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Gauss quadrature for matrix inverse forms with applications

Abstract

We present a framework for accelerating a spectrum of machine learning algorithms that require computation of bilinear inverse forms uA1uu^\top A^{-1}u, where AA is a positive definite matrix and uu a given vector. Our framework is built on Gauss-type quadrature and easily scales to large, sparse matrices. Further, it allows retrospective computation of lower and upper bounds on uA1uu^\top A^{-1}u, which in turn accelerates several algorithms. We prove that these bounds tighten iteratively and converge at a linear (geometric) rate. To our knowledge, ours is the first work to demonstrate these key properties of Gauss-type quadrature, which is a classical and deeply studied topic. We illustrate empirical consequences of our results by using quadrature to accelerate machine learning tasks involving determinantal point processes and submodular optimization, and observe tremendous speedups in several instances.

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