To accelerate the existing Broad Learning System (BLS) for new added nodes in [7], we extend the inverse Cholesky factorization in [10] to deduce an efficient inverse Cholesky factorization for a Hermitian matrix partitioned into 2 * 2 blocks, which is utilized to develop the proposed BLS algorithm 1. The proposed BLS algorithm 1 compute the ridge solution (i.e, the output weights) from the inverse Cholesky factor of the Hermitian matrix in the ridge inverse, and update the inverse Cholesky factor efficiently. From the proposed BLS algorithm 1, we deduce the proposed ridge inverse, which can be obtained from the generalized inverse in [7] by just change one matrix in the equation to compute the newly added sub-matrix. We also modify the proposed algorithm 1 into the proposed algorithm 2, which is equivalent to the existing BLS algorithm [7] in terms of numerical computations. The proposed algorithms 1 and 2 can reduce the computational complexity, since usually the Hermitian matrix in the ridge inverse is smaller than the ridge inverse. With respect to the existing BLS algorithm, the proposed algorithms 1 and 2 usually require about 13 and 2 3 of complexities, respectively, while in numerical experiments they achieve the speedups (in each additional training time) of 2.40 - 2.91 and 1.36 - 1.60, respectively. Numerical experiments also show that the proposed algorithm 1 and the standard ridge solution always bear the same testing accuracy, and usually so do the proposed algorithm 2 and the existing BLS algorithm. The existing BLS assumes the ridge parameter lamda->0, since it is based on the generalized inverse with the ridge regression approximation. When the assumption of lamda-> 0 is not satisfied, the standard ridge solution obviously achieves a better testing accuracy than the existing BLS algorithm in numerical experiments.
翻译:为了加速现有的宽度学习系统(BLS),以加速[7]中新增节点的现有的宽度学习系统(BLS),我们在[10]中扩展倒数Choolesky因子化,以推断一个高效的倒数Cholesky因子化,用于将Hermitian矩阵分割成2 * 2个区块,用于开发拟议的宽度算法。拟议BLS1演算法将洋脊的倒数Cholesky因子(即产出权重)计算出山脊的倒数Cholesky因子(即),并有效更新反数Cholesky因子的精确度。从拟议的BLS1算算法中,我们推算出拟议的螺旋因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因子因变精化而变,而变,而变。