This work presents a new algorithm for matrix power series which is near-sparse, that is, there are a large number of near-zero elements in it. The proposed algorithm uses a filtering technique to improve the sparsity of the matrices involved in the calculation process of the Paterson-Stockmeyer (PS) scheme. Based on the error analysis considering the transaction error and the error introduced by filtering, the proposed algorithm can obtain similar accuracy as the original PS scheme but is more efficient than it. For the near-sparse matrix power series, the proposed method is also more efficient than the MATLAB built-in codes.
翻译:这项工作为接近粗糙的矩阵功率序列提供了一种新的算法,即其中含有大量接近零的元素。提议的算法使用过滤技术来改进Paterson-Stockmeyer(PS)计划计算过程中所涉矩阵的宽度。根据考虑到交易错误和过滤带来的错误的错误分析,提议的算法可以取得与原PS计划相似的准确性,但效率比它高。对于接近零的矩阵功率序列,拟议的方法也比MATLAB内置的代码更有效。