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A1028
Title: A semi-parametric multidimensional and longitudinal item response model with mixed data type Authors:  Thomas Chan - Hong Kong University of Science and Technology (Hong Kong) [presenting]
Mike So - The Hong Kong University of Science and Technology (Hong Kong)
Amanda Chu - The Education University of Hong Kong (China)
Abstract: A semi-parametric multidimensional and longitudinal item response model with mixed data types is studied. The semi-parametric model consists of a non-parametric item characteristic curve and a parametric performance measurement. The combination of these two parts takes the balance between model flexibility and interpretability. The multidimensional model measures multiple features observed from the data. The longitudinal model captures the changes of respondents throughout the study. When the dataset is large, multiple types of data are often involved. The estimation process is also computationally inefficient. Variational Bayes searches for the best distribution from a pre-assigned family to approximate the complex posterior distribution. The aim is at an efficient solution while maintaining accuracy via variational Bayes. An application of this model is considered, and the performance on estimation with variational Bayes is demonstrated.