Nearest neighbor search has a wide variety of applications. Unfortunately, the majority of search methods do not scale well with dimensionality. Recent efforts have been focused on finding better approximate solutions that improve the locality of data using dimensionality reduction. However, it is possible to preserve the locality of data and find exact nearest neighbors in high dimensions without dimensionality reduction. This paper introduces a novel high-performance technique to find exact k-nearest neighbors in both low and high dimensional spaces. It relies on a new method for data-sensitive space partitioning based on explicit data clustering, which is introduced in the paper for the first time. This organization supports effective re...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
In data mining domain, high-dimensional and correlated data sets are used frequently. Working with h...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...
As databases increasingly integrate different types of information such as time-series, multimedia a...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
Similarity search in multimedia databases requires an efficient support of nearest-neighbor search o...
Similarity search in multimedia databases requires an effi-cient support of nearest-neighbor search ...
In this thesis, we study high dimensional approximate similarity search algorithms. High dimensional...
We consider approaches for exact similarity search in a high dimensional space of correlated feature...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
The nearest- or near-neighbor query problems arise in a large variety of database applications, usua...
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...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
In data mining domain, high-dimensional and correlated data sets are used frequently. Working with h...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...
As databases increasingly integrate different types of information such as time-series, multimedia a...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
Similarity search in multimedia databases requires an efficient support of nearest-neighbor search o...
Similarity search in multimedia databases requires an effi-cient support of nearest-neighbor search ...
In this thesis, we study high dimensional approximate similarity search algorithms. High dimensional...
We consider approaches for exact similarity search in a high dimensional space of correlated feature...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
The nearest- or near-neighbor query problems arise in a large variety of database applications, usua...
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...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
In data mining domain, high-dimensional and correlated data sets are used frequently. Working with h...
Similarity search usually encounters a serious problem in the high-dimensional space, known as the "...