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Fast Deterministic CUR Matrix Decomposition with Accuracy Assurance

机译:快速确定性CUR矩阵分解,精度保证

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The deterministic CUR matrix decomposition is a low-rank approximation method to analyze a data matrix. It has attracted considerable attention due to its high interpretability, which results from the fact that the decomposed matrices consist of subsets of the original columns and rows of the data matrix. The subset is obtained by optimizing an objective function with sparsity-inducing norms via coordinate descent. However, the existing algorithms for optimization incur high computation costs. This is because coordinate descent iteratively updates all the parameters in the objective until convergence. This paper proposes a fast deterministic CUR matrix decomposition. Our algorithm safely skips unnecessary updates by efficiently evaluating the optimality conditions for the parameters to be zeros. In addition, we preferentially update the parameters that must be nonzeros. Theoretically, our approach guarantees the same result as the original approach. Experiments demonstrate that our algorithm speeds up the deterministic CUR while achieving the same accuracy.
机译:确定性cur矩阵分解是分析数据矩阵的低秩近似方法。它由于其高的可解释性而引起了相当大的关注,这是由分解矩阵由原始列和数据矩阵行的子集组成的事实。通过通过坐标血统优化具有稀疏性诱导规范的目标函数来获得子集。然而,现有的优化算法会产生高计算成本。这是因为坐标呼吁迭代地更新目标中的所有参数,直到收敛。本文提出了一种快速的确定性Cur矩阵分解。我们的算法通过有效地评估要零的参数的最优性条件,安全地跳过不必要的更新。此外,我们优先更新必须是非安利斯的参数。从理论上讲,我们的方法保证了与原始方法相同的结果。实验表明,我们的算法在实现相同的准确性的同时加速确定性的CUR。

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