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Mishra et al., 2018 - Google Patents

An improved and adaptive attribute selection technique to optimize dengue fever prediction

Mishra et al., 2018

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Document ID
564295240749999792
Author
Mishra S
Tripathy H
Panda A
Publication year
Publication venue
Int J Eng Technol

External Links

Snippet

Clinical information mining is rapidly gaining popularity. Restorative information are high dimensional in nature which contains unessential elements that diminish prediction capability. Hence Attribute Optimization is required to retain only the essential features while …
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