In this study, we propose a modified version of relationship based clustering framework dealing with density based clustering and outlier detection in high dimensional datasets. Originally, relationship based clustering framework is based on METIS. Therefore, it has some drawbacks such as no outlier detection and difficulty of determining the number of clusters. We propose two improvements over the framework. First, we introduce a new space which consists of tiny partitions created by METIS, hence we call it micro-partition space. Second, we used DBSCAN for clustering micro-partition space. The visualization of the results are carried out by CLUSION. Our experiments have shown that, our proposed framework produces promising results on high ...
Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outlie...
Increasingly large multimedia databases in life sciences, e-commerce, or monitoring applications can...
We introduce a robust k-means-based clustering method for high-dimensional data where not only outli...
In this study, we propose a modified version of relationship based clustering framework dealing with...
In this study, we propose a better relationship based clustering framework for dealing with unbalanc...
In this study, we propose a better relationship based clustering framework for dealing with unbalanc...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
Abstract: In modern era there are lots of data mining algorithms which focus on clustering methods. ...
Data clustering is an important data exploration technique with many applications in data mining. We...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Clustering is a widely used unsupervised data mining technique. In density-based clustering, a clust...
Increasingly large multimedia databases in life sciences, e-commerce, or monitoring applications can...
Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outlie...
Increasingly large multimedia databases in life sciences, e-commerce, or monitoring applications can...
We introduce a robust k-means-based clustering method for high-dimensional data where not only outli...
In this study, we propose a modified version of relationship based clustering framework dealing with...
In this study, we propose a better relationship based clustering framework for dealing with unbalanc...
In this study, we propose a better relationship based clustering framework for dealing with unbalanc...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
Abstract: In modern era there are lots of data mining algorithms which focus on clustering methods. ...
Data clustering is an important data exploration technique with many applications in data mining. We...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Clustering is a widely used unsupervised data mining technique. In density-based clustering, a clust...
Increasingly large multimedia databases in life sciences, e-commerce, or monitoring applications can...
Detecting outliers in high dimensional datasets is quite a difficult data mining task. Mining outlie...
Increasingly large multimedia databases in life sciences, e-commerce, or monitoring applications can...
We introduce a robust k-means-based clustering method for high-dimensional data where not only outli...