Abstract The traditional methods of clustering are unable to cope with the exploding volume of data that the world is currently facing. As a solution to this problem, the research is intensified in the direction of parallel clustering methods. Although there is a variety of parallel programming models, the MapReduce paradigm is considered as the most prominent model for problems of large scale data processing of which the clustering. This paper introduces a new parallel design of a recently appeared heuristic for hard clustering using the MapReduce programming model. In this heuristic, clustering is performed by efficiently partitioning categorical large data sets according to the relational analysis approach. The proposed design, called PM...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
At present, the explosive growth of data and the mass storage state have brought many problems such ...
リサーチレポート(北陸先端科学技術大学院大学情報科学研究科)本文は図書館に配架されています。 / This material is stored in the JAIST library
Abstract—Clustering is considered as one of the most important tasks in data mining. The goal of clu...
Data clustering is an important data mining technology that plays a crucial role in numerous scienti...
Clustering problems have numerous applications and are becoming more challenging as the size of the ...
Data clustering has been received considerable attention in many applications, such as data mining, ...
One of the significant data mining techniques is clustering. Due to expansion and digitalization of ...
Large datasets, of the order of peta- and tera- bytes, are becoming prevalent in many scientific dom...
MapReduce is a software framework that allows certain kinds of parallelizable or distributable probl...
This book summarizes the state-of-the-art in partitional clustering. Clustering, the unsupervised cl...
Clustering is a useful data mining technique which groups data points such that the points within a ...
There have been many attempts for clustering categorical data such as market basket dataset. However...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
At present, the explosive growth of data and the mass storage state have brought many problems such ...
リサーチレポート(北陸先端科学技術大学院大学情報科学研究科)本文は図書館に配架されています。 / This material is stored in the JAIST library
Abstract—Clustering is considered as one of the most important tasks in data mining. The goal of clu...
Data clustering is an important data mining technology that plays a crucial role in numerous scienti...
Clustering problems have numerous applications and are becoming more challenging as the size of the ...
Data clustering has been received considerable attention in many applications, such as data mining, ...
One of the significant data mining techniques is clustering. Due to expansion and digitalization of ...
Large datasets, of the order of peta- and tera- bytes, are becoming prevalent in many scientific dom...
MapReduce is a software framework that allows certain kinds of parallelizable or distributable probl...
This book summarizes the state-of-the-art in partitional clustering. Clustering, the unsupervised cl...
Clustering is a useful data mining technique which groups data points such that the points within a ...
There have been many attempts for clustering categorical data such as market basket dataset. However...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
At present, the explosive growth of data and the mass storage state have brought many problems such ...
リサーチレポート(北陸先端科学技術大学院大学情報科学研究科)本文は図書館に配架されています。 / This material is stored in the JAIST library