Linear computation coding is concerned with the compression of multidimensional linear functions, i.e. with reducing the computational effort of multiplying an arbitrary vector to an arbitrary, but known, constant matrix. This paper advances over the state-of-the art, that is based on a discrete matching pursuit (DMP) algorithm, by a step-wise optimal search. Offering significant performance gains over DMP, it is however computationally infeasible for large matrices and high accuracy. Therefore, a reduced-state algorithm is introduced that offers performance superior to DMP, while still being computationally feasible even for large matrices. Depending on the matrix size, the performance gain over DMP is on the order of at least 10%.
翻译:线性计算编码涉及将多维线性功能压缩,即减少将任意矢量乘入任意但已知的恒定矩阵的计算努力。 本文以分立匹配算法为基础,通过渐进式最佳搜索,在最新技术水平上有所进步。 在DMP上提供显著的性能收益,但对于大型矩阵和高精度而言,在计算上是行不通的。 因此,引入了一种降低状态算法,其性能优于DMP,但即使在计算大型矩阵时仍然可行。根据矩阵大小,DMP的性能收益在10%左右。