Maximum Likelihood
Maximum likelihood estimation (MLE) is a fundamental statistical method for estimating the parameters of a probability distribution by maximizing the likelihood of observing the data. Current research focuses on improving MLE's efficiency and robustness, particularly in high-dimensional settings and for complex models like mixture models and latent variable models, often employing techniques like score matching, variational inference, and novel optimization algorithms (e.g., particle swarm optimization, Dykstra-like splitting). These advancements address computational challenges and improve the accuracy and applicability of MLE across diverse fields, from machine learning and signal processing to psychometrics and spatial statistics.
Papers
Quotient Normalized Maximum Likelihood Criterion for Learning Bayesian Network Structures
Tomi Silander, Janne Leppä-aho, Elias Jääsaari, Teemu Roos
Correntropy-Based Improper Likelihood Model for Robust Electrophysiological Source Imaging
Yuanhao Li, Badong Chen, Zhongxu Hu, Keita Suzuki, Wenjun Bai, Yasuharu Koike, Okito Yamashita