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Dichotomous Radial Basis Tanimoto Network to Predict Delivery Mode in Maternal Care Domain

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  • Kavitha Kannan

    (Sri Vidya Mandir Arts and Science College, India)

  • Balasubramanian Thangavel

    (Sri Vidya Mandir Arts and Science College, India)

Abstract

Pregnancy delivery mode prediction is an important one for doctors to provide timely treatment. Some research works have been developed for pregnancy delivery mode prediction using machine learning techniques. But the accuracy of prediction was not improved with less time. In order to perform accurate delivery prediction, dichotomous radial basis Tanimoto network prediction (DRBTNP) method is proposed to enhance the process of pregnancy delivery mode prediction with higher accuracy. The proposed DRBTNP method comprises different types of layers for performing delivery mode prediction with less time and space utilization. Experimental evaluation is performed with different factors such as prediction accuracy, prediction time, and space utilization with respect to patient data. The observed result shows that the presented DRBTNP method increases the prediction accuracy up to 9% with the reduction of prediction time and space utilization up to 20% and 19% over the state-of-the-art methods.

Suggested Citation

  • Kavitha Kannan & Balasubramanian Thangavel, 2021. "Dichotomous Radial Basis Tanimoto Network to Predict Delivery Mode in Maternal Care Domain," International Journal of Information Communication Technologies and Human Development (IJICTHD), IGI Global, vol. 13(4), pages 92-104, October.
  • Handle: RePEc:igg:jicthd:v:13:y:2021:i:4:p:92-104
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