Open AccessPosted Content
Multi-Round Influence Maximization
TL;DR: This paper designs scalable algorithms based on the reverse influence sampling approach and achieves near-linear running time for the Multi-Round Influence Maximization (MRIM) problem, where influence propagates in multiple rounds independently from possibly different seed sets.
read more
Abstract: In this paper, we study the Multi-Round Influence Maximization (MRIM) problem, where influence propagates in multiple rounds independently from possibly different seed sets, and the goal is to select seeds for each round to maximize the expected number of nodes that are activated in at least one round. MRIM problem models the viral marketing scenarios in which advertisers conduct multiple rounds of viral marketing to promote one product. We consider two different settings: 1) the non-adaptive MRIM, where the advertiser needs to determine the seed sets for all rounds at the very beginning, and 2) the adaptive MRIM, where the advertiser can select seed sets adaptively based on the propagation results in the previous rounds. For the non-adaptive setting, we design two algorithms that exhibit an interesting tradeoff between efficiency and effectiveness: a cross-round greedy algorithm that selects seeds at a global level and achieves $1/2 - \varepsilon$ approximation ratio, and a within-round greedy algorithm that selects seeds round by round and achieves $1-e^{-(1-1/e)}-\varepsilon \approx 0.46 - \varepsilon$ approximation ratio but saves running time by a factor related to the number of rounds. For the adaptive setting, we design an adaptive algorithm that guarantees $1-e^{-(1-1/e)}-\varepsilon$ approximation to the adaptive optimal solution. In all cases, we further design scalable algorithms based on the reverse influence sampling approach and achieve near-linear running time. We conduct experiments on several real-world networks and demonstrate that our algorithms are effective for the MRIM task.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
•Posted Content
A Survey on Influence Maximization in a Social Network
TL;DR: In this paper, the authors present a survey on the progress in and around the TSS problem and discuss current research trends and future research directions, as well as discuss current and future directions as well.
124
Efficiently Targeted Billboard Advertising Using Crowdsensing Vehicle Trajectory Data
TL;DR: This paper proposes a quantitative model to quantify advertisement influence spread, and employs a divide-and-conquer mechanism, and proposes a utility evaluation-based optimal searching approach for solving large combinatorial optimization problem.
59
An Issue in the Martingale Analysis of the Influence Maximization Algorithm IMM.
Wei Chen
- 18 Dec 2018
TL;DR: Two workarounds are proposed to fix the issue in the martingale analysis of the IMM algorithm, a state-of-the-art influence maximization algorithm, both requiring minor changes on the algorithm and incurring a slight penalty on the running time.
36
Multi-task Learning for Influence Estimation and Maximization
TL;DR: In this article, a multi-task neural network is used to learn embeddings of nodes that initiate cascades and embedding of the nodes that participate in them (susceptible vectors), which are used to reformulate the computation of the influence spread and propose a greedy solution to influence maximization.
28
Time-Constrained Adaptive Influence Maximization
TL;DR: In this article, a time-constrained adaptive influence maximization problem (IM) is proposed to maximize the influence of one information cascade in a social network by selecting appropriate seed users prior to the diffusion process.
27
References
Maximizing the spread of influence through a social network
David Kempe,Jon Kleinberg,Éva Tardos +2 more
- 24 Aug 2003
TL;DR: An analysis framework based on submodular functions shows that a natural greedy strategy obtains a solution that is provably within 63% of optimal for several classes of models, and suggests a general approach for reasoning about the performance guarantees of algorithms for these types of influence problems in social networks.
Maximizing the Spread of Influence through a Social Network
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.
An analysis of approximations for maximizing submodular set functions--I
TL;DR: It is shown that a “greedy” heuristic always produces a solution whose value is at least 1 −[(K − 1/K]K times the optimal value, which can be achieved for eachK and has a limiting value of (e − 1)/e, where e is the base of the natural logarithm.
5.2K
•Posted Content
An analysis of approximations for maximizing submodular set functions II
Marshall L. Fisher,George L. Nemhauser,Laurence A. Wolsey +2 more
- 01 Jan 1978
TL;DR: In this article, the authors considered the problem of finding a maximum weight independent set in a matroid, where the elements of the matroid are colored and the items of the independent set can have no more than K colors.
3.5K
Mining the network value of customers
Pedro Domingos,Matthew Richardson +1 more
- 26 Aug 2001
TL;DR: It is proposed to model also the customer's network value: the expected profit from sales to other customers she may influence to buy, the customers those may influence, and so on recursively, taking advantage of the availability of large relevant databases.
3.3K
Related Papers (5)
Lichao Sun,Weiran Huang,Philip S. Yu,Wei Chen +3 more
- 19 Jul 2018
Jong-Ryul Lee,Chin-Wan Chung +1 more
- 07 Apr 2014
Kai Sheng,Zhi Zhang +1 more
- 01 May 2018