Risk Analysis of Disease Detection based on DRF algorithm

Risk Analysis of Disease Detection based on DRF algorithm

EnglishPaperback / softbackPrint on demand
B., Gomathy
LAP Lambert Academic Publishing
EAN: 9786202066846
Print on demand
Delivery on Friday, 14. of August 2026
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Detailed information

Data mining is the process of extracting interesting (non-trivial, implicit, previously unknown and potentially useful) information or patterns from large information repositories such as relational database, data warehouses, XML repository, etc.The detection of most daunting diseases in the earlier stage consistently maximizes the survival rate of the patients. Research work is being activated abundantly for the consistent data analysis to diagnose these threatening ailments by exploiting contrary data mining algorithms. An automatic algorithm for determining frightening diseases for any given dataset is elicited using association rules named Discriminative Rule Framing(DRF).The DRF algorithm predicts the survivability of the disease. The DRF algorithm utilizes feature selection for the effective prediction of risk level in a given dataset. In DRF, association rules are used for dimensionality reduction.
EAN 9786202066846
ISBN 6202066849
Binding Paperback / softback
Publisher LAP Lambert Academic Publishing
Pages 52
Language English
Dimensions 220 x 150
Authors A., Shamnugam; B., Gomathy; S. M., Ramesh
Manufacturer information
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