Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Computer Science, 2017Cataloged from PDF version of thesis.Includes bibliographical references (pages 79-80).The problem of clustering multi-dimensional data has been well researched in the scientific community. It is a problem with wide scope and applications. With the rapid growth of very large databases, traditional clustering algorithms become inefficient due to insufficient memory capacity. Grid-based algorithms try to solve this problem by dividing the space into cells and then performing clustering on the cells. However these algorithms also become inefficient when even the grid becomes too large to be saved in memory. This thesis present...
International conference on Integrated Geo-spatial Information Technology and its Application to Res...
Because of the development of modern-day satellites and other data acquisition systems, global clima...
Abstract. The clustering algorithm DBSCAN relies on a density-based notion of clusters and is design...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
The 15th Australasian Data Mining Conference, Melbourne, Australia, 19-20 August 2017In this paper w...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
The amount of data generated per year will reach more than 44, 000 billion gigabytes in 2020, ten ti...
[[abstract]]Recently, millions of databases have been used and we need a new technique that can auto...
Many applications require the clustering of large amounts of high-dimensional data. Most clustering ...
In our time people and devices constantly generate data. User activity generates data about needs an...
Because of the development of modern-day satellites and other data acquisition systems, global clima...
Clustering algorithms are attractive for the task of class iden-tification in spatial databases. How...
Nowadays, high performance parallel computation is deemed as a good solution to the complicated proc...
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
The emergence of geospatial big data has opened up new avenues for identifying urban environments. A...
International conference on Integrated Geo-spatial Information Technology and its Application to Res...
Because of the development of modern-day satellites and other data acquisition systems, global clima...
Abstract. The clustering algorithm DBSCAN relies on a density-based notion of clusters and is design...
Clustering methods are particularly well-suited for identifying classes in spatial databases. Howeve...
The 15th Australasian Data Mining Conference, Melbourne, Australia, 19-20 August 2017In this paper w...
In the past few decades, clustering has been widely used in areas such as pattern recognition, data ...
The amount of data generated per year will reach more than 44, 000 billion gigabytes in 2020, ten ti...
[[abstract]]Recently, millions of databases have been used and we need a new technique that can auto...
Many applications require the clustering of large amounts of high-dimensional data. Most clustering ...
In our time people and devices constantly generate data. User activity generates data about needs an...
Because of the development of modern-day satellites and other data acquisition systems, global clima...
Clustering algorithms are attractive for the task of class iden-tification in spatial databases. How...
Nowadays, high performance parallel computation is deemed as a good solution to the complicated proc...
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
The emergence of geospatial big data has opened up new avenues for identifying urban environments. A...
International conference on Integrated Geo-spatial Information Technology and its Application to Res...
Because of the development of modern-day satellites and other data acquisition systems, global clima...
Abstract. The clustering algorithm DBSCAN relies on a density-based notion of clusters and is design...