Wei Wang Zhuo Fang |
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Affiliation: | 1. Department of Surgical Outcomes and Analysis, Kaiser Permanente, San Diego, CA, USA;2. School of Psychology, University of Ottawa, Ottawa, ON, Canada |
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Abstract: | Many research fields increasingly involve analyzing data of a complex structure. Models investigating the dependence of a response on a predictor have moved beyond the ordinary scalar-on-vector regression. We propose a regression model for a scalar response and a surface (or a bivariate function) predictor. The predictor has a random component and the regression model falls in the framework of linear random effects models. We estimate the model parameters via maximizing the log-likelihood with the ECME (Expectation/Conditional Maximization Either) algorithm. We use the approach to analyze a data set where the response is the neuroticism score and the predictor is the resting-state brain function image. In the simulations we tried, the approach has better performance than two other approaches, a functional principal component regression approach and a smooth scalar-on-image regression approach. |
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Keywords: | Bivariate functional data mixed effects random effects surface smoothing |
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