Definition
Matrix Polynomial
Characteristic polynomial: a polynomial associated with a square matrix A. Form: p(λ) = det(λI - A). Degree: n for n×n matrix.
Variable and Coefficients
Variable λ: scalar parameter. Coefficients: functions of matrix entries, typically real or complex.
Domain and Codomain
Polynomial over field F (commonly ℝ or ℂ). Maps scalar λ to determinant in F.
Construction
Identity Matrix Scale
Form λI: scalar λ multiplied by identity matrix. Ensures dimension and operator compatibility.
Matrix Subtraction
Subtraction λI - A: matrix polynomial in λ. Results in matrix-valued polynomial.
Determinant Operation
Determinant det(λI - A): scalar polynomial. Encodes eigenvalue information.
p(λ) = det(λI - A)Properties
Degree and Leading Coefficient
Degree = n (size of matrix). Leading coefficient = 1 (monic polynomial).
Coefficient Relationships
Constant term = (−1)ⁿ det(A). Coefficient of λ^{n-1} = −tr(A).
Invariant under Similarity
Characteristic polynomial unchanged by similarity transformations: p_A(λ) = p_{P^{-1}AP}(λ).
Real and Complex Roots
Roots correspond to eigenvalues; may be complex even if matrix is real.
Relation to Eigenvalues
Definition of Eigenvalues
Eigenvalues λ satisfy (A - λI)v = 0 for nonzero vector v.
Roots of Characteristic Polynomial
Eigenvalues = roots of p(λ) = 0. Multiplicity corresponds to algebraic multiplicity.
Geometric vs Algebraic Multiplicity
Algebraic multiplicity: multiplicity as root of p(λ). Geometric multiplicity: dimension of eigenspace.
Spectrum of Matrix
Spectrum = set of eigenvalues = roots of characteristic polynomial.
Computational Methods
Determinant Expansion
Use Laplace expansion or cofactor expansion for det(λI - A). Computationally expensive for large n.
Leverrier-Faddeev Algorithm
Recursive formula to compute coefficients using traces of powers of A.
Use of Eigenvalue Algorithms
Numerical methods (QR algorithm) compute eigenvalues, indirectly giving roots of characteristic polynomial.
Symbolic Computation
Computer algebra systems (Mathematica, Maple) calculate characteristic polynomial symbolically.
Let A be n×n matrix:Initialize B_0 = IFor k=1 to n: c_k = -(1/k) * tr(A*B_{k-1}) B_k = A*B_{k-1} + c_k*ICharacteristic polynomial:p(λ) = λ^n + c_1 λ^{n-1} + ... + c_nExamples
2×2 Matrix
Matrix: A = [[a, b], [c, d]]. Characteristic polynomial: p(λ) = λ² - (a+d)λ + (ad - bc).
3×3 Matrix
Matrix: A = [[a, b, c], [d, e, f], [g, h, i]]. Polynomial degree 3 with coefficients from traces and determinants.
Diagonal Matrix
Eigenvalues = diagonal entries. Characteristic polynomial: product of (λ - a_ii).
Nilpotent Matrix
All eigenvalues zero. Characteristic polynomial: λ^n.
| Matrix A | Characteristic Polynomial p(λ) |
|---|---|
| [[2, 1], [0, 3]] | λ² - 5λ + 6 |
| [[0, 1], [0, 0]] | λ² |
Algebraic Multiplicity
Definition
Multiplicity of eigenvalue as root of characteristic polynomial.
Examples
Eigenvalue λ=3 with multiplicity 2 implies (λ - 3)² divides p(λ).
Relation to Jordan Form
Algebraic multiplicity ≥ geometric multiplicity. Determines size of Jordan blocks.
Implications
Multiplicity affects diagonalizability and eigenstructure complexity.
Cayley-Hamilton Theorem
Statement
Every square matrix satisfies its own characteristic polynomial.
Formal Expression
p(A) = 0Consequences
Used to compute matrix functions, powers, and minimal polynomial relations.
Proof Sketch
Via adjugate matrix properties or polynomial factorization over algebraic closure.
Applications
Eigenvalue Determination
Roots of characteristic polynomial identify eigenvalues critical in systems analysis.
Diagonalization Criteria
Multiplicity and roots guide diagonalizability and canonical form derivation.
Control Theory
Characteristic polynomial used in stability analysis of dynamical systems.
Quantum Mechanics
Operator spectra linked to characteristic polynomial roots.
Characteristic Polynomial of Linear Transformations
Definition
For linear operator T: V → V, polynomial p(λ) = det(λI - [T]_B).
Basis Independence
Polynomial invariant under choice of basis due to similarity invariance.
Representation
Matrix representation required to compute polynomial explicitly.
Extension to Infinite Dimensions
Characteristic polynomial defined only for finite-dimensional linear operators.
Generalizations
Minimal Polynomial
Minimal polynomial divides characteristic polynomial; captures minimal annihilating polynomial.
Characteristic Polynomial over Rings
Defined for matrices over commutative rings with unity; properties vary.
Multilinear Algebra Extensions
Characteristic polynomial concept extends to tensor algebra and multilinear maps.
Pencils and Parameter-Dependent Polynomials
Generalized characteristic polynomials appear in matrix pencils and parameterized systems.
Limitations and Caveats
Computational Complexity
Determinant calculation expensive for large matrices; numerical methods preferred.
Numerical Stability
Characteristic polynomial sensitive to perturbations; eigenvalue computations may be unstable.
Non-Uniqueness of Eigenvectors
Polynomial roots do not determine eigenvectors uniquely; geometric multiplicity varies.
Not Always Diagonalizable
Repeated roots may correspond to defective matrices; Jordan form needed.
References
- Horn, R. A., & Johnson, C. R. "Matrix Analysis." Cambridge University Press, vol. 2, 2013, pp. 45-95.
- Strang, G. "Introduction to Linear Algebra." Wellesley-Cambridge Press, 5th ed., 2016, pp. 200-245.
- Axler, S. "Linear Algebra Done Right." Springer, 3rd ed., 2015, pp. 120-160.
- Lay, D. C. "Linear Algebra and Its Applications." Pearson, 5th ed., 2015, pp. 350-400.
- Shilov, G. E. "Linear Algebra." Dover Publications, 1977, pp. 78-110.