Python implementation of EM algorithm for GMM. And visualization for 2D case.
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Updated
Apr 24, 2023 - Jupyter Notebook
Python implementation of EM algorithm for GMM. And visualization for 2D case.
Course Material for Artificial Intelligence and Machine Learning - Unit 2 @ Computer Science Dept, Sapienza
MS Yang, A robust EM clustering algorithm for Gaussian mixture models, Pattern Recognit., 45 (2012), pp. 3950-3961
This repository is for sharing the scripts of EM algorithm and variational bayes.
Gaussian Mixture Model for Clustering
Model-based clustering based on parameterized finite Gaussian mixture models. Models are estimated by EM algorithm initialized by hierarchical model-based agglomerative clustering. The optimal model is then selected according to BIC.
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