AbstractFor big data applications, randomized partition trees have recently been shown to be very effective in answering high dimensional nearest neighbor search queries with provable guarantee, when distances are measured using £2 norm. Unfortunately, if distances are measured using £1 norm, the same theoretical guarantee does not hold. In this paper, we show that a simple variant of randomized partition tree, which uses a different randomization using 1-stable distribution, can be used to efficiently answer high dimensional nearest neighbors queries when distances are measured using £1 norm. Experimental evaluations on eight real datasets suggest that the proposed method achieves better £i-norm nearest neighbor search accuracy with fewer ...
Given a set of n points in d-dimensional Euclidean space, S⊂Ed, and a query point qqqEd, we wish to ...
Efficient nearest neighbor search in high dimensional spaces is a problem that has numerous practica...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...
AbstractFor big data applications, randomized partition trees have recently been shown to be very ef...
Click on the DOI link to access the article (may not be free).The -d tree was one of the first spati...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We present a simple randomized data structure for two-dimensional point sets that allows fast neares...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Approximate nearest neighbor algorithms are used to speed up nearest neighbor search in a wide array...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Approximate nearest neighbor algorithms are used to speed up nearest neighbor search in a wide array...
Given a set of n points in d-dimensional Euclidean space, S⊂Ed, and a query point qqqEd, we wish to ...
Efficient nearest neighbor search in high dimensional spaces is a problem that has numerous practica...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...
AbstractFor big data applications, randomized partition trees have recently been shown to be very ef...
Click on the DOI link to access the article (may not be free).The -d tree was one of the first spati...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
We present a simple randomized data structure for two-dimensional point sets that allows fast neares...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Approximate nearest neighbor algorithms are used to speed up nearest neighbor search in a wide array...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Approximate nearest neighbor algorithms are used to speed up nearest neighbor search in a wide array...
Given a set of n points in d-dimensional Euclidean space, S⊂Ed, and a query point qqqEd, we wish to ...
Efficient nearest neighbor search in high dimensional spaces is a problem that has numerous practica...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...