Multi‐disease classification model using deep neural network and Strassen's rectilinear fine‐tune bouncing training algorithm

Author:

Sarveshwaran Velliangiri1ORCID,Karthikeyan P.2,Premalatha J.3

Affiliation:

1. Department of Computational Intelligence SRM Institute of Science and Technology, Kattankulathur Campus Chennai India

2. Department of Computer Science and Information Engineering National Chung Cheng University Minxiong Taiwan

3. Department of Information Technology Kongu Engineering College Perundurai India

Abstract

AbstractA deep neural network (DNN) is being used in the healthcare industry to improve care delivery at a lower cost and in less time. A DNN is well‐known for its diagnostic applications. However, it is also increasingly being utilized to guide healthcare management decisions. DNNs have been applied to real‐life disease classification problems. The performances of DNN are improved by reducing the training time, performing fast classification, and improving the parameters such as accuracy and error rate, and so forth. We have proposed a hybrid DNN named Strassen's rectilinear fine‐tune bouncing training (SRFBT) Algorithm by combining Strassen's theorem and bouncing training algorithm. The simulation result shows that the SRFBT algorithm outperforms both the DNN, support vector machine, radial basis function network and deep belief network algorithms in terms of network training, testing time and accuracy on various UCI machine learning healthcare datasets. The SRFBT has improved performance with a minimum average training time of 43.6249 and a maximum accuracy of 96.86.

Publisher

Wiley

Subject

Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Control and Systems Engineering

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