Age of Information Diffusion on Social Networks
Songhua Li, Lingjie Duan

TL;DR
This paper studies the optimization of multi-stage viral marketing in social networks using age of information metrics, providing new algorithms with proven approximation guarantees for minimizing peak and average AoI.
Contribution
It introduces the first analysis of AoI dynamics in multi-stage social network seeding, proving NP-hardness and developing approximation algorithms with theoretical guarantees.
Findings
Developed closed-form expressions for AoI dynamics in social networks.
Proved NP-hardness of peak and average AoI minimization problems.
Designed polynomial-time approximation algorithms with guarantees.
Abstract
To promote viral marketing, major social platforms (e.g., Facebook Marketplace and Pinduoduo) repeatedly select and invite different users (as seeds) in online social networks to share fresh information about a product or service with their friends. Thereby, we are motivated to optimize a multi-stage seeding process of viral marketing in social networks, and adopt the recent notions of the peak and the average age of information (AoI) to measure the timeliness of promotion information received by network users. Our problem is different from the literature on information diffusion in social networks, which limits to one-time seeding and overlooks AoI dynamics or information replacement over time. As a critical step, we manage to develop closed-form expressions that characterize and trace AoI dynamics over any social network. For the peak AoI problem, we first prove the NP-hardness of our…
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Taxonomy
TopicsAge of Information Optimization · Opportunistic and Delay-Tolerant Networks · IoT Networks and Protocols
