Efficient Approximation Algorithms for Adaptive Seed Minimization
Jing Tang,Keke Huang,Xiaokui Xiao,Laks V. S. Lakshmanan,Xueyan Tang,Aixin Sun,Andrew Lim +6 more
- 25 Jun 2019
- pp 1096-1113
35
TL;DR: A novel algorithm, ASTI, is proposed, which addresses the adaptive seed minimization problem in O\Big(\fracη \cdot (m+n) \varepsilon^2 łn n \Big)$ expected time and offers an approximation guarantee of $\frac(łn η+1)^2 (1 - (1-1/b)^b)
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Abstract: As a dual problem of influence maximization, the seed minimization problem asks for the minimum number of seed nodes to influence a required number η of users in a given social network G. Existing algorithms for seed minimization mostly consider the non-adaptive setting, where all seed nodes are selected in one batch without observing how they may influence other users. In this paper, we study seed minimization in the adaptive setting, where the seed nodes are selected in several batches, such that the choice of a batch may exploit information about the actual influence of the previous batches. We propose a novel algorithm, ASTI, which addresses the adaptive seed minimization problem in $O\Big(\fracη \cdot (m+n) \varepsilon^2 ln n \Big)$ expected time and offers an approximation guarantee of $\frac(ln η+1)^2 (1 - (1-1/b)^b) (1-1/e)(1-\varepsilon) $ in expectation, where η is the targeted number of influenced nodes, b is size of each seed node batch, and $\varepsilon \in (0, 1)$ is a user-specified parameter. To the best of our knowledge, ASTI is the first algorithm that provides such an approximation guarantee without incurring prohibitive computation overhead. With extensive experiments on a variety of datasets, we demonstrate the effectiveness and efficiency of ASTI over competing methods.
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Citations
SIGMOD '22: International Conference on Management of Data, Philadelphia, PA, USA, June 12 - 17, 2022
10 Jun 2022
TL;DR: SIGMOD 2017 as discussed by the authors was held in a hybrid format, with a special emphasis on bringing back much-needed face-to-face interactions among our community, where questions and discussions were handled asynchronously through Slack channels and synchronous sessions were held at the conference where presentations were viewed inperson and live-streamed, and the audience and speakers could interact.
•Posted Content
Efficient Approximation Algorithms for Adaptive Influence Maximization
TL;DR: This paper proposes a general framework AdaptGreedy that could be instantiated by any existing non-adaptive IM algorithms with expected approximation guarantee, and proposes a novel non- adaptive IM algorithm called EPIC which not only provides strong expected approximation guarantees, but also presents superior performance compared with the existing IM algorithms.
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•Proceedings Article
Adaptive Influence Maximization with Myopic Feedback
Binghui Peng,Wei Chen +1 more
- 01 Dec 2019
TL;DR: In this paper, the adaptive influence maximization problem with myopic feedback under the independent cascade model was studied, and the adaptive gap between the optimal adaptive influence spread and the optimal non-adaptive influence spread was shown to be at most 4 and at least e/(e-1).
Adaptive Influence Maximization: If Influential Node Unwilling to Be the Seed
Jianxiong Guo,Weili Wu +1 more
TL;DR: Wang et al. as discussed by the authors studied the adaptive influence maximization with multiple activations (Adaptive-IMMA) problem, where each user associated with a probability with which we can activate her as a seed, and we can attempt to activate her many times.
22
Adaptive Influence Maximization: If Influential Node Unwilling to Be the Seed
Jianxiong Guo,Weili Wu +1 more
TL;DR: This article studies the adaptive influence maximization with multiple activations (Adaptive-IMMA), which is the problem that maximizing an adaptive monotone and dr-submodular function under the expected knapsack constraint, and proposes a new concept, adaptive dr- Submodularity, which is a non-trivial generalization of existing analysis about adaptive submodularity.
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