Spectral Methods in Complex Systems

arXiv:2509.05793v21 citationsh-index: 1
Originality Synthesis-oriented
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It serves as an accessible reference for researchers and students interested in applying spectral techniques to diverse problems in complex systems.

The paper provides a unified introduction to spectral methods for analyzing complex systems, focusing on practical tools and applications across disciplines such as physics, computer science, and economics.

These notes offer a unified introduction to spectral methods for the study of complex systems. They are intended as an operative manual rather than a theorem-proof textbook: the emphasis is on tools, identities, and perspectives that can be readily applied across disciplines. Beginning with a compendium of matrix identities and inversion techniques, the text develops the connections between spectra, dynamics, and structure in finite-dimensional systems. Applications range from dynamical stability and random walks on networks to input-output economics, PageRank, epidemic spreading, memristive circuits, synchronization phenomena, and financial stability. Throughout, the guiding principle is that eigenvalues, eigenvectors, and resolvent operators provide a common language linking problems in physics, mathematics, computer science, and beyond. The presentation is informal, accessible to advanced undergraduates, yet broad enough to serve as a reference for researchers interested in spectral approaches to complex systems.

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