A PREDICTION MODEL FOR THE PATIENTS’ ADMISSIONS WITH MACHINE LEARNING

Authors

  • N.Jagannadha Rao Author
  • Y. Ramesh Kumar Author
  • S. Lakshmi Aparna Author
  • Pothumudi Manasa Author
  • Srikanth Kosaraju Author

Keywords:

PREDICTION, ADMISSIONS, MACHINE LEARNING, PREDICTION MODEL

Abstract

people will face many problems in Hospitals while taking Admission. If it is in a popular hospital, they should wait hours together to take just admission. But it is not at all good at Emergency Department. Veryserious cases will admit in Emergency Department. So, we need to use more innovation technique to ameliorate patient flow and prevent Overflowing. So, data mining techniques will show us a pleasant method to predict the ED Admissions. Here we Analyzed an algorithm for predicting models i.e., Naive Bayes, Random Forests, Support Vector Machine. For the prediction we should identify a handful of factors associated to Hospital admission including age, gender, systolic pressure, diastolic pressure, diabetes, previous records in the preceding month or year, admission. We also say about the algorithms which we used in detail. We use Random Forests algorithm for classifying the data into categories for improving the accuracy of prediction. Naive Bayes is used to identify the probabilities for each attribute and helpsin predicting the outcome. Support Vector machine is used to classify the given input particular category which helps in predicting the outcome.

Downloads

Download data is not yet available.

Downloads

Published

16-04-2017

How to Cite

A PREDICTION MODEL FOR THE PATIENTS’ ADMISSIONS WITH MACHINE LEARNING. (2017). International Journal of Information Technology and Computer Engineering, 5(2), 38-48. https://ijitce.org/index.php/ijitce/article/view/44