In several novel applications such as multimedia and recommender systems, data is often represented as object feature vectors in high-dimensional spaces. The high-dimensional data is always a challenge for state-of-the-art algorithms, because of the so-called curse of dimensionality . As the dimensionality increases, the discriminative ability of similarity measures diminishes to the point where many data analysis algorithms, such as similarity search and clustering, that depend on them lose their effectiveness. One way to handle this challenge is by selecting the most important features, which is essential for providing compact object representations as well as improving the overall search and clustering performance. Having compact featur...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In this paper, we present an efficient method, called iDistance, for K-nearest neighbor (KNN) search...
Feature selection is a challenging problem that occurs in the high-dimensional data analysis of many...
In several novel applications such as multimedia and recommender systems, data is often represented ...
In several novel applications such as multimedia and recommender systems, data is often represented ...
Similarity search in high-dimensional data spaces is a popular paradigm for many modern database app...
Similarity search in high-dimensional data spaces is a popular paradigm for many modern database app...
The emergence of novel database applications has resulted in the prevalence of a new paradigm for si...
The emergence of novel database applications has resulted in the prevalence of a new paradigm for si...
Similarity search is a powerful paradigm for image and multimedia databases, time series data-bases,...
Applications like multimedia retrieval require efficient support for similarity search on large data...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
In this paper, we present an efficient method, called iDistance, for K-nearest neighbor (KNN) search...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In this paper, we present an efficient method, called iDistance, for K-nearest neighbor (KNN) search...
Feature selection is a challenging problem that occurs in the high-dimensional data analysis of many...
In several novel applications such as multimedia and recommender systems, data is often represented ...
In several novel applications such as multimedia and recommender systems, data is often represented ...
Similarity search in high-dimensional data spaces is a popular paradigm for many modern database app...
Similarity search in high-dimensional data spaces is a popular paradigm for many modern database app...
The emergence of novel database applications has resulted in the prevalence of a new paradigm for si...
The emergence of novel database applications has resulted in the prevalence of a new paradigm for si...
Similarity search is a powerful paradigm for image and multimedia databases, time series data-bases,...
Applications like multimedia retrieval require efficient support for similarity search on large data...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
In this paper, we present an efficient method, called iDistance, for K-nearest neighbor (KNN) search...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In multimedia applications, direct representations of data objects typically involve hundreds or tho...
In this paper, we present an efficient method, called iDistance, for K-nearest neighbor (KNN) search...
Feature selection is a challenging problem that occurs in the high-dimensional data analysis of many...