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Discrete regression methods on the cone of positive-definite matrices

机译:正定矩阵圆锥上的离散回归方法

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We consider the problem of fitting a discrete curve to time-labeled data points on the set ‘n of all n-by-n symmetric positive-definite matrices. The quality of a curve is measured by a weighted sum of a term that penalizes its lack of fit to the data and a regularization term that penalizes speed and acceleration. The corresponding objective function depends on the choice of a Riemannian metric on ’n. We consider the Euclidean metric, the Log-Euclidean metric and the affine-invariant metric. For each, we derive a numerical algorithm to minimize the objective function. We compare these in terms of reliability and speed, and we assess the visual appearance of the solutions on examples for n = 2. Notably, we find that the Log-Euclidean and the affine-invariant metrics tend to yield similar—and sometimes identical—results, while the former allows for much faster and more reliable algorithms than the latter.
机译:我们考虑将离散曲线拟合到所有n×n对称正定矩阵的集合“ n ”上带有时间标记的数据点的问题。曲线的质量由惩罚其缺乏数据拟合性的项和惩罚速度和加速度的正则项的加权总和来衡量。相应的目标函数取决于对 n 的黎曼度量的选择。我们考虑欧几里得度量,对数欧几里得度量和仿射不变度量。对于每一个,我们导出一个数值算法以最小化目标函数。我们在可靠性和速度方面进行了比较,并在n = 2的示例上评估了解决方案的外观。值得注意的是,我们发现对数欧式和仿射不变度量往往会产生相似的(有时是相同的)结果,而前者比后者允许更快,更可靠的算法。

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