Skip to product information
Sale
  • Vendor: Mia Karts

Data Mining Feature Subset Weighting and Selection Using Genetic Algorithms

$26.92 USD
$21.54 USD
 per 
Just 1 left. Order soon!

Free U.S. shipping on all orders. Free international shipping on orders over $99

All orders are dispatched the next business day!

Competitive Pricing You Can Trust — Quality You Can Rely On.

Guaranteed safe checkout

Product description

ISBN: 128828165X

Author: Yilmaz, Okan

Condition: New

We present a simple genetic algorithm (sGA), which is developed under Genetic Rule and Classifier Construction Environment (GRaCCE) to solve feature subset selection and weighting problem to have better classification accuracy on k-nearest neighborhood (KNN) algorithm. Our hypotheses are that weighting the features will affect the performance of the KNN algorithm and will cause better classification accuracy rate than that of binary classification. The weighted-sGA algorithm uses real-value chromosomes to find the weights for features and binary-sGA uses integer-value chromosomes to select the subset of features from original feature set. Since we use real-value chromosomes for weighted-sGA, instead of using standard crossover and mutation operators, these GRaCCE sGA operators are modified to adjust them to the feature subset selection and weighting problem.

View full details

Data Mining Feature Subset Weighting and Selection Using Genetic Algorithms

$26.92 USD
$21.54 USD
 per 
RECENTLY VIEWED PRODUCTS

Free same-day delivery

Free shipping - no code needed, just head for checkout!

Repeat delivery

Repeat delivery with 5% OFF every order.

Curbside pickup

Order online, drive up, check in & pick up.