A Comparative Analysis of Healthcare Sector Using Different Data mining Techniques
Keywords:
Data mining, Clustering, Classification, Regression, Health care Accuracy.Abstract
Data mining is a growing research area in various fields due to its boundless applications and limitless approaches to mine the data in target oriented manner. Data mining techniques have the capabilities to discover hidden patterns or relationships among the objects in the medical data. And it has an infinite potential to utilize healthcare data more efficiently to predict different kind of disease. This paper makes review and analysis of different techniques of data mining such as Clustering, Classification, Association and Regression used in health care sector. And also highlights applications, challenges and future work of Data Mining in healthcare.
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