UP | HOME

rank nullity theorem

1 theorem

For vector spaces \(V\) and \(W\) and a linear mapping \(\Phi : V \rightarrow W\): \[ \dim(\ker(\Phi)) + \dim(\ker(\text{image}(\Phi))) = \dim(V) \]

1.1 things to remember

  • the kernel is everything in \(V\) that gets sent to 0
  • to find the dimension of the kernel and the image, we are often going to be looking at the transformation matrix \(\mathbf{A}_{\Phi}\) for \(\Phi\).
    • Remember that \(A_{\Phi}\) is given with respect to a specific coordinate system for \(V\) and \(W\) (see change of basis note)
  • \(\dim(\text{image}(\Phi)) = \text{rank}(\mathbf{A}_{\Phi})\). Remember that dimension is the number of vectors in a basis for a vector space.

Created: 2021-09-14 Tue 21:44