Development of theoretical and methodological frameworks in data analysis is fundamental for modeling complex tobacco control systems. Following this idea, a new optimization based approach was introduced in the paper through two distinct methods: the modified linear least square fit and a heuristic algorithm for feature slection based on optimization-based methods have the potential to detect nonlinearity, and therefore to be more effective analysis tools of complex data set. In this study we evaluate the modified global k-means clustering algorithm by applying it to a massive set of real-time tobacco control survey data. Cluster analysis identified fixed and stable clusters in the studied data. These clusters correspond to groups of smoke...
Clustering is a division of data into groups of similar objects. Representing the data by fewer clus...
SUMMARY. This article proposes a simple method to determine single or multiple temporal clustering o...
Cluster analysis divides data into meaningful or useful groups clusters . One of the most important ...
Discovery of cluster characteristics and interesting rules describing smokers' clusters and the beha...
AbstractThe foremost avoidable cause of disease and death is tobacco consume in almost every country...
Cluster analysis comprises a range of methods for classifying multivariate data into subgroups. By o...
huge data is a big challenge. Clustering technique is able to find hidden patterns and to extract us...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Background: Cluster analysis is a data-driven method used to create clusters of individuals sharing ...
Abstract Cluster analysis has become one of the main tools used in extracting knowledge from data, w...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
Target of cluster analysis is to group data represented as a vector of measurements or a point in a ...
Abstract - Computational methods have become an important tool in the analysis of medical data sets....
Abstract- Computational methods have become an important tool in the analysis of medical data sets. ...
Abstract The chapter by Milligan and Hirtle provides an overview of the current state of knowledge i...
Clustering is a division of data into groups of similar objects. Representing the data by fewer clus...
SUMMARY. This article proposes a simple method to determine single or multiple temporal clustering o...
Cluster analysis divides data into meaningful or useful groups clusters . One of the most important ...
Discovery of cluster characteristics and interesting rules describing smokers' clusters and the beha...
AbstractThe foremost avoidable cause of disease and death is tobacco consume in almost every country...
Cluster analysis comprises a range of methods for classifying multivariate data into subgroups. By o...
huge data is a big challenge. Clustering technique is able to find hidden patterns and to extract us...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Background: Cluster analysis is a data-driven method used to create clusters of individuals sharing ...
Abstract Cluster analysis has become one of the main tools used in extracting knowledge from data, w...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
Target of cluster analysis is to group data represented as a vector of measurements or a point in a ...
Abstract - Computational methods have become an important tool in the analysis of medical data sets....
Abstract- Computational methods have become an important tool in the analysis of medical data sets. ...
Abstract The chapter by Milligan and Hirtle provides an overview of the current state of knowledge i...
Clustering is a division of data into groups of similar objects. Representing the data by fewer clus...
SUMMARY. This article proposes a simple method to determine single or multiple temporal clustering o...
Cluster analysis divides data into meaningful or useful groups clusters . One of the most important ...