Keyword search (4,163 papers available)

"inference" Keyword-tagged Publications:

Title Authors PubMed ID
1 Exploiting fluctuations in gene expression to detect causal interactions between genes Joly-Smith E; Talpur MM; Allard P; Papazotos F; Potvin-Trottier L; Hilfinger A; 41401079
BIOLOGY
2 Deep clustering analysis via variational autoencoder with Gamma mixture latent embeddings Guo J; Fan W; Amayri M; Bouguila N; 39662201
ENCS
3 A Survey on Error Exponents in Distributed Hypothesis Testing: Connections with Information Theory, Interpretations, and Applications Espinosa S; Silva JF; Céspedes S; 39056958
ENCS
4 Development and performance assessment of a new opensource Bayesian inference R platform for building energy model calibration Hou D; Zhan D; Wang L; Hassan IG; Sezer N; 37936825
ENCS
5 The Convergence Model of Brain Reward Circuitry: Implications for Relief of Treatment-Resistant Depression by Deep-Brain Stimulation of the Medial Forebrain Bundle Pallikaras V; Shizgal P; 35431828
PSYCHOLOGY
6 Anterior cingulate neurons signal neutral cue pairings during sensory preconditioning Hart EE; Gardner MPH; Schoenbaum G; 34936884
PSYCHOLOGY
7 Bayesian Learning of Shifted-Scaled Dirichlet Mixture Models and Its Application to Early COVID-19 Detection in Chest X-ray Images Bourouis S; Alharbi A; Bouguila N; 34460578
ENCS
8 Exploring the decentralized treatment of sulfamethoxazole-contained poultry wastewater through vertical-flow multi-soil-layering systems in rural communities. Song P, Huang G, An C, Xin X, Zhang P, Chen X, Ren S, Xu Z, Yang X 33065414
ENCS
9 BENIN: Biologically enhanced network inference. Wonkap SK, Butler G 32698722
ENCS
10 Adaptive Neuro-fuzzy Inference System Trained for Sizing Semi-elliptical Notches Scanned by Eddy Currents. Mohseni E, Viens M, Xie WF 31929668
ENCS

 

Title:Deep clustering analysis via variational autoencoder with Gamma mixture latent embeddings
Authors:Guo JFan WAmayri MBouguila N
Link:https://pubmed.ncbi.nlm.nih.gov/39662201/
DOI:10.1016/j.neunet.2024.106979
Publication:Neural networks : the official journal of the International Neural Network Society
Keywords:ClusteringData augmentationGamma mixture modelsVAEVariational inference
PMID:39662201 Category: Date Added:2024-12-12
Dept Affiliation: ENCS
1 CIISE, Concordia University, Montreal, H3G 1T7, QC, Canada. Electronic address: g_jiax@encs.concordia.ca.
2 Guangdong Provincial Key Laboratory IRADS and Department of Computer Science, Beijing Normal University-Hong Kong Baptist University United International College, Zhuhai, Guangdong, China. Electronic address: wentaofan@uic.edu.cn.
3 CIISE, Concordia University, Montreal, H3G 1T7, QC, Canada. Electronic address: manar.amayri@concordia.ca.
4 CIISE, Concordia University, Montreal, H3G 1T7, QC, Canada. Electronic address: nizar.bouguila@concordia.ca.

Description:

This article proposes a novel deep clustering model based on the variational autoencoder (VAE), named GamMM-VAE, which can learn latent representations of training data for clustering in an unsupervised manner. Most existing VAE-based deep clustering methods use the Gaussian mixture model (GMM) as a prior on the latent space. We employ a more flexible asymmetric Gamma mixture model to achieve higher quality embeddings of the data latent space. Second, since the Gamma is defined for strictly positive variables, in order to exploit the reparameterization trick of VAE, we propose a transformation method from Gaussian distribution to Gamma distribution. This method can also be considered a Gamma distribution reparameterization trick, allows gradients to be backpropagated through the sampling process in the VAE. Finally, we derive the evidence lower bound (ELBO) based on the Gamma mixture model in an effective way for the stochastic gradient variational Bayesian (SGVB) estimator to optimize the proposed model. ELBO, a variational inference objective, ensures the maximization of the approximation of the posterior distribution, while SGVB is a method used to perform efficient inference and learning in VAEs. We validate the effectiveness of our model through quantitative comparisons with other state-of-the-art deep clustering models on six benchmark datasets. Moreover, due to the generative nature of VAEs, the proposed model can generate highly realistic samples of specific classes without supervised information.





BookR developed by Sriram Narayanan
for the Concordia University School of Health
Copyright © 2011-2026
Cookie settings
Concordia University