چکیده
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Spectral analysis of signals defined on Directed
Acyclic Graphs (DAGs) poses significant challenges due to
the presence of zero eigenvalues in the adjacency matrix and
equivalent shift operators, such as the random walk matrix.
This characteristic hinders the differentiation between spectral
components of signals on such graphs, rendering conventional
spectral analysis impossible. To mitigate this issue, a zeropadding technique for signals defined on DAGs was recently
proposed. Given the similarity between the properties of the
random walk matrix and the adjacency matrix, this paper
explores the feasibility of Fourier analysis using the eigendecomposition basis of such matrices. The extension of the
zero-padding concept to signals on DAGs described by the
random walk matrix involves introducing additional nodes
connected to the existing structure, with the signal values on
these added nodes set to zero. The primary objective of this
approach is to facilitate the computation of vertex-domain
convolution, thereby enabling the output of graph filters without
encountering aliasing issues.
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