SICGDSCOMLAug 25, 2017

Network Essence: PageRank Completion and Centrality-Conforming Markov Chains

arXiv:1708.07906v1
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of interpreting complex network data in fields like social and information networks, but is incremental as it synthesizes known properties in a broader context.

The paper explores the concept of network essence by analyzing algebraic properties of personalized PageRank matrices, which serve as a Markovian completion of network data, aiming to advance network theory for understanding sparse and multifaceted networks.

Jiří Matoušek (1963-2015) had many breakthrough contributions in mathematics and algorithm design. His milestone results are not only profound but also elegant. By going beyond the original objects --- such as Euclidean spaces or linear programs --- Jirka found the essence of the challenging mathematical/algorithmic problems as well as beautiful solutions that were natural to him, but were surprising discoveries to the field. In this short exploration article, I will first share with readers my initial encounter with Jirka and discuss one of his fundamental geometric results from the early 1990s. In the age of social and information networks, I will then turn the discussion from geometric structures to network structures, attempting to take a humble step towards the holy grail of network science, that is to understand the network essence that underlies the observed sparse-and-multifaceted network data. I will discuss a simple result which summarizes some basic algebraic properties of personalized PageRank matrices. Unlike the traditional transitive closure of binary relations, the personalized PageRank matrices take "accumulated Markovian closure" of network data. Some of these algebraic properties are known in various contexts. But I hope featuring them together in a broader context will help to illustrate the desirable properties of this Markovian completion of networks, and motivate systematic developments of a network theory for understanding vast and ubiquitous multifaceted network data.

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