Categorical data become increasingly ubiquitous in the modern big data era. In this dissertation, we propose novel statistical learning and inference methods for large-scale categorical data, focusing on latent variable models and their applications to psychometrics. In psychometric assessments, the subjects' underlying aptitude often cannot be fully captured by raw scores due to differing item difficulties. Latent variable models, are popularly used to capture this unobserved proficiency. This dissertation studies two types of latent variable models with categorical responses. The first type assumes multiple discrete latent traits, commonly known as cognitive diagnosis models (CDMs), a special family of discrete latent variable models. Th...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
Categorical data become increasingly ubiquitous in the modern big data era. In this dissertation, w...
Latent variable models are popularly used in unsupervised learning to uncover the latent structures ...
Latent variable models are popularly used in unsupervised learning to uncover the latent structures ...
Latent variable models play an important role in educational and psychological measurement, where it...
Latent variable models play an important role in psychological and educational measurement, which at...
To analyze the fairness of an educational system of a country and to help with development of pedago...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...
In modern psychological and biomedical research with diagnostic purposes, scientists often formulate...
In recent years, cognitive diagnosis models (CDMs) have sparked the interest of educational measurem...
Chapter 2: In learning environments, understanding the longitudinal path of learning is one of the m...
Multidimensional item response theory (MIRT) models use data from individual item responses to estim...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
Categorical data become increasingly ubiquitous in the modern big data era. In this dissertation, w...
Latent variable models are popularly used in unsupervised learning to uncover the latent structures ...
Latent variable models are popularly used in unsupervised learning to uncover the latent structures ...
Latent variable models play an important role in educational and psychological measurement, where it...
Latent variable models play an important role in psychological and educational measurement, which at...
To analyze the fairness of an educational system of a country and to help with development of pedago...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...
In modern psychological and biomedical research with diagnostic purposes, scientists often formulate...
In recent years, cognitive diagnosis models (CDMs) have sparked the interest of educational measurem...
Chapter 2: In learning environments, understanding the longitudinal path of learning is one of the m...
Multidimensional item response theory (MIRT) models use data from individual item responses to estim...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian f...