• Corpus ID: 53332203

Comparison of Classification Algorithms in Lung Cancer Risk Factor Analysis

@inproceedings{Kirubha2017ComparisonOC,
  title={Comparison of Classification Algorithms in Lung Cancer Risk Factor Analysis},
  author={V. Kirubha and S. Manju Priya},
  year={2017}
}
Lung Cancer kills nearly 1.59 million people per year. Lung cancer is one of the most common causes of mortality in the world. Data Mining discovers new patterns from huge datasets consisting of heterogeneous and high voluminous data. Due to the knowledge mining aspect of data mining, diverse fields uses data mining techniques. Data Mining has great potential in healthcare filed. Lung cancer is one of the hilarious diseases, in which data mining techniques aids better results in early detection… 

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