Density estimation, which estimates the distribution of data, is an important
category of probabilistic machine learning. A family of density estimators is
mixture models, such as Gaussian Mixture Model (GMM) by expectation
maximization. Another family of density estimators is the generative models
which generate data from input latent variables. One of the generative models
is the Masked Autoregressive Flow (MAF) which makes use of normalizing flows
and autoregressive networks. In this paper, we use the density estimators for
classification, although they are often used for estimating the distribution of
data. We model the likelihood of classes of data by density estimation,
specifically using GMM and MAF. The proposed classifiers outperform simpler
classifiers such as linear discriminant analysis which model the likelihood
using only a single Gaussian distribution. This work opens the research door
for proposing other probabilistic classifiers based on joint density
estimation.
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Details
Title
Probabilistic Classification by Density Estimation Using Gaussian Mixture Model and Masked Autoregressive Flow
Creators
Benyamin Ghojogh
Milad Amir Toutounchian
Publication Details
arXiv.org
Resource Type
Preprint
Language
English
Academic Unit
Information Science (Informatics)
Other Identifier
991021862312604721
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