Data clustering is an essential technique for empirical data analysis, and has been studied for several years. Various clustering techniques are introduced time to time for exploratory analysis of very large data set to discover useful patterns and correlations among attributes. This master thesis focuses on the problems of moving objects clustering and their visualization. In case of maintaining a cluster consists of a set of data points that moves continuously in a two-dimensional euclidean space is always costly and uncertain. This uncertainty is considered to be one of the major problems. It considers the comparative study and analysis of different clustering algorithms, worked on road net-work data for continuous clustering. K-means an...
k-means algorithm is one of the basic clustering techniques that is used in many data mining applica...
We suggest an approach to exploratory analysis of diverse types of spatiotemporal data with the use ...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
Abstract—This paper considers the problem of efficiently maintaining a clustering of a dynamic set o...
The paper investigates the possibilities of using clustering techniques in visual exploration and an...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Abstract—With the rapid advances in wireless devices and positioning technologies, tracking and clus...
Cluster analysis is a popular method of multivariate statistics. Based on mutual similarities betwee...
A moving cluster is defined by a set of objects that move close to each other for a long time interv...
With widespread availability of low cost GPS, cellular phones, satellite imagery, robotics, Web traf...
Clustering forms a major part of showing different relations between data points. Real-time clusteri...
Today data clustering has been widely applied to many practical applications like social network ana...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
Abstract Cluster analysis has become one of the main tools used in extracting knowledge from data, w...
k-means algorithm is one of the basic clustering techniques that is used in many data mining applica...
We suggest an approach to exploratory analysis of diverse types of spatiotemporal data with the use ...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
Abstract—This paper considers the problem of efficiently maintaining a clustering of a dynamic set o...
The paper investigates the possibilities of using clustering techniques in visual exploration and an...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...
One of the most common operations in exploration and analysis of various kinds of data is clustering...
Abstract—With the rapid advances in wireless devices and positioning technologies, tracking and clus...
Cluster analysis is a popular method of multivariate statistics. Based on mutual similarities betwee...
A moving cluster is defined by a set of objects that move close to each other for a long time interv...
With widespread availability of low cost GPS, cellular phones, satellite imagery, robotics, Web traf...
Clustering forms a major part of showing different relations between data points. Real-time clusteri...
Today data clustering has been widely applied to many practical applications like social network ana...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
Abstract Cluster analysis has become one of the main tools used in extracting knowledge from data, w...
k-means algorithm is one of the basic clustering techniques that is used in many data mining applica...
We suggest an approach to exploratory analysis of diverse types of spatiotemporal data with the use ...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...