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Structured adaptive and random spinners for fast machine learning computations

机译:用于快速机器学习计算的结构化自适应和随机微调器

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We consider an efficient computational framework for speeding up several machine learning algorithms with almost no loss of accuracy. The proposed framework relies on projections via structured matrices that we call Structured Spinners, which are formed as products of three structured matrix-blocks that incorporate rotations. The approach is highly generic, i.e. i) structured matrices under consideration can either be fully-randomized or learned, ii) our structured family contains as special cases all previously considered structured schemes, iii) the setting extends to the non-linear case where the projections are followed by non-linear functions, and iv) the method finds numerous applications including kernel approximations via random feature maps, dimensionality reduction algorithms,new fast cross-polytope LSH techniques, deep learning, convex optimization algorithms via Newton sketches, quantization with random projection trees, and more. The proposed framework comes with theoretical guarantees characterizing the capacity of the structured model in reference to its unstructured counterpart and is based on a general theoretical principle that we describe in the paper. As a consequence of our theoretical analysis, we provide the first theoretical guarantees for one of the most efficient existing LSH algorithms based on the HD 3 HD 2 HD 1 structured matrix [Andoni et al., 2015]. The exhaustive experimental evaluation confirms the accuracy and efficiency of structured spinners for a variety of different applications.
机译:我们考虑了一种高效的计算框架,用于加速几种机器学习算法,而几乎不会降低准确性。所提出的框架依赖于通过结构矩阵(我们称为结构化微调器)的投影,结构化旋转器是由三个结合了旋转的结构化矩阵块组成的产品。该方法是高度通用的,即:i)所考虑的结构化矩阵可以完全随机化或学习,ii)我们的结构化族包含所有以前考虑的结构化方案作为特殊情况,iii)设置扩展到非线性情况,其中投影之后是非线性函数,并且iv)该方法找到了许多应用,包括通过随机特征图进行核逼近,降维算法,新的快速跨多边形LSH技术,深度学习,通过牛顿草图的凸优化算法,随机量化投影树等等。所提出的框架具有基于结构化模型相对于非结构化模型的能力来表征的理论保证,并且基于我们在本文中描述的一般理论原理。作为我们理论分析的结果,我们为基于HD 3 HD 2 HD 1结构化矩阵的最有效的现有LSH算法之一提供了第一个理论保证[Andoni等,2015]。详尽的实验评估证实了结构化纺纱器在各种不同应用中的准确性和效率。

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