Existing models for nearest neighbor search in multidimensional spaces are not appropriate for query optimization because they either lead to erroneous estimation or involve complex equations that are expensive to evaluate in real-time. This paper proposes an alternative method that captures the performance of nearest neighbor queries using approximation. For uniform data, our model involves closed formulae that are very efficient to compute and accurate for up to 10 dimensions. Further, the proposed equations can be applied on nonuniform data with the aid of histograms. We demonstrate the effectiveness of the model by using it to solve several optimization problems related to nearest neighbor search
In order to improve efficiency in Approximate Near-est Neighbor (ANN) search, we exploit the structu...
We study the Approximate Nearest Neighbor problem for metric spaces where the query points are const...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...
Existing models for nearest neighbor search in multidimensional spaces are not appropriate for query...
In this paper, we present a new cost model for nearest neighbor search in high-dimensional data spac...
Nearest-neighbor queries in high-dimensional space are of high importance in various applications, e...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
Consider a set S of n data points in real d-dimensional space, R d , where distances are measured ...
We address the problem of designing data structures that allow efficient search for approximate near...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
Given a set of n points in d-dimensional Euclidean space, S ⊂ E d, and a query point q ∈ E d, we wis...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
We address the problem of designing data structures that allow efficient search for approximate near...
Given a set of n points in d-dimensional Euclidean space, S ae E d , and a query point q 2 E d ,...
The nearest neighbor search is a significant problem in transportation modeling and simulation. This...
In order to improve efficiency in Approximate Near-est Neighbor (ANN) search, we exploit the structu...
We study the Approximate Nearest Neighbor problem for metric spaces where the query points are const...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...
Existing models for nearest neighbor search in multidimensional spaces are not appropriate for query...
In this paper, we present a new cost model for nearest neighbor search in high-dimensional data spac...
Nearest-neighbor queries in high-dimensional space are of high importance in various applications, e...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
Consider a set S of n data points in real d-dimensional space, R d , where distances are measured ...
We address the problem of designing data structures that allow efficient search for approximate near...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
Given a set of n points in d-dimensional Euclidean space, S ⊂ E d, and a query point q ∈ E d, we wis...
Nearest neighbor search in high dimensional spaces is an interesting and important problem which is ...
We address the problem of designing data structures that allow efficient search for approximate near...
Given a set of n points in d-dimensional Euclidean space, S ae E d , and a query point q 2 E d ,...
The nearest neighbor search is a significant problem in transportation modeling and simulation. This...
In order to improve efficiency in Approximate Near-est Neighbor (ANN) search, we exploit the structu...
We study the Approximate Nearest Neighbor problem for metric spaces where the query points are const...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...