Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of dimensionality. Recent techniques such as Piecewise Aggregate Approximation (PAA), Segmented Means (SMEAN) and Mean-Standard deviation (MS) prove to be very effective in reducing data dimensionality by partitioning dimensions into subsets and extracting aggregate values from each dimension subset. These partition-based techniques have many advantages including very efficient multi-phased approximation while being simple to implement. They, however, are not adaptive to the different characteristics of data in diverse applications. We propose SubSpace Projection (SSP) as a unified framework for these partition-based techniques. SSP projects data ...
The clustering problem is well known in the database literature for its numerous applications in pro...
The clustering problem is well known in the database literature for its numerous applications in pro...
Traditional similarity or distance measurements usually become meaningless when the dimensions of th...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Computing the similarity between objects is a central task for many applications in the field of inf...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...
Similarity search has been widely used in many applications such as information retrieval, image dat...
Some state-of-the-art dimensionality reduction techniques are reviewed and investigated in this thes...
The entire history and, we dare say, future of similarity search is governed by the underlying notio...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Abstract-Subspace clustering refers to the problem of clustering unlabeled high-dimensional data poi...
Clustering techniques often define the similarity between instances using distance measures over the...
The clustering problem is well known in the database literature for its numerous applications in pro...
The clustering problem is well known in the database literature for its numerous applications in pro...
The clustering problem is well known in the database literature for its numerous applications in pro...
Traditional similarity or distance measurements usually become meaningless when the dimensions of th...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Computing the similarity between objects is a central task for many applications in the field of inf...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...
Similarity search has been widely used in many applications such as information retrieval, image dat...
Some state-of-the-art dimensionality reduction techniques are reviewed and investigated in this thes...
The entire history and, we dare say, future of similarity search is governed by the underlying notio...
In this paper, we present a novel semi-supervised dimensionality reduction technique to address the ...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Abstract-Subspace clustering refers to the problem of clustering unlabeled high-dimensional data poi...
Clustering techniques often define the similarity between instances using distance measures over the...
The clustering problem is well known in the database literature for its numerous applications in pro...
The clustering problem is well known in the database literature for its numerous applications in pro...
The clustering problem is well known in the database literature for its numerous applications in pro...
Traditional similarity or distance measurements usually become meaningless when the dimensions of th...