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首页> 外文期刊>IEEE Transactions on Signal Processing: A publication of the IEEE Signal Processing Society >NuMax: A Convex Approach for Learning Near-Isometric Linear Embeddings
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NuMax: A Convex Approach for Learning Near-Isometric Linear Embeddings

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We propose a novel framework for the deterministic construction of linear, near-isometric embeddings of a finite set of data points. Given a set of training points chi subset of R-N, we consider the secant set S(chi) that consists of all pairwise difference vectors of chi, normalized to lie on the unit sphere. We formulate an affine rank minimization problem to construct a matrix psi that preserves the norms of all the vectors in S(chi) up to a distortion parameter delta While affine rank minimization is NP-hard, we show that this problem can be relaxed to a convex formulation that can be solved using a tractable semidefinite program (SDP). In order to enable scalability of our proposed SDP to very large-scale problems, we adopt a two-stage approach. First, in order to reduce compute time, we develop a novel algorithm based on the Alternating Direction Method of Multipliers (ADMM) that we call Nuclear norm minimization with Max-norm constraints (NuMax) to solve the SDP. Second, we develop a greedy, approximate version of NuMax based on the column generation method commonly used to solve large-scale linear programs. We demonstrate that our framework is useful for a number of signal processing applications via a range of experiments on large-scale synthetic and real datasets.

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