Abstract: Problem statement: The main objective of this study is to develop an incremental clustering algorithm that can handle numerical as well as categorical attributes in a given dataset. The authors have previously reported a cluster feature-based algorithm, CFICA that can handle only numerical data. Appraoch: Since many of the real life data mining applications work with datasets that contain both numeric and categorical attributes, there is a need for modifying the earlier algorithm to handle such mixed datasets. The core idea is to propose a new distance measure based on the weight age which is automatically generated and apply it to incremental clustering algorithms. The incremental data points are handled in two phases. In the fir...
Cluster analysis is a broadly used unsupervised data analysis technique for finding groups of homoge...
Distance-based clustering and classification are widely used in various fields to group mixed numeri...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Clustering is an active research topic in data mining and different methods have been proposed in th...
In recent times, several machine learning techniques have been applied successfully to discover us...
In recent times, several machine learning techniques have been applied successfully to discover us...
In recent times, several machine learning techniques have been applied successfully to discover us...
In recent times, several machine learning techniques have been applied successfully to discover usef...
Cluster analysis comprises of several unsupervised techniques aiming to identify a subgroup (cluster...
Cluster analysis comprises of several unsupervised techniques aiming to identify a subgroup (cluster...
Feature selection is fundamentally an optimization problem for selecting relevant features from seve...
Knowledge discovery in databases is the non-trivial process of identifying valid, novel potentially ...
In data mining, clustering analysis is an important research area. The goal of clustering is to grou...
Clustering has been widely used in different fields of science, technology, social science, and so f...
2013-10-01We propose an efficient approach to clustering datasets with mixed type attributes (both n...
Cluster analysis is a broadly used unsupervised data analysis technique for finding groups of homoge...
Distance-based clustering and classification are widely used in various fields to group mixed numeri...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Clustering is an active research topic in data mining and different methods have been proposed in th...
In recent times, several machine learning techniques have been applied successfully to discover us...
In recent times, several machine learning techniques have been applied successfully to discover us...
In recent times, several machine learning techniques have been applied successfully to discover us...
In recent times, several machine learning techniques have been applied successfully to discover usef...
Cluster analysis comprises of several unsupervised techniques aiming to identify a subgroup (cluster...
Cluster analysis comprises of several unsupervised techniques aiming to identify a subgroup (cluster...
Feature selection is fundamentally an optimization problem for selecting relevant features from seve...
Knowledge discovery in databases is the non-trivial process of identifying valid, novel potentially ...
In data mining, clustering analysis is an important research area. The goal of clustering is to grou...
Clustering has been widely used in different fields of science, technology, social science, and so f...
2013-10-01We propose an efficient approach to clustering datasets with mixed type attributes (both n...
Cluster analysis is a broadly used unsupervised data analysis technique for finding groups of homoge...
Distance-based clustering and classification are widely used in various fields to group mixed numeri...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...