DIS-NNITLGOct 14, 2016

Spectral Inference Methods on Sparse Graphs: Theory and Applications

arXiv:1610.04337v17 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of large-scale network analysis for researchers in data science and statistical physics, though it appears incremental as it builds on existing spectral and mean-field approaches.

The dissertation tackled the challenge of inferring macroscopic properties from microscopic interactions in sparse graphs by developing a spectral inference theory based on statistical physics methods, achieving efficient results in problems like community detection and matrix completion.

In an era of unprecedented deluge of (mostly unstructured) data, graphs are proving more and more useful, across the sciences, as a flexible abstraction to capture complex relationships between complex objects. One of the main challenges arising in the study of such networks is the inference of macroscopic, large-scale properties affecting a large number of objects, based solely on the microscopic interactions between their elementary constituents. Statistical physics, precisely created to recover the macroscopic laws of thermodynamics from an idealized model of interacting particles, provides significant insight to tackle such complex networks. In this dissertation, we use methods derived from the statistical physics of disordered systems to design and study new algorithms for inference on graphs. Our focus is on spectral methods, based on certain eigenvectors of carefully chosen matrices, and sparse graphs, containing only a small amount of information. We develop an original theory of spectral inference based on a relaxation of various mean-field free energy optimizations. Our approach is therefore fully probabilistic, and contrasts with more traditional motivations based on the optimization of a cost function. We illustrate the efficiency of our approach on various problems, including community detection, randomized similarity-based clustering, and matrix completion.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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