>
Fa   |   Ar   |   En
   sparse, robust and discriminative representation by supervised regularized auto-encoder  
   
نویسنده farajian nima ,adibi peyman
منبع international journal of information and communication technology research - 2019 - دوره : 11 - شماره : 2 - صفحه:29 -37
چکیده    Recent researches have determined that regularized auto-encoders can provide a good representation of data which improves the performance of data classification. these type of auto-encoders provides a representation of data that has some degree of sparsity and is robust against variation of data to extract useful information and reveal the underlying structure of data. the present study aimed to propose a novel approach to generate sparse, robust, and discriminative features through supervised regularized auto-encoders, in which unlike most existing auto-encoders, the data labels are used during feature extraction to improve discrimination of the representation and also, the sparsity ratio of the representation is completely adaptive with data distribution. results reveal that this method has better performance in comparison to other regularized auto-encoders regarding data classification
کلیدواژه component; supervised auto-encoder ,feature learning ,discriminative representation ,manifold
آدرس university of kashan, faculty of computer and electrical engineering, department of computer engineering, iran, university of isfahan, computer engineering faculty, artificial intelligence department, iran
پست الکترونیکی adibi@eng.ui.ac.ir
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved