Diagonalization

Diagonalization Practice Questions, Quiz, and Step-by-Step Lesson - improve your math skills with focused questions and clear explanations.

If \(D=\operatorname{diag}(0,1,2)\), what is the rank of \(D\)?
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Diagonalization

Diagonalization Practice Quiz with a Step-by-Step Interactive Lesson

Use the quiz at the top of the page to practice diagonalization: recognizing when a matrix has an eigenbasis, reading and building \(A=PDP^{-1}\), matching eigenvectors in \(P\) with eigenvalues in \(D\), using distinct eigenvalues as a fast sufficient test, checking repeated eigenvalues through geometric multiplicity, spotting Jordan-block traps, computing powers as \(A^n=PD^nP^{-1}\), and using eigenvalues for trace, determinant, rank, invertibility, projections, nilpotent cases, and minimal-polynomial checks. If you want a refresher, open the lesson for mentally followable examples and checks.

How this diagonalization practice works

  • 1. Take the quiz: answer eigenbasis, similarity, powers, repeated eigenvalue, and matrix invariant questions at the top of the page.
  • 2. Open the lesson: review what \(A=PDP^{-1}\) means, how to test for enough eigenvectors, and how to use the diagonal form.
  • 3. Retry: return to the quiz and ask whether the matrix has a full basis of eigenvectors.

What you will learn in the diagonalization lesson

Meaning of \(A=PDP^{-1}\)

  • Diagonalizable: there is a basis made of eigenvectors
  • \(P\): columns are eigenvectors in the chosen order
  • \(D\): diagonal entries are the matching eigenvalues

Tests for diagonalizability

  • In dimension \(n\), diagonalization needs \(n\) linearly independent eigenvectors
  • Distinct eigenvalues guarantee independent eigenvectors
  • Repeated eigenvalues require eigenspace dimensions, not just the characteristic polynomial

Constructing and using the form

  • Build \(P\) from an eigenbasis and put matching eigenvalues on \(D\)
  • Use \(A^n=PD^nP^{-1}\) because diagonal powers are entry-by-entry
  • Trace, determinant, rank, and invertibility become quick diagonal checks

Structure and traps

  • A nontrivial Jordan block has too few eigenvectors and is not diagonalizable
  • A diagonalizable matrix with one eigenvalue \(\lambda\) is \(\lambda I\)
  • The field matters: some real matrices diagonalize only after allowing complex eigenvectors

Back to the quiz

When you are ready, return to the quiz at the top of the page and keep practicing diagonalization.