Title
Cost Sensitive Learning of Deep Feature Representations from Imbalanced Data
Abstract
Class imbalance is a common problem in the case of real-world object detection and classification tasks. Data of some classes is abundant making them an over-represented majority, and data of other classes is scarce, making them an under-represented minority. This imbalance makes it challenging for a classifier to appropriately learn the discriminating boundaries of the majority and minority classes. In this work, we propose a cost sensitive deep neural network which can automatically learn robust feature representations for both the majority and minority classes. During training, our learning procedure jointly optimizes the class dependent costs and the neural network parameters. The proposed approach is applicable to both binary and multi-class problems without any modification. Moreover, as opposed to data level approaches, we do not alter the original data distribution which results in a lower computational cost during the training process. We report the results of our experiments on six major image classification datasets and show that the proposed approach significantly outperforms the baseline algorithms. Comparisons with popular data sampling techniques and cost sensitive classifiers demonstrate the superior performance of our proposed method.
Year
Venue
Field
2015
CoRR
Object detection,Pattern recognition,Computer science,Artificial intelligence,Contextual image classification,Artificial neural network,Data sampling,Classifier (linguistics),Machine learning,Binary number
DocType
Volume
Citations 
Journal
abs/1508.03422
32
PageRank 
References 
Authors
1.00
42
4
Name
Order
Citations
PageRank
Salman Khan138741.05
M. Bennamoun23197167.23
ferdous sohel3321.00
Roberto Togneri481448.33