Learning under Latent Group Sparsity via Diffusion on Networks
Subhroshekhar Ghosh, Soumendu Sundar Mukherjee

TL;DR
This paper introduces a diffusion-based regularization method for sparse learning that leverages network community structure without prior group information, blending lasso and group lasso penalties.
Contribution
It proposes a novel penalty based on heat-flow dynamics on networks, automatically adapting to the strength of group structure and avoiding intensive pre-processing.
Findings
The method guarantees effective performance with logarithmic diffusion time.
It interpolates between lasso and group lasso based on network structure.
The approach is supported by rigorous theoretical bounds.
Abstract
Group or cluster structure on explanatory variables in machine learning problems is a very general phenomenon, which has attracted broad interest from practitioners and theoreticians alike. In this work we contribute an approach to sparse learning under such group structure, that does not require prior information on the group identities. Our paradigm is motivated by the Laplacian geometry of an underlying network with a related community structure, and proceeds by directly incorporating this into a penalty that is effectively computed via a heat-flow-based local network dynamics. The proposed penalty interpolates between the lasso and the group lasso penalties, the runtime of the heat-flow dynamics being the interpolating parameter. As such it can automatically default to lasso when the group structure reflected in the Laplacian is weak. In fact, we demonstrate a data-driven procedure…
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