Efficient similarity search within user-specified projective subspaces

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摘要

Many applications — such as content-based image retrieval, subspace clustering, and feature selection — may benefit from efficient subspace similarity search. Given a query object, the goal of subspace similarity search is to retrieve the most similar objects from the database, where the similarity distance is defined over an arbitrary subset of dimensions (or features) — that is, an arbitrary axis-aligned projective subspace — specified along with the query. Though much effort has been spent on similarity search in fixed subspaces, relatively little attention has been given to the problem of similarity search when the dimensions are specified at query time. In this paper, we propose new methods for the subspace similarity search problem for real-valued data. Extensive experiments are provided showing very competitive performance relative to state-of-the-art solutions.

论文关键词:Subspace similarity search,Multi-step search,Intrinsic dimensionality

论文评审过程:Received 31 January 2015, Revised 1 December 2015, Accepted 19 January 2016, Available online 26 February 2016, Version of Record 30 May 2016.

论文官网地址:https://doi.org/10.1016/j.is.2016.01.008