Please use this identifier to cite or link to this item: https://dspace.iiti.ac.in/handle/123456789/4871
Title: Minimum variance-embedded deep kernel regularized least squares method for one-class classification and its applications to biomedical data
Authors: Gautam, Chandan
Mishra, Pratik K.
Tiwari, Aruna
Richhariya, Bharat
Tanveer, M.
Keywords: Anomaly detection;Benchmarking;Deep learning;Embeddings;Image segmentation;Least squares approximations;Magnetic resonance imaging;Medical imaging;Neurodegenerative diseases;Alzheimer's disease;Breast Cancer;Generalization capability;Kernel learning;Multi-class classification;One-class Classification;Regularized least squares;State-of-the-art methods;Classification (of information);Alzheimer disease;Article;benchmarking;breast cancer;cancer classification;classification;classifier;clinical article;controlled study;deep learning;histopathology;human;least square analysis;nuclear magnetic resonance imaging;priority journal;scoring system;support vector machine;variance
Issue Date: 2020
Publisher: Elsevier Ltd
Citation: Gautam, C., Mishra, P. K., Tiwari, A., Richhariya, B., Pandey, H. M., Wang, S., & Tanveer, M. (2020). Minimum variance-embedded deep kernel regularized least squares method for one-class classification and its applications to biomedical data. Neural Networks, 123, 191-216. doi:10.1016/j.neunet.2019.12.001
Abstract: Deep kernel learning has been well explored for multi-class classification tasks; however, relatively less work is done for one-class classification (OCC). OCC needs samples from only one class to train the model. Most recently, kernel regularized least squares (KRL) method-based deep architecture is developed for the OCC task. This paper introduces a novel extension of this method by embedding minimum variance information within this architecture. This embedding improves the generalization capability of the classifier by reducing the intra-class variance. In contrast to traditional deep learning methods, this method can effectively work with small-size datasets. We conduct a comprehensive set of experiments on 18 benchmark datasets (13 biomedical and 5 other datasets) to demonstrate the performance of the proposed classifier. We compare the results with 16 state-of-the-art one-class classifiers. Further, we also test our method for 2 real-world biomedical datasets viz.; detection of Alzheimer's disease from structural magnetic resonance imaging data and detection of breast cancer from histopathological images. Proposed method exhibits more than 5% F1 score compared to existing state-of-the-art methods for various biomedical benchmark datasets. This makes it viable for application in biomedical fields where relatively less amount of data is available. © 2019 Elsevier Ltd
URI: https://doi.org/10.1016/j.neunet.2019.12.001
https://dspace.iiti.ac.in/handle/123456789/4871
ISSN: 0893-6080
Type of Material: Journal Article
Appears in Collections:Department of Computer Science and Engineering

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