Keyword search (4,163 papers available)

"Guo J" Authored Publications:

Title Authors PubMed ID
1 Capacitive bimetallic redox cycles and ligand-to-metal charge transfer to Boost denitrification with Ni sup II /sup /Fe sup II /sup -Gallic acid phenolic networks Yu S; Jin Y; Guo T; Li H; Liu W; Chen Z; Wang X; Guo J; 41707775
ENCS
2 Spatio-temporal distribution of AOD and its response to regional energy consumption and air pollution factors in China Su Y; Chen X; Guo J; Yang A; 41308902
ENCS
3 Pseudocapacitive MXene@Fe-TA ternary mediator enhances denitrification via optimized electron transfer and microbial regulation in wastewater treatment Pan S; Wang X; Guo T; An H; Guo Y; Chen Z; Lian J; Guo J; 41043789
ENCS
4 Engineered iron-sulfur carriers for efficient mixotrophic and sulfur autotrophic denitrification in low carbon to nitrogen ratio municipal wastewater: Mechanisms of biofilm enhancement and electron transfer promotion Yu S; Zhang X; Guo T; Li H; Liu W; Chen Z; Wang X; Ren B; Guo J; 40712941
ENCS
5 Deep clustering analysis via variational autoencoder with Gamma mixture latent embeddings Guo J; Fan W; Amayri M; Bouguila N; 39662201
ENCS
6 Study on the mechanism of regulating micromolar Fe utilization and promoting denitrification by guanosine monophosphate (GMP) based multi-signal functional material Hematin@Fe/GMP Hao Y; Guo T; Li H; Liu W; Chen Z; Wang X; Guo J; 39657473
ENCS
7 Amorphous Cu/Fe nanoparticles with tandem intracellular and extracellular electron capacity for enhancing denitrification performance and recovery of co-contaminant suppressed denitrification Fu J; Guo T; Li H; Liu W; Chen Z; Wang X; Guo J; 39542060
ENCS
8 Fe/GMP functional nanomaterial enhancing the denitrification efficiency by bi-signal regulation: Electron transfer and microbial community Hao Y; Guo T; Li H; Liu W; Chen Z; Zhang W; Wang X; Guo J; 39326537
ENCS
9 Corrigendum to "Te(IV) bioreduction in the sulfur autotrophic reactor: Performance, kinetics and synergistic mechanism" He Y; Guo J; Song Y; Chen Z; Lu C; Han Y; Li H; Hou Y; 35623146
ENCS
10 Te(IV) bioreduction in the sulfur autotrophic reactor: Performance, kinetics and synergistic mechanism He Y; Guo J; Song Y; Chen Z; Lu C; Han Y; Li H; Hou Y; 35228038
ENCS
11 Bioinspired facilitation of intrinsically conductive polymers: Mediating intra/extracellular electron transfer and microbial metabolism in denitrification Guo T; Lu C; Chen Z; Song Y; Li H; Han Y; Hou Y; Zhong Y; Guo J; 35124084
ENCS
12 Multifaceted synergistic electron transfer mechanism for enhancing denitrification by clay minerals Zhang Y; Lu C; Chen Z; Song Y; Li H; Han Y; Hou Y; Guo J; 34915014
ENCS
13 Perchlorate bioreduction in UASB reactor: S2--autotrophic granular sludge formation and sulfate generation control Zhao R; Tao H; Song Y; Guo J; Chen Z; Lu C; Han Y; Li H; Hou Y; 34180772
ENCS
14 The effect of step-feeding distribution ratio on high concentration perchlorate removal performance in ABR system with heterotrophic combined sulfur autotrophic process. Li H, Li K, Guo J, Chen Z, Han Y, Song Y, Lu C, Hou Y, Zhang D, Zhang Y 33485237
ENCS
15 Acceleration mechanism of bioavailable Fe(Ⅲ) on Te(IV) bioreduction of Shewanella oneidensis MR-1: Promotion of electron generation, electron transfer and energy level. He Y, Guo J, Song Y, Chen Z, Lu C, Han Y, Li H, Hou Y, Zhao R 32853890
ENCS
16 Transcriptomic analysis suggests the inhibition of DNA damage repair in green alga Raphidocelis subcapitata exposed to roxithromycin. Guo J, Bai Y, Chen Z, Mo J, Li Q, Sun H, Zhang Q 32505758
CHEMISTRY
17 Effect and ameliorative mechanisms of polyoxometalates on the denitrification under sulfonamide antibiotics stress. Guo H, Chen Z, Lu C, Guo J, Li H, Song Y, Han Y, Hou Y 32145698
ENCS
18 Effect of dissolved oxygen on simultaneous removal of ammonia, nitrate and phosphorus via biological aerated filter with sulfur and pyrite as composite fillers. Li Y, Guo J, Li H, Song Y, Chen Z, Lu C, Han Y, Hou Y 31704601
ENCS
19 Enhanced denitrification performance and biocatalysis mechanisms of polyoxometalates as environmentally-friendly inorganic redox mediators. Guo H, Chen Z, Guo J, Lu C, Song Y, Han Y, Li H, Hou Y 31344631
ENCS
20 Rapid of cultivation dissimilatory perchlorate reducing granular sludge and characterization of the granulation process. Yin P, Guo J, Xiao S, Chen Z, Song Y, Ren X 30640020
ENCS
21 A combined heterotrophic and sulfur-based autotrophic process to reduce high concentration perchlorate via anaerobic baffled reactors: Performance advantages of a step-feeding strategy. Li K, Guo J, Li H, Han Y, Chen Z, Song Y, Xing Y, Zhang C 30738356
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.





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