K-nearest Neighbor Search by Random Projection Forests

Yan, Donghui, Wang, Yingjie, Wang, Jin, Wang, Honggang, Li, Zhenpeng

arXiv.org Machine Learning 

K-nearest neighbor (kNN) search refers to the problem of finding K points closest toa given data point on a distance metric of interest. It is an important task in a wide range of applications, including similarity search in data mining [15,19], fast kernel methods in machine learning [17, 30, 38], nonparametric density estimation [5, 29, 31] and intrinsic dimension estimation [6, 26] in statistics, aswell as anomaly detection algorithms [2, 10, 37]. Numerous algorithms have been proposed for kNN search; the readers are referred to [35, 46] and references therein. Our interest is kNN search in emerging applications. Two 1 salient features of such applications are the expected scalability of the algorithms andtheir ability to handle data of high dimensionality. Additionally, such applications often desire more accurate kNN search. For example, robotic route planning [23] and face-based surveillance systems [34] require a high accuracy forthe robust execution of tasks. However, most existing work on kNN search [1, 4, 12, 15] have focused mainly on the fast computation and accuracy isofalessconcern.

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