Eigenvalue superposition expansion for Toeplitz matrix-sequences, generated by linear combinations of matrix-order dependent symbols, and applications to fast eigenvalue comput

12/22/2021
by   M. Bogoya, et al.
0

The eigenvalues of Toeplitz matrices T_n(f) with a real-valued symbol f, satisfying some conditions and tracing out a simple loop over the interval [-π,π], are known to admit an asymptotic expansion with the form λ_j(T_n(f))=f(d_j,n)+c_1(d_j,n)h+c_2(d_j,n)h^2+O(h^3), where h=1/n+1, d_j,n=π j h, and c_k are some bounded coefficients depending only on f. The numerical results presented in the literature suggests that the effective conditions for the expansion to hold are weaker and reduce to an even character of f, to a fixed smoothness, and to its monotonicity over [0,π]. In this note we investigate the superposition caused over this expansion, when considering a linear combination of symbols that is λ_j(T_n(f_0)+β_n^(1) T_n(f_1) + β_n^(2) T_n(f_2) +⋯), where β_n^(t)=o(β_n^(s)) if t>s and the symbols f_j are either simple loop or satisfy the weaker conditions mentioned before. We prove that the asymptotic expansion holds also in this setting under mild assumptions and we show numerically that there is much more to investigate, opening the door to linear in time algorithms for the computation of eigenvalues of large matrices of this type. The problem is of concrete interest in particular in the case where the coefficients of the linear combination are functions of h, considering spectral features of matrices stemming from the numerical approximation of standard differential operators and distributed order fractional differential equations, via local methods such as Finite Differences, Finite Elements, Isogeometric Analysis etc.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset