The aim of feature reduction is reduction of the size of data file, elimination of irrelevant features, and discovery of the effective data features for data analysis. Irrelevant data features can skew data analysis such as data clustering. Therefore, maintaining the data structure or data clusters must be taken into consideration in feature reduction. In this article, with regard to the success of k-means-based clustering methods, a feature reduction method is presented based on weighted k-means (wk-means). More specifically, firstly, data features are weighted using wk-means method. A feature with a high weight is not a better feature for clustering than a feature with a low weight, necessarily, and the weight of a feature only change fea...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Reduced K-means (RKM) and Factorial K-means (FKM) are two data reduction techniques incorporating p...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
K-means is one of the most popular and widespread partitioning clustering algorithms due to its supe...
In a real-world data set there is always the possibility, rather high in our opinion, that different...
We present an unsupervised method that selects the most relevant features using an embedded strategy...
Abstract — We study the topic of dimensionality reduc-tion for k-means clustering. Dimensionality re...
Feature reduction is a kind of dimensionality reduction of feature space. There are a number of appr...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
The weighted variant of k-Means (Wk-Means), which assigns values to features based on their relevanc...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
Abstract—This paper proposes a k-means type clustering algorithm that can automatically calculate va...
Abstract: K-means algorithm is a popular, unsupervised and iterative clustering algorithmwell known ...
<p>(A). Evaluation method: accuracy; Clustering method: k-means; Dataset: dataset 1; (B). Evaluation...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Reduced K-means (RKM) and Factorial K-means (FKM) are two data reduction techniques incorporating p...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
K-means is one of the most popular and widespread partitioning clustering algorithms due to its supe...
In a real-world data set there is always the possibility, rather high in our opinion, that different...
We present an unsupervised method that selects the most relevant features using an embedded strategy...
Abstract — We study the topic of dimensionality reduc-tion for k-means clustering. Dimensionality re...
Feature reduction is a kind of dimensionality reduction of feature space. There are a number of appr...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
The weighted variant of k-Means (Wk-Means), which assigns values to features based on their relevanc...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
Abstract—This paper proposes a k-means type clustering algorithm that can automatically calculate va...
Abstract: K-means algorithm is a popular, unsupervised and iterative clustering algorithmwell known ...
<p>(A). Evaluation method: accuracy; Clustering method: k-means; Dataset: dataset 1; (B). Evaluation...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Reduced K-means (RKM) and Factorial K-means (FKM) are two data reduction techniques incorporating p...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...