Clustering algorithms in the high-dimensional space require many data to perform reliably and robustly. For multivariate volume data, it is possible to interpolate between the data points in the high-dimensional attribute space based on their spatial relationship in the volumetric domain (or physical space). Thus, sufficiently high number of data points can be generated, overcoming the curse of dimensionality for this particular type of multidimensional data. We applies this idea to a histogram-based clustering algorithm. We created a uniform partition of the attribute space in multidimensional bins and computed a histogram indicating the number of data samples belonging to each bin. Without interpolation, the analysis was highly sensitive ...
Clustering in high-dimensional spaces is a difficult problem which is recurrent in many domains, for...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
We present a method to represent unstructured scalar fields at multiple levels of detail. Using a pa...
Clustering algorithms in the high-dimensional space require many data to perform reliably and robust...
We propose an enhanced grid-density based approach for clustering high dimensional data. Our techniq...
Abstract It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM...
More and more data are produced every day. Some clustering techniques have been developed to automat...
Projection methods for dimension reduction have enabled the discovery of otherwise unattainable stru...
[[abstract]]Clustering strategy analyses a set of data to group the data with similar features to cl...
It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM and the ...
Recent times have witnessed the transition towards a significantly larger scale both in the number o...
We present a flexible method by which large unstructured scalar fields can be represented in a simpl...
In this paper, we propose a novel algorithm for clustering high dimensional data streams with repres...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering in high-dimensional spaces is a difficult problem which is recurrent in many domains, for...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
We present a method to represent unstructured scalar fields at multiple levels of detail. Using a pa...
Clustering algorithms in the high-dimensional space require many data to perform reliably and robust...
We propose an enhanced grid-density based approach for clustering high dimensional data. Our techniq...
Abstract It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM...
More and more data are produced every day. Some clustering techniques have been developed to automat...
Projection methods for dimension reduction have enabled the discovery of otherwise unattainable stru...
[[abstract]]Clustering strategy analyses a set of data to group the data with similar features to cl...
It is well-known that for high dimensional data cluster-ing, standard algorithms such as EM and the ...
Recent times have witnessed the transition towards a significantly larger scale both in the number o...
We present a flexible method by which large unstructured scalar fields can be represented in a simpl...
In this paper, we propose a novel algorithm for clustering high dimensional data streams with repres...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Many clustering algorithms tend to break down in high-dimensional feature spaces, because the cluste...
Clustering in high-dimensional spaces is a difficult problem which is recurrent in many domains, for...
cluster analysis of data with anywhere from a few dozens to many thousands of dimensions. High-dimen...
We present a method to represent unstructured scalar fields at multiple levels of detail. Using a pa...