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Building generalized inverses of matrices using only row and column operations

机译:仅使用行和列运算来构建矩阵的广义逆

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Most students complete their first and only course in linear algebra with the understanding that a real, square matrix A has an inverse if and only if rref(A), the reduced row echelon form of A, is the identity matrix I_n. That is, if they apply elementary row operations via the Gauss-Jordan algorithm to the partitioned matrix [A∣!I_n] to obtain [rref(A) | P], then the matrix A is invertible exactly when rrej(A) = I_n, in which case, P = A~(-1). Many students must wonder what happens when A is not invertible, and what information P conveys in that case. That question is, however, seldom answered in a first course. We show that investigating that question emphasizes the close relationships between matrix multiplication, elementary row operations, linear systems, and the four fundamental spaces associated with a matrix. More important, answering that question provides an opportunity to show students how mathematicians extend results by relaxing hypotheses and then exploring the strengths and limitations of the resulting generalization, and how the first relaxation found is often not the best relaxation to be found. Along the way, we introduce students to the basic properties of generalized inverses. Finally, our approach should fit within the time and topic constraints of a first course in linear algebra.
机译:大多数学生在理解线性代数的第一门也是唯一一门课程的前提下,当且仅当rref(A)(即A的简化行梯形形式)是单位矩阵I_n时,实方矩阵A才具有逆。也就是说,如果它们通过高斯-乔丹算法将基本行操作应用于分区矩阵[A∣!I_n],以获得[rref(A)| P],则矩阵A在rrej(A)= I_n时完全可逆,在这种情况下,P = A〜(-1)。许多学生必须怀疑当A不可逆时会发生什么,以及在这种情况下P会传达什么信息。但是,在第一道课中很少回答这个问题。我们表明,研究该问题强调了矩阵乘法,基本行运算,线性系统以及与矩阵关联的四个基本空间之间的紧密关系。更重要的是,回答该问题提供了一个机会,向学生展示数学家如何通过放宽假设,然后探索所得概括的优点和局限性来扩展结果,以及发现的第一个松弛通常不是找到的最佳松弛。在此过程中,我们向学生介绍广义逆的基本性质。最后,我们的方法应该适合线性代数课程第一门课程的时间和主题限制。

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