Guideline of Data Mining Technique in Healthcare Application
Journal Title: International Journal of Advanced Research in Computer Engineering & Technology(IJARCET) - Year 2013, Vol 2, Issue 4
Abstract
In today’s world, healthcare is the most important factor affecting human life. The management of health care database is the most challenging subject of this era. For this the data mining has been used intensively and extensively by many organizations which are related to healthcare. In healthcare, the need of data mining is increasing rapidly. There are various algorithms of data mining used on healthcare databases. This paper presents an overview on different types of data mining algorithms like K-means and D-stream algorithm, also a comparative study on these data mining algorithms. From that study we found the effectiveness and limitations of these data mining algorithms.
Authors and Affiliations
Mr. Swapnil D. Raut , Prof. Avinash Wadhe
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