Spectral Evolution with Approximated Eigenvalue Trajectories for Link
Prediction
- URL: http://arxiv.org/abs/2006.12657v1
- Date: Mon, 22 Jun 2020 22:42:50 GMT
- Title: Spectral Evolution with Approximated Eigenvalue Trajectories for Link
Prediction
- Authors: Miguel Romero, Jorge Finke, Camilo Rocha, Luis Tob\'on
- Abstract summary: This paper presents a method to compute an approximation of the spectral evolution of eigenvalues based on the Rayleigh quotient.
It then proposes an algorithm to estimate the evolution of eigenvalues by extrapolating only a fraction of their approximated values.
The proposed model is used to characterize mention networks of users who posted tweets that include the most popular political hashtags in Colombia.
- Score: 0.19116784879310028
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The spectral evolution model aims to characterize the growth of large
networks (i.e., how they evolve as new edges are established) in terms of the
eigenvalue decomposition of the adjacency matrices. It assumes that, while
eigenvectors remain constant, eigenvalues evolve in a predictable manner over
time. This paper extends the original formulation of the model twofold.
First, it presents a method to compute an approximation of the spectral
evolution of eigenvalues based on the Rayleigh quotient.
Second, it proposes an algorithm to estimate the evolution of eigenvalues by
extrapolating only a fraction of their approximated values.
The proposed model is used to characterize mention networks of users who
posted tweets that include the most popular political hashtags in Colombia from
August 2017 to August 2018 (the period which concludes the disarmament of the
Revolutionary Armed Forces of Colombia). To evaluate the extent to which the
spectral evolution model resembles these networks, link prediction methods
based on learning algorithms (i.e., extrapolation and regression) and graph
kernels are implemented. Experimental results show that the learning algorithms
deployed on the approximated trajectories outperform the usual kernel and
extrapolation methods at predicting the formation of new edges.
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