The k-nearest neighbor (KNN) algorithm is vulnerable to noise, which is rooted in the dataset and has negative effects on its accuracy. Hence, various researchers employ variable minimization techniques before predicting the KNN in the quest so as to improve its predictive capability. The genetic algorithm (GA) is the most widely used metaheuristics for such purpose; however, the GA suffers a problem that its mating scheme is bounded on its crossover operator. Thus, the use of the novel inversed bi-segmented average crossover (IBAX) is observed. In the present work, the crossover improved genetic algorithm (CIGAL) is instrumental in the enhancement of KNN’s prediction accuracy. The use of the unmodified genetic algorithm has removed 13 vari...
We present a simple genetic algorithm (sGA), which is developed under Genetic Rule and Classifier Co...
5siThis work starts from the empirical observation that k nearest neighbours (KNN) consistently outp...
The k-means problem and the algorithm of the same name are the most commonly used clustering model a...
Abstract- Genetic algorithms are powerful tools for k-nearest neighbors classifier optimization. Whi...
The traditional K-nearest neighbor (KNN) algorithm uses an exhaustive search for a complete training...
Computer assisted medical diagnosis is a major machine learning problem being researched recently. G...
A Dissertation submitted to the Department of Computer Science and Engineering for the MSc in Comput...
Of a number of ML (Machine Learning) algorithms, k-nearest neighbour (KNN) is among the most common ...
Nearest neighborhood classifier (kNN) is most widely used in pattern recognition applications. Depen...
Genetic algorithms are powerful tools for k-nearest neigh-bors classification. Traditional knn class...
<p>Illustration of our extension to the KNN algorithm that integrates genomic features. The algorith...
The traditional K-nearest neighbor (KNN) algorithm uses an exhaustive search for a complete training...
The goal of classification is to develop a model that can be used to accurately assign new observati...
The goal of classification is to develop a model that can be used to accurately assign new observati...
Data mining involves the discovery and fusion of features from large databases to establish minimal ...
We present a simple genetic algorithm (sGA), which is developed under Genetic Rule and Classifier Co...
5siThis work starts from the empirical observation that k nearest neighbours (KNN) consistently outp...
The k-means problem and the algorithm of the same name are the most commonly used clustering model a...
Abstract- Genetic algorithms are powerful tools for k-nearest neighbors classifier optimization. Whi...
The traditional K-nearest neighbor (KNN) algorithm uses an exhaustive search for a complete training...
Computer assisted medical diagnosis is a major machine learning problem being researched recently. G...
A Dissertation submitted to the Department of Computer Science and Engineering for the MSc in Comput...
Of a number of ML (Machine Learning) algorithms, k-nearest neighbour (KNN) is among the most common ...
Nearest neighborhood classifier (kNN) is most widely used in pattern recognition applications. Depen...
Genetic algorithms are powerful tools for k-nearest neigh-bors classification. Traditional knn class...
<p>Illustration of our extension to the KNN algorithm that integrates genomic features. The algorith...
The traditional K-nearest neighbor (KNN) algorithm uses an exhaustive search for a complete training...
The goal of classification is to develop a model that can be used to accurately assign new observati...
The goal of classification is to develop a model that can be used to accurately assign new observati...
Data mining involves the discovery and fusion of features from large databases to establish minimal ...
We present a simple genetic algorithm (sGA), which is developed under Genetic Rule and Classifier Co...
5siThis work starts from the empirical observation that k nearest neighbours (KNN) consistently outp...
The k-means problem and the algorithm of the same name are the most commonly used clustering model a...