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An Efficient Algorithm for the Separable Nonlinear Least Squares Problem

机译:可分离的非线性最小二乘问题的有效算法

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The nonlinear least squares problem m i n y , z ∥ A ( y ) z + b ( y ) ∥ , where A ( y ) is a full-rank ( N + ? ) × N matrix, y ∈ R n , z ∈ R N and b ( y ) ∈ R N + ? with ? ≥ n , can be solved by first solving a reduced problem m i n y ∥ f ( y ) ∥ to find the optimal value y * of y , and then solving the resulting linear least squares problem m i n z ∥ A ( y * ) z + b ( y * ) ∥ to find the optimal value z * of z . We have previously justified the use of the reduced function f ( y ) = C T ( y ) b ( y ) , where C ( y ) is a matrix whose columns form an orthonormal basis for the nullspace of A T ( y ) , and presented a quadratically convergent Gauss–Newton type method for solving m i n y ∥ C T ( y ) b ( y ) ∥ based on the use of QR factorization. In this note, we show how LU factorization can replace the QR factorization in those computations, halving the associated computational cost while also providing opportunities to exploit sparsity and thus further enhance computational efficiency.
机译:非线性最小二乘问题miny,z∥A(y)z + b(y)∥,其中A(y)是满秩(N +?)×N矩阵,y∈R n,z∈RN和b (y)∈RN +?与? ≥n可以通过以下方法解决:首先求解一个简化的问题miny∥f(y)∥,找到y的最优值y *,然后求解所得的线性最小二乘问题minz∥A(y *)z + b(y) *)∥找到z的最优值z *。我们先前已经证明过使用简化的函数f(y)= CT(y)b(y)是正确的,其中C(y)是一个矩阵,其列构成AT(y)的零空间的正交基础,并提出了基于QR分解的二次收敛高斯-牛顿型方法求解miny∥CT(y)b(y)min。在本说明中,我们展示了LU分解如何在这些计算中替代QR分解,将相关的计算成本减半,同时还提供了利用稀疏性的机会,从而进一步提高了计算效率。

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