Jordan Form & Generalized Eigenvectors Practice Questions, Quiz, and Step-by-Step Lesson - improve your math skills with focused questions and clear explanations.
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A diagonal matrix is a Jordan form with blocks of size:
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Jordan Form & Generalized Eigenvectors
Jordan Form & Generalized Eigenvectors Practice Quiz with a Step-by-Step Interactive Lesson
Use the quiz at the top of the page to practice Jordan form and generalized eigenvectors: Jordan blocks \(J_k(\lambda)\), nilpotent parts, ordinary and generalized eigenvectors, Jordan chains, algebraic versus geometric multiplicity, generalized eigenspaces \(\ker((A-\lambda I)^k)\), minimal polynomial exponents, diagonalizability criteria, nilpotency index, trace, determinant, and field issues. Open the lesson for compact worked examples and quick checks.
How this Jordan form practice works
- 1. Take the quiz: answer questions about blocks, chains, kernels, minimal polynomials, nilpotent powers, and diagonalizability.
- 2. Open the lesson: review the definitions, recognition tests, worked examples, and single-answer checks.
- 3. Retry: return to the quiz and first decide whether the problem asks for a block size, a chain relation, a multiplicity, or a polynomial exponent.
What you will learn in the Jordan form and generalized eigenvectors lesson
Jordan blocks
- Block shape: \(J_k(\lambda)\) has \(\lambda\) on the diagonal and \(1\) on the superdiagonal
- Nilpotent part: \(J_k(\lambda)-\lambda I\) dies at power \(k\)
- Diagonal form: all blocks have size \(1\)
Generalized eigenvectors
- Generalized: \((A-\lambda I)^k v=0\) for some \(k\ge1\)
- Chain: \((A-\lambda I)v_1=0\) and \((A-\lambda I)v_i=v_{i-1}\)
- Rank: if \(Nv≠0\) but \(N^2v=0\), the vector sits above an eigenvector
Multiplicities and kernels
- Algebraic multiplicity: total size of all \(\lambda\)-blocks
- Geometric multiplicity: number of \(\lambda\)-blocks
- Kernels: \(\dim\ker(A-\lambda I)\) counts eigenvector directions
Minimal polynomial and traps
- Largest block: exponent of \(X-\lambda\) in \(m_A(X)\)
- Diagonalizable: geometric multiplicity equals algebraic multiplicity for every eigenvalue
- Field: full Jordan form is guaranteed over an algebraically closed field such as \(\mathbb{C}\)
Back to the quiz
When you are ready, return to the quiz at the top of the page and keep practicing Jordan form and generalized eigenvectors.

