Abstract
In a recent breakthrough STOC 2015 paper, a continuous diffusion process was considered on hypergraphs (which has been refined in a recent JACM 2018 paper) to define a Laplacian operator, whose spectral properties satisfy the celebrated Cheeger’s inequality. However, one peculiar aspect of this diffusion process is that each hyperedge directs flow only from vertices with the maximum density to those with the minimum density, while ignoring vertices having strict in-beween densities.
In this work, we consider a generalized diffusion process, in which vertices in a hyperedge can act as mediators to receive flow from vertices with maximum density and deliver flow to those with minimum density. We show that the resulting Laplacian operator still has a second eigenvalue satisfying the Cheeger’s inequality.
Our generalized diffusion model shows that there is a family of operators whose spectral properties are related to hypergraph conductance, and provides a powerful tool to enhance the development of spectral hypergraph theory. Moreover, since every vertex can participate in the new diffusion model at every instant, this can potentially have wider practical applications.
The full version of this paper is available online [3].
T.-H. H. Chan—This work was partially supported by the Hong Kong RGC under the grant 17200817.
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Notes
- 1.
In fact, as shown in the full version [3], a stronger upper bound holds: \(\phi _H \le \sqrt{2 \gamma _2}\).
- 2.
In the literature, the weighted Laplacian is actually \(\mathsf {W} \mathsf {L} _w\) in our notation. Hence, to avoid confusion, we restrict the term Laplacian to the normalized space.
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Chan, TH.H., Liang, Z. (2018). Generalizing the Hypergraph Laplacian via a Diffusion Process with Mediators. In: Wang, L., Zhu, D. (eds) Computing and Combinatorics. COCOON 2018. Lecture Notes in Computer Science(), vol 10976. Springer, Cham. https://doi.org/10.1007/978-3-319-94776-1_37
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DOI: https://doi.org/10.1007/978-3-319-94776-1_37
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