Intuitive explanation of the rank-nullity theorem












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I understand that if you have a linear transformation from $U$ to $V$ with, say, $operatorname{dim} U = 3$, $operatorname{rank} T = 2$, then the set of points that map onto the $0$ vector will lie along a straight line, and therefore $operatorname{nullity}T = 1$.



Can anyone offer an intuitive explanation of why this is always true?










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$endgroup$








  • 1




    $begingroup$
    Fix a basis $(b_1,...,b_k,...,b_n)$ of $V$ such that $(b_1,...,b_k)$ is a basis of $ker(f)$. Then the remaining basis vectors $b_{k+1},...,b_n$ have linearly independent images $f(b_{k+1}),...,f(b_n)$. Since the other basis vectors get mapped to $0$, these alone must span $mathrm{im}(f)$, hence form a basis of it and $mathrm{rank}(f)=n-k$. The result follows. I'm not sure if this is particularly illuminating though.
    $endgroup$
    – Thorgott
    3 hours ago










  • $begingroup$
    This is similar to the proof that was given in my linear algebra module, I think I'm looking for a more geometric explanation
    $endgroup$
    – Joseph
    3 hours ago










  • $begingroup$
    Very loosely, I think of the rank-nullity theorem as saying: What you end up with is what you start with minus what you lose. "What you end up with" being the rank, "what you start with" being the dimension of the domain space, and "what you lose" being the nullity.
    $endgroup$
    – Daniel Schepler
    2 hours ago
















5












$begingroup$


I understand that if you have a linear transformation from $U$ to $V$ with, say, $operatorname{dim} U = 3$, $operatorname{rank} T = 2$, then the set of points that map onto the $0$ vector will lie along a straight line, and therefore $operatorname{nullity}T = 1$.



Can anyone offer an intuitive explanation of why this is always true?










share|cite|improve this question











$endgroup$








  • 1




    $begingroup$
    Fix a basis $(b_1,...,b_k,...,b_n)$ of $V$ such that $(b_1,...,b_k)$ is a basis of $ker(f)$. Then the remaining basis vectors $b_{k+1},...,b_n$ have linearly independent images $f(b_{k+1}),...,f(b_n)$. Since the other basis vectors get mapped to $0$, these alone must span $mathrm{im}(f)$, hence form a basis of it and $mathrm{rank}(f)=n-k$. The result follows. I'm not sure if this is particularly illuminating though.
    $endgroup$
    – Thorgott
    3 hours ago










  • $begingroup$
    This is similar to the proof that was given in my linear algebra module, I think I'm looking for a more geometric explanation
    $endgroup$
    – Joseph
    3 hours ago










  • $begingroup$
    Very loosely, I think of the rank-nullity theorem as saying: What you end up with is what you start with minus what you lose. "What you end up with" being the rank, "what you start with" being the dimension of the domain space, and "what you lose" being the nullity.
    $endgroup$
    – Daniel Schepler
    2 hours ago














5












5








5


1



$begingroup$


I understand that if you have a linear transformation from $U$ to $V$ with, say, $operatorname{dim} U = 3$, $operatorname{rank} T = 2$, then the set of points that map onto the $0$ vector will lie along a straight line, and therefore $operatorname{nullity}T = 1$.



Can anyone offer an intuitive explanation of why this is always true?










share|cite|improve this question











$endgroup$




I understand that if you have a linear transformation from $U$ to $V$ with, say, $operatorname{dim} U = 3$, $operatorname{rank} T = 2$, then the set of points that map onto the $0$ vector will lie along a straight line, and therefore $operatorname{nullity}T = 1$.



Can anyone offer an intuitive explanation of why this is always true?







linear-algebra matrix-rank






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edited 1 hour ago









Alex Ortiz

11.6k21442




11.6k21442










asked 3 hours ago









JosephJoseph

475




475








  • 1




    $begingroup$
    Fix a basis $(b_1,...,b_k,...,b_n)$ of $V$ such that $(b_1,...,b_k)$ is a basis of $ker(f)$. Then the remaining basis vectors $b_{k+1},...,b_n$ have linearly independent images $f(b_{k+1}),...,f(b_n)$. Since the other basis vectors get mapped to $0$, these alone must span $mathrm{im}(f)$, hence form a basis of it and $mathrm{rank}(f)=n-k$. The result follows. I'm not sure if this is particularly illuminating though.
    $endgroup$
    – Thorgott
    3 hours ago










  • $begingroup$
    This is similar to the proof that was given in my linear algebra module, I think I'm looking for a more geometric explanation
    $endgroup$
    – Joseph
    3 hours ago










  • $begingroup$
    Very loosely, I think of the rank-nullity theorem as saying: What you end up with is what you start with minus what you lose. "What you end up with" being the rank, "what you start with" being the dimension of the domain space, and "what you lose" being the nullity.
    $endgroup$
    – Daniel Schepler
    2 hours ago














  • 1




    $begingroup$
    Fix a basis $(b_1,...,b_k,...,b_n)$ of $V$ such that $(b_1,...,b_k)$ is a basis of $ker(f)$. Then the remaining basis vectors $b_{k+1},...,b_n$ have linearly independent images $f(b_{k+1}),...,f(b_n)$. Since the other basis vectors get mapped to $0$, these alone must span $mathrm{im}(f)$, hence form a basis of it and $mathrm{rank}(f)=n-k$. The result follows. I'm not sure if this is particularly illuminating though.
    $endgroup$
    – Thorgott
    3 hours ago










  • $begingroup$
    This is similar to the proof that was given in my linear algebra module, I think I'm looking for a more geometric explanation
    $endgroup$
    – Joseph
    3 hours ago










  • $begingroup$
    Very loosely, I think of the rank-nullity theorem as saying: What you end up with is what you start with minus what you lose. "What you end up with" being the rank, "what you start with" being the dimension of the domain space, and "what you lose" being the nullity.
    $endgroup$
    – Daniel Schepler
    2 hours ago








1




1




$begingroup$
Fix a basis $(b_1,...,b_k,...,b_n)$ of $V$ such that $(b_1,...,b_k)$ is a basis of $ker(f)$. Then the remaining basis vectors $b_{k+1},...,b_n$ have linearly independent images $f(b_{k+1}),...,f(b_n)$. Since the other basis vectors get mapped to $0$, these alone must span $mathrm{im}(f)$, hence form a basis of it and $mathrm{rank}(f)=n-k$. The result follows. I'm not sure if this is particularly illuminating though.
$endgroup$
– Thorgott
3 hours ago




$begingroup$
Fix a basis $(b_1,...,b_k,...,b_n)$ of $V$ such that $(b_1,...,b_k)$ is a basis of $ker(f)$. Then the remaining basis vectors $b_{k+1},...,b_n$ have linearly independent images $f(b_{k+1}),...,f(b_n)$. Since the other basis vectors get mapped to $0$, these alone must span $mathrm{im}(f)$, hence form a basis of it and $mathrm{rank}(f)=n-k$. The result follows. I'm not sure if this is particularly illuminating though.
$endgroup$
– Thorgott
3 hours ago












$begingroup$
This is similar to the proof that was given in my linear algebra module, I think I'm looking for a more geometric explanation
$endgroup$
– Joseph
3 hours ago




$begingroup$
This is similar to the proof that was given in my linear algebra module, I think I'm looking for a more geometric explanation
$endgroup$
– Joseph
3 hours ago












$begingroup$
Very loosely, I think of the rank-nullity theorem as saying: What you end up with is what you start with minus what you lose. "What you end up with" being the rank, "what you start with" being the dimension of the domain space, and "what you lose" being the nullity.
$endgroup$
– Daniel Schepler
2 hours ago




$begingroup$
Very loosely, I think of the rank-nullity theorem as saying: What you end up with is what you start with minus what you lose. "What you end up with" being the rank, "what you start with" being the dimension of the domain space, and "what you lose" being the nullity.
$endgroup$
– Daniel Schepler
2 hours ago










2 Answers
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$begingroup$

I like this question. Let me take a shot at it. I think it's best to think of the rank as the dimension of the range (or image).



Consider first a nonsingular transformation $T$ on an $n-$dimensional vector space. We know that the rank is $n$ and the nullity $0$, so the theorem holds in this case. $T$ maps a basis to a basis. Suppose we modify $T$ by mapping the first vector in the basis to $0$. Call the new transformation $T_1$. Clearly, the nullity of $T$ is $1$. What is the rank? In the image of $T$ one of the basis vectors collapses to $0$ when we go to the image of $T_1,$ so the image of $T_1$ has dimension $n-1$ and the theorem hold in this case.



Now continue the process. If $T_2$ is the same as $T_1$ except that the second basis vector is mapped to $0$, then the nullity will be $2$, and the image will be of dimension $n-2$, because again, one dimension collapses.



Of course, we can continue until we arrive at $T_n=0$ and the theorem always holds.



I hope this makes intuitive sense to you.






share|cite|improve this answer









$endgroup$





















    2












    $begingroup$

    I like saulspatz' answer because it is very hands-on. I would like to offer another perspective, one based on the fact that linear transformations are characterized by their ranks, up to choice of bases in domain and codomain. The key is in this proposition:



    Proposition. Suppose $Tcolon Vto W$ is a linear transformation with $dim V = n$ and $dim W = m$ and $operatorname{rank} T = r leqslant m$. Then there are bases $v_1,dots,v_n$ for $V$ and $w_1,dots,w_m$ for $W$ such that the matrix for $T$ with respect to these bases is
    $$
    mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & 0_{rtimes n-r} \ 0_{m-rtimes r} & 0_{m-rtimes n-r}end{pmatrix},
    $$

    where $I_{rtimes r}$ is the $rtimes r$ identity matrix, and the various $0_{asttimesast}$ are the zero matrices of the corresponding dimensions. As a quick corollary of the proposition, we can read off of the matrix for $T$ in these bases that
    begin{align*}
    operatorname{rank}T &stackrel{text{def}}{=} dim operatorname{image}T = r, \
    operatorname{nullity}T &stackrel{text{def}}{=} dim ker T = n-r,
    end{align*}

    and hence gain the rank-nullity theorem:
    $$
    dim V = n = r + (n-r) = operatorname{rank}T + operatorname{nullity}T.
    $$

    For a quick proof of the proposition, keeping things as "coarse" as possible for intuition's sake, because the rank of $T$ is $r$, take vectors $v_1,dots,v_r$ in $V$ such that $w_1 = T(v_1),dots,w_r = T(v_r)$ span the image of $T$. Extend $v_1,dots,v_r$ to a basis $v_1,dots,v_r,v_{r+1},dots,v_n$ for $V$ and $w_1,dots,w_r$ to a basis $w_1,dots,w_r,w_{r+1},dots,w_m$ for $W$. With respect to these bases, we quickly determine
    $$
    mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & ast \ 0_{m-rtimes r} & astend{pmatrix}.
    $$

    Because the rank of $T$ is $r$, and the first $r$ columns of the matrix for $T$ are linearly independent, we determine that (possibly after some row and column operations) the two $ast$'s in the above matrix for $T$ have to be the zero matrices of appropriate dimensions, hence the proposition.






    share|cite|improve this answer











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      2 Answers
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      2 Answers
      2






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      active

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      4












      $begingroup$

      I like this question. Let me take a shot at it. I think it's best to think of the rank as the dimension of the range (or image).



      Consider first a nonsingular transformation $T$ on an $n-$dimensional vector space. We know that the rank is $n$ and the nullity $0$, so the theorem holds in this case. $T$ maps a basis to a basis. Suppose we modify $T$ by mapping the first vector in the basis to $0$. Call the new transformation $T_1$. Clearly, the nullity of $T$ is $1$. What is the rank? In the image of $T$ one of the basis vectors collapses to $0$ when we go to the image of $T_1,$ so the image of $T_1$ has dimension $n-1$ and the theorem hold in this case.



      Now continue the process. If $T_2$ is the same as $T_1$ except that the second basis vector is mapped to $0$, then the nullity will be $2$, and the image will be of dimension $n-2$, because again, one dimension collapses.



      Of course, we can continue until we arrive at $T_n=0$ and the theorem always holds.



      I hope this makes intuitive sense to you.






      share|cite|improve this answer









      $endgroup$


















        4












        $begingroup$

        I like this question. Let me take a shot at it. I think it's best to think of the rank as the dimension of the range (or image).



        Consider first a nonsingular transformation $T$ on an $n-$dimensional vector space. We know that the rank is $n$ and the nullity $0$, so the theorem holds in this case. $T$ maps a basis to a basis. Suppose we modify $T$ by mapping the first vector in the basis to $0$. Call the new transformation $T_1$. Clearly, the nullity of $T$ is $1$. What is the rank? In the image of $T$ one of the basis vectors collapses to $0$ when we go to the image of $T_1,$ so the image of $T_1$ has dimension $n-1$ and the theorem hold in this case.



        Now continue the process. If $T_2$ is the same as $T_1$ except that the second basis vector is mapped to $0$, then the nullity will be $2$, and the image will be of dimension $n-2$, because again, one dimension collapses.



        Of course, we can continue until we arrive at $T_n=0$ and the theorem always holds.



        I hope this makes intuitive sense to you.






        share|cite|improve this answer









        $endgroup$
















          4












          4








          4





          $begingroup$

          I like this question. Let me take a shot at it. I think it's best to think of the rank as the dimension of the range (or image).



          Consider first a nonsingular transformation $T$ on an $n-$dimensional vector space. We know that the rank is $n$ and the nullity $0$, so the theorem holds in this case. $T$ maps a basis to a basis. Suppose we modify $T$ by mapping the first vector in the basis to $0$. Call the new transformation $T_1$. Clearly, the nullity of $T$ is $1$. What is the rank? In the image of $T$ one of the basis vectors collapses to $0$ when we go to the image of $T_1,$ so the image of $T_1$ has dimension $n-1$ and the theorem hold in this case.



          Now continue the process. If $T_2$ is the same as $T_1$ except that the second basis vector is mapped to $0$, then the nullity will be $2$, and the image will be of dimension $n-2$, because again, one dimension collapses.



          Of course, we can continue until we arrive at $T_n=0$ and the theorem always holds.



          I hope this makes intuitive sense to you.






          share|cite|improve this answer









          $endgroup$



          I like this question. Let me take a shot at it. I think it's best to think of the rank as the dimension of the range (or image).



          Consider first a nonsingular transformation $T$ on an $n-$dimensional vector space. We know that the rank is $n$ and the nullity $0$, so the theorem holds in this case. $T$ maps a basis to a basis. Suppose we modify $T$ by mapping the first vector in the basis to $0$. Call the new transformation $T_1$. Clearly, the nullity of $T$ is $1$. What is the rank? In the image of $T$ one of the basis vectors collapses to $0$ when we go to the image of $T_1,$ so the image of $T_1$ has dimension $n-1$ and the theorem hold in this case.



          Now continue the process. If $T_2$ is the same as $T_1$ except that the second basis vector is mapped to $0$, then the nullity will be $2$, and the image will be of dimension $n-2$, because again, one dimension collapses.



          Of course, we can continue until we arrive at $T_n=0$ and the theorem always holds.



          I hope this makes intuitive sense to you.







          share|cite|improve this answer












          share|cite|improve this answer



          share|cite|improve this answer










          answered 3 hours ago









          saulspatzsaulspatz

          17.6k31536




          17.6k31536























              2












              $begingroup$

              I like saulspatz' answer because it is very hands-on. I would like to offer another perspective, one based on the fact that linear transformations are characterized by their ranks, up to choice of bases in domain and codomain. The key is in this proposition:



              Proposition. Suppose $Tcolon Vto W$ is a linear transformation with $dim V = n$ and $dim W = m$ and $operatorname{rank} T = r leqslant m$. Then there are bases $v_1,dots,v_n$ for $V$ and $w_1,dots,w_m$ for $W$ such that the matrix for $T$ with respect to these bases is
              $$
              mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & 0_{rtimes n-r} \ 0_{m-rtimes r} & 0_{m-rtimes n-r}end{pmatrix},
              $$

              where $I_{rtimes r}$ is the $rtimes r$ identity matrix, and the various $0_{asttimesast}$ are the zero matrices of the corresponding dimensions. As a quick corollary of the proposition, we can read off of the matrix for $T$ in these bases that
              begin{align*}
              operatorname{rank}T &stackrel{text{def}}{=} dim operatorname{image}T = r, \
              operatorname{nullity}T &stackrel{text{def}}{=} dim ker T = n-r,
              end{align*}

              and hence gain the rank-nullity theorem:
              $$
              dim V = n = r + (n-r) = operatorname{rank}T + operatorname{nullity}T.
              $$

              For a quick proof of the proposition, keeping things as "coarse" as possible for intuition's sake, because the rank of $T$ is $r$, take vectors $v_1,dots,v_r$ in $V$ such that $w_1 = T(v_1),dots,w_r = T(v_r)$ span the image of $T$. Extend $v_1,dots,v_r$ to a basis $v_1,dots,v_r,v_{r+1},dots,v_n$ for $V$ and $w_1,dots,w_r$ to a basis $w_1,dots,w_r,w_{r+1},dots,w_m$ for $W$. With respect to these bases, we quickly determine
              $$
              mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & ast \ 0_{m-rtimes r} & astend{pmatrix}.
              $$

              Because the rank of $T$ is $r$, and the first $r$ columns of the matrix for $T$ are linearly independent, we determine that (possibly after some row and column operations) the two $ast$'s in the above matrix for $T$ have to be the zero matrices of appropriate dimensions, hence the proposition.






              share|cite|improve this answer











              $endgroup$


















                2












                $begingroup$

                I like saulspatz' answer because it is very hands-on. I would like to offer another perspective, one based on the fact that linear transformations are characterized by their ranks, up to choice of bases in domain and codomain. The key is in this proposition:



                Proposition. Suppose $Tcolon Vto W$ is a linear transformation with $dim V = n$ and $dim W = m$ and $operatorname{rank} T = r leqslant m$. Then there are bases $v_1,dots,v_n$ for $V$ and $w_1,dots,w_m$ for $W$ such that the matrix for $T$ with respect to these bases is
                $$
                mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & 0_{rtimes n-r} \ 0_{m-rtimes r} & 0_{m-rtimes n-r}end{pmatrix},
                $$

                where $I_{rtimes r}$ is the $rtimes r$ identity matrix, and the various $0_{asttimesast}$ are the zero matrices of the corresponding dimensions. As a quick corollary of the proposition, we can read off of the matrix for $T$ in these bases that
                begin{align*}
                operatorname{rank}T &stackrel{text{def}}{=} dim operatorname{image}T = r, \
                operatorname{nullity}T &stackrel{text{def}}{=} dim ker T = n-r,
                end{align*}

                and hence gain the rank-nullity theorem:
                $$
                dim V = n = r + (n-r) = operatorname{rank}T + operatorname{nullity}T.
                $$

                For a quick proof of the proposition, keeping things as "coarse" as possible for intuition's sake, because the rank of $T$ is $r$, take vectors $v_1,dots,v_r$ in $V$ such that $w_1 = T(v_1),dots,w_r = T(v_r)$ span the image of $T$. Extend $v_1,dots,v_r$ to a basis $v_1,dots,v_r,v_{r+1},dots,v_n$ for $V$ and $w_1,dots,w_r$ to a basis $w_1,dots,w_r,w_{r+1},dots,w_m$ for $W$. With respect to these bases, we quickly determine
                $$
                mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & ast \ 0_{m-rtimes r} & astend{pmatrix}.
                $$

                Because the rank of $T$ is $r$, and the first $r$ columns of the matrix for $T$ are linearly independent, we determine that (possibly after some row and column operations) the two $ast$'s in the above matrix for $T$ have to be the zero matrices of appropriate dimensions, hence the proposition.






                share|cite|improve this answer











                $endgroup$
















                  2












                  2








                  2





                  $begingroup$

                  I like saulspatz' answer because it is very hands-on. I would like to offer another perspective, one based on the fact that linear transformations are characterized by their ranks, up to choice of bases in domain and codomain. The key is in this proposition:



                  Proposition. Suppose $Tcolon Vto W$ is a linear transformation with $dim V = n$ and $dim W = m$ and $operatorname{rank} T = r leqslant m$. Then there are bases $v_1,dots,v_n$ for $V$ and $w_1,dots,w_m$ for $W$ such that the matrix for $T$ with respect to these bases is
                  $$
                  mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & 0_{rtimes n-r} \ 0_{m-rtimes r} & 0_{m-rtimes n-r}end{pmatrix},
                  $$

                  where $I_{rtimes r}$ is the $rtimes r$ identity matrix, and the various $0_{asttimesast}$ are the zero matrices of the corresponding dimensions. As a quick corollary of the proposition, we can read off of the matrix for $T$ in these bases that
                  begin{align*}
                  operatorname{rank}T &stackrel{text{def}}{=} dim operatorname{image}T = r, \
                  operatorname{nullity}T &stackrel{text{def}}{=} dim ker T = n-r,
                  end{align*}

                  and hence gain the rank-nullity theorem:
                  $$
                  dim V = n = r + (n-r) = operatorname{rank}T + operatorname{nullity}T.
                  $$

                  For a quick proof of the proposition, keeping things as "coarse" as possible for intuition's sake, because the rank of $T$ is $r$, take vectors $v_1,dots,v_r$ in $V$ such that $w_1 = T(v_1),dots,w_r = T(v_r)$ span the image of $T$. Extend $v_1,dots,v_r$ to a basis $v_1,dots,v_r,v_{r+1},dots,v_n$ for $V$ and $w_1,dots,w_r$ to a basis $w_1,dots,w_r,w_{r+1},dots,w_m$ for $W$. With respect to these bases, we quickly determine
                  $$
                  mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & ast \ 0_{m-rtimes r} & astend{pmatrix}.
                  $$

                  Because the rank of $T$ is $r$, and the first $r$ columns of the matrix for $T$ are linearly independent, we determine that (possibly after some row and column operations) the two $ast$'s in the above matrix for $T$ have to be the zero matrices of appropriate dimensions, hence the proposition.






                  share|cite|improve this answer











                  $endgroup$



                  I like saulspatz' answer because it is very hands-on. I would like to offer another perspective, one based on the fact that linear transformations are characterized by their ranks, up to choice of bases in domain and codomain. The key is in this proposition:



                  Proposition. Suppose $Tcolon Vto W$ is a linear transformation with $dim V = n$ and $dim W = m$ and $operatorname{rank} T = r leqslant m$. Then there are bases $v_1,dots,v_n$ for $V$ and $w_1,dots,w_m$ for $W$ such that the matrix for $T$ with respect to these bases is
                  $$
                  mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & 0_{rtimes n-r} \ 0_{m-rtimes r} & 0_{m-rtimes n-r}end{pmatrix},
                  $$

                  where $I_{rtimes r}$ is the $rtimes r$ identity matrix, and the various $0_{asttimesast}$ are the zero matrices of the corresponding dimensions. As a quick corollary of the proposition, we can read off of the matrix for $T$ in these bases that
                  begin{align*}
                  operatorname{rank}T &stackrel{text{def}}{=} dim operatorname{image}T = r, \
                  operatorname{nullity}T &stackrel{text{def}}{=} dim ker T = n-r,
                  end{align*}

                  and hence gain the rank-nullity theorem:
                  $$
                  dim V = n = r + (n-r) = operatorname{rank}T + operatorname{nullity}T.
                  $$

                  For a quick proof of the proposition, keeping things as "coarse" as possible for intuition's sake, because the rank of $T$ is $r$, take vectors $v_1,dots,v_r$ in $V$ such that $w_1 = T(v_1),dots,w_r = T(v_r)$ span the image of $T$. Extend $v_1,dots,v_r$ to a basis $v_1,dots,v_r,v_{r+1},dots,v_n$ for $V$ and $w_1,dots,w_r$ to a basis $w_1,dots,w_r,w_{r+1},dots,w_m$ for $W$. With respect to these bases, we quickly determine
                  $$
                  mathcal M(T,v_1,dots,v_n,w_1,dots,w_m) = begin{pmatrix} I_{rtimes r} & ast \ 0_{m-rtimes r} & astend{pmatrix}.
                  $$

                  Because the rank of $T$ is $r$, and the first $r$ columns of the matrix for $T$ are linearly independent, we determine that (possibly after some row and column operations) the two $ast$'s in the above matrix for $T$ have to be the zero matrices of appropriate dimensions, hence the proposition.







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                  edited 1 hour ago

























                  answered 2 hours ago









                  Alex OrtizAlex Ortiz

                  11.6k21442




                  11.6k21442






























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