Invariant Representation Learning for Robust Far-Field Speaker Recognition

2021 ◽  
pp. 97-110
Author(s):  
Aviad Shtrosberg ◽  
Jesus Villalba ◽  
Najim Dehak ◽  
Azaria Cohen ◽  
Bar Ben-Yair
Author(s):  
Ladislav Mošner ◽  
Oldřich Plchot ◽  
Pavel Matějka ◽  
Ondřej Novotný ◽  
Jan Černocký

2021 ◽  
Author(s):  
Cao Truong Tran ◽  
Dinh Tan Nguyen ◽  
Ho Tan Hoang

2021 ◽  
Author(s):  
Yingxin Cao ◽  
Laiyi Fu ◽  
Jie Wu ◽  
Qinke Peng ◽  
Qing Nie ◽  
...  

AbstractMotivationSingle-cell sequencing assay for transposase-accessible chromatin (scATAC-seq) provides new opportunities to dissect epigenomic heterogeneity and elucidate transcriptional regulatory mechanisms. However, computational modelling of scATAC-seq data is challenging due to its high dimension, extreme sparsity, complex dependencies, and high sensitivity to confounding factors from various sources.ResultsHere we propose a new deep generative model framework, named SAILER, for analysing scATAC-seq data. SAILER aims to learn a low-dimensional nonlinear latent representation of each cell that defines its intrinsic chromatin state, invariant to extrinsic confounding factors like read depth and batch effects. SAILER adopts the conventional encoder-decoder framework to learn the latent representation but imposes additional constraints to ensure the independence of the learned representations from the confounding factors. Experimental results on both simulated and real scATAC-seq datasets demonstrate that SAILER learns better and biologically more meaningful representations of cells than other methods. Its noise-free cell embeddings bring in significant benefits in downstream analyses: Clustering and imputation based on SAILER result in 6.9% and 18.5% improvements over existing methods, respectively. Moreover, because no matrix factorization is involved, SAILER can easily scale to process millions of cells. We implemented SAILER into a software package, freely available to all for large-scale scATAC-seq data analysis.AvailabilityThe software is publicly available at https://github.com/uci-cbcl/[email protected] and [email protected]


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