Proceedings Article10.1145/2723372.2723734
Influence Maximization in Near-Linear Time: A Martingale Approach
Youze Tang,Yanchen Shi,Xiaokui Xiao +2 more
- 27 May 2015
 - pp 1539-1554
864
TL;DR: The proposed influence maximization algorithm is a set of estimation techniques based on martingales, a classic statistical tool that provides the same worst-case guarantees as the state of the art, but offers significantly improved empirical efficiency.
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Abstract:Â Given a social network G and a positive integer k, the influence maximization problem asks for k nodes (in G) whose adoptions of a certain idea or product can trigger the largest expected number of follow-up adoptions by the remaining nodes This problem has been extensively studied in the literature, and the state-of-the-art technique runs in O((k+l) (n+m) log n e2) expected time and returns a (1-1 e-e)-approximate solution with at least 1 - 1/n l probability This paper presents an influence maximization algorithm that provides the same worst-case guarantees as the state of the art, but offers significantly improved empirical efficiency The core of our algorithm is a set of estimation techniques based on martingales, a classic statistical tool Those techniques not only provide accurate results with small computation overheads, but also enable our algorithm to support a larger class of information diffusion models than existing methods do We experimentally evaluate our algorithm against the states of the art under several popular diffusion models, using real social networks with up to 14 billion edges Our experimental results show that the proposed algorithm consistently outperforms the states of the art in terms of computation efficiency, and is often orders of magnitude faster
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Citations
Pricing influential nodes in online social networks
Yuqing Zhu,Jing Tang,Xueyan Tang +2 more
- 01 Jun 2020
TL;DR: This paper designs a function characterizing the divergence between the price and the expected influence of the initiators of marketing campaigns without the knowledge of OSN structures, and develops an advanced algorithm to estimate the price profile with accuracy guarantees.
Optimizing Network Resilience via Vertex Anchoring
Siyi Teng,Jiadong Xie,Fan Zhang,Can Lu,Kai Wang +4 more
- 13 May 2024
TL;DR: Optimizing network resilience via vertex anchoring is NP-hard and W[2]-hard, and it is NP-hard to approximate within an Ă (n 1 â Îľ) factor. An advanced greedy approach and a time-dependent framework are proposed to find high-quality solutions.
Multi-Task Diffusion Incentive Design for Mobile Crowdsourcing in Social Networks
Jianxiong Guo,Qiufen Ni,Weili Wu,DingâZhu Du +3 more
TL;DR: Multi-task diffusion incentive design for mobile crowdsourcing in social networks maximizes the total utility of performing multiple tasks under a budget.
Balanced Influence Maximization in the Presence of Homophily
Sanzeed Anwar,Martin Saveski,Deb Roy +2 more
- 08 Mar 2021
TL;DR: In this paper, the authors investigate how structural homophily (i.e., the tendency to connect to similar others) and influence diffusion homophiness (e.g., tendency to be influenced by similar others), affect the balance among the activated nodes and propose an algorithm that jointly maximizes the influence and balance among nodes.
â˘Posted Content
DISCO: Influence Maximization Meets Network Embedding and Deep Learning.
TL;DR: A novel framework called DISCO is presented that incorporates network embedding and deep reinforcement learning techniques to address the IM problem by leveraging deep learning models to estimate the expected influence and it is shown that the learning model exhibits good generality.
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David Kempe,Jon Kleinberg,Ăva Tardos +2 more
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TL;DR: The problem of finding the most influential nodes in a social network is NP-hard as mentioned in this paper, and the first provable approximation guarantees for efficient algorithms were provided by Domingos et al. using an analysis framework based on submodular functions.
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