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lecture_15
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| lecture_15 [2015/03/24 10:27] – [Theorem: Laplace expansion along any row or column gives the determinant] rupert | lecture_15 [2017/03/28 11:16] (current) – [Definition: the adjoint of a square matrix] rupert | ||
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| - | ==== Step 4: the determinant of an $n\times n$ matrix | + | ==== Theorem: row/column operations and determinants |
| + | Let $A$ be an $n\times n$ matrix, let $c$ be a scalar and let $i\ne j$. | ||
| - | ===Definition=== | + | $A_{Ri\to x}$ means $A$ but with row $i$ replaced by $x$. |
| - | {{page> | + | - If $i\ne j$, then $\det(A_{Ri\leftrightarrow Rj})=-\det(A)$ (swapping two rows changes the sign of det). |
| + | - $\det(A_{Ri\to c Ri}) = c\det(A)$ (scaling one row scales $\det(A)$ in the same way) | ||
| + | - $\det(A_{Ri\to Ri + c Rj}) = \det(A)$ (adding a multiple of one row to another row doesn' | ||
| - | ===Example=== | + | * Also, these properties all hold if you change " |
| - | \begin{align*} | + | ==== Corollary ==== |
| - | \def\vm# | + | |
| - | \vm{\color{red}1&\color{red}0&\color{red}2&\color{red}3\\0&2&1&-1\\2& | + | If an $n\times n$ matrix $A$ has two equal rows (or columns), then $\det(A)=0$, |
| - | &= 1\left(\color{blue}2\vm{0&1\\4&2}-\color{blue}1\vm{0& | + | |
| - | &=1(2(-4)-0-0)+2(-2(1)-0)-3(-2(8)+0)\\ | + | === Proof === |
| - | &=-8-4+48\\ | + | |
| - | &=36. | + | |
| - | \end{align*} | + | If $A$ has two equal rows, row $i$ and row $j$, then $A=A_{Ri\leftrightarrow Rj}$ |
| + | So $\det(A)=\det(A_{Ri\leftrightarrow Rj}) = -\det(A)$, so $2\det(A)=0$, | ||
| + | |||
| + | If $A$ has two equal columns, then $A^T$ has two equal rows, so $\det(A)=\det(A^T)=0$. | ||
| + | |||
| + | In either case, $\det(A)=0$. So $A$ is not invertible.■ | ||
| + | |||
| + | === Examples === | ||
| + | |||
| + | * Swapping two rows changes the sign, so $\def\vm# | ||
| + | * Multiplying a row or a column by a constant multiplies the determinant by that constant, so \begin{align*}\vm{ | ||
| + | * $\det(A_{R1\to R1-R4})=\det(A)$, so \begin{align*}\vm{ 1&1& | ||
| + | * Hence \begin{align*}\vm{ 2&4& | ||
| + | |||
| + | ==== Corollary === | ||
| + | |||
| + | If $\def\row{\text{row}}\row_j(A)=c\cdot \row_i(A)$ for some $i\ne j$ and some $c\in \mathbb{R}$, | ||
| + | |||
| + | === Proof === | ||
| + | |||
| + | Note that $\row_i(A)-c \cdot\row_j(A)=0$. So $A_{Ri\to Ri-c\,Rj}$ has a zero row, and by Laplace expansion along this row we obtain $\det(A_{Ri\to Ri-c\,Rj})=0$. So $\det(A)=\det(A_{Ri\to Ri-c\,Rj})=0$.■ | ||
| + | |||
| + | ==== The effect of EROs on the determinant ==== | ||
| + | |||
| + | We have now seen the effect of each of the three types of [[ERO]] on the determinant of a matrix: | ||
| - | ==== Theorem: Laplace expansion along any row or column gives the determinant | + | - swapping two rows of the matrix multiplies the determinant by $-1$. By swapping rows repeatedly, we are able to shuffle the rows in an arbitrary fashion, and the determinant will either remain unchanged (if we used an even number of swaps) |
| + | - multiplying one of the rows of the matrix by $c\in \mathbb{R}$ multiplies the determinant by $c$; and | ||
| + | - replacing row $j$ by "row $j$ ${}+{}$ $c\times {}$ (row $i$)", where $c$ is a non-zero real number and $i\ne j$ does not change | ||
| - | - For any fixed $i$: $\det(A)=a_{i1}C_{i1}+a_{i2}C_{i2}+\dots+a_{in}C_{in}$ (Laplace expansion along row $i$) | + | Moreover, since $\det(A)=\det(A^T)$, this all applies equally to columns instead of rows. |
| - | - For any fixed $j$: $\det(A)=a_{1j}C_{1j}+a_{2j}C_{2j}+\dots+a_{nj}C_{nj}$ (Laplace expansion along column $j$) | + | |
| - | === Example === | + | We can use EROs to put a matrix into upper triangular form, and then finding the determinant is easy: just multiply the diagonal entries together. We just have to keep track of how the determinant is changed by the EROs of types 1 and 2. |
| - | We can make life easier by choosing expansion rows or columns with lots of zeros, if possible. Let's redo the previous example with this in mind: | + | ==== Example: using EROs to find the determinant ==== |
| - | \begin{align*} | + | \begin{align*}\def\vm# |
| - | \def\vm# | + | \\& |
| - | \vm{1& | + | \\& |
| - | -\color{red}0+\color{red}2\vm{1& | + | \\&=-12\vm{1&3& |
| - | &=2\left(-\color{purple}2\vm{2&3\\4&2}+\color{purple}0-\color{purple}1\vm{1&2\\3&4}\right)\\ | + | \\&=-12\vm{1&3& |
| - | &=2(-2(-8)-(-2))\\ | + | \\&=-12(1)(1)(2)(-3)=72. |
| - | &=36. | + | |
| \end{align*} | \end{align*} | ||
| + | ===== Finding the inverse of an invertible $n\times n$ matrix ===== | ||
| + | ==== Definition: the adjoint of a square matrix ==== | ||
| + | {{page> | ||
| - | === Theorem | + | === Example: $n=2$ === |
| - | Let $A$ be an $n\times n$ matrix. | + | If $A=\def\mat# |
| - | - $A$ is invertible if and only if $\det(A)\ne0$. | ||
| - | - If $A'$ is the same as $A$, except with two rows swapped, then $\det(A' | ||
| - | - If $c$ is a scalar and $A'$ is the same as $A$ except with one row multiplied by $c$, then $\det(A' | ||
| - | - If $A'$ and $A'' | ||
| - | - $\det(A^T)=\det(A)$. So we can swap " | ||
| - | - If $B$ is another $n\times n$ matrix, then $\det(AB)=\det(A)\det(B)$. | ||
lecture_15.1427192835.txt.gz · Last modified: by rupert
