Numbers of approaches of data mining are being used by various researchers in healthcare sector

Authors

  • Dustine Burnet Vanderbilt University, Nashville, United States

Keywords:

Costumer, Healthcare sector, Researchers, Disease, Human effort

Abstract

This research will help summarize all the techniques used in health care along with their accuracy level. In this, we understand the application of data mining in the health care sector to extract useful information to predict disease using data mining applications is a difficult task. Several approaches to data mining are being used by various researchers in the healthcare sector, so the number of techniques in this field is increasing.  It helps to significantly reduce the human effort and increase diagnosis accuracy can develop the style of data mining to reduce cost and time constraints in terms of resources and human expertise. This paper has been presented to demonstrate how a certain application challenge can be addressed with the help of the valuable tool of data mining.

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Published

2019-06-18

How to Cite

Burnet, D. (2019). Numbers of approaches of data mining are being used by various researchers in healthcare sector. Tennessee Research International of Social Sciences, 1(1), 1–11. Retrieved from http://triss.org/index.php/journal/article/view/3

Issue

Section

Research Articles