用大的辅助存储器直接查找RkNN

Hanxiong Chen, Rongmao Shi, K. Furuse, N. Ohbo
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引用次数: 3

摘要

本文提出了一种有效的反向k近邻(RkNN)搜索算法。给定一个对象集合V和一个查询对象q, RkNN查询返回V的一个子集,使得该子集的每个元素根据一定的相似性度量将q作为其kNN成员。早期的方法是预先计算每个数据对象的神经网络并找到RNN。最近的方法引入了基于两个物体之间相互距离的索引。我们的方法可以在运行成本不变的情况下直接找到任意k的RkNN。它可以应用于任何RkNN搜索,只要对象之间的相互距离可以计算出来。它不需要三角不等式为偶数。它还基于预先计算的信息,假设二级存储(硬盘驱动器)很便宜,并且当前的计算机足够强大,因此它们的备用电源可以用于离线更新数据。我们评估了所提出的方法的效率和有效性。
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Finding RkNN Straightforwardly with Large Secondary Storage
In this paper, we proposes an efficient algorithm for finding reverse k nearest neighbor (RkNN) search. Given a set V of objects and a query object q, a RkNN query returns a subset of V such that each element of the subset has q as its kNN member according to a certain similarity metric. Early methods pre-compute NN of each data objects and find RNN. Recent methods introduce index based on the mutual distance between two objects. Our method can find RkNN for any k straightforwardly with constant running cost. It can be applied to any RkNN searches whenever the mutual distance between objects can be figured out. It does not require the triangle inequality even. It is also based on pre-compute information, under the assumptions that secondary storage (hard disk drive) is cheap and the current computers are powerful enough so their spare power can be used to update data offline. We evaluate the efficiency and effectiveness of the proposed method.
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