Distance-based clustering and classification are widely used in various fields to group mixed numeric and categorical data. In many algorithms, a predefined distance measurement is used to cluster data points based on their dissimilarity. While there exist numerous distance-based measures for data with pure numerical attributes and several ordered and unordered categorical metrics, an efficient and accurate distance for mixed-type data that utilizes the continuous and discrete properties simulatenously is an open problem. Many metrics convert numerical attributes to categorical ones or vice versa. They handle the data points as a single attribute type or calculate a distance between each attribute separately and add them up. We propose a me...
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...
The development of analysis methods for categorical data begun in 90's decade, and it has been boomi...
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...
Cluster analysis is a broadly used unsupervised data analysis technique for finding groups of homoge...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Abstract: Problem statement: The main objective of this study is to develop an incremental clusterin...
In recent times, several machine learning techniques have been applied successfully to discover us...
Finding an appropriate distance metric that accurately reflects the (dis)similarity between examples...
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...
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...
The development of analysis methods for categorical data begun in 90's decade, and it has been boomi...
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...
Cluster analysis is a broadly used unsupervised data analysis technique for finding groups of homoge...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Clustering mixed-type data, that is, observation by variable data that consist of both continuous an...
Abstract: Problem statement: The main objective of this study is to develop an incremental clusterin...
In recent times, several machine learning techniques have been applied successfully to discover us...
Finding an appropriate distance metric that accurately reflects the (dis)similarity between examples...
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...
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...
The development of analysis methods for categorical data begun in 90's decade, and it has been boomi...