Saved in:
Bibliographic Details
Main Authors: Shi, Qihao, Tian, Wenjie, Yang, Wujian, Xue, Mengqi, Wang, Can, Wu, Minghui
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2302.09620
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913493322563584
author Shi, Qihao
Tian, Wenjie
Yang, Wujian
Xue, Mengqi
Wang, Can
Wu, Minghui
author_facet Shi, Qihao
Tian, Wenjie
Yang, Wujian
Xue, Mengqi
Wang, Can
Wu, Minghui
contents In this paper, we propose a new influence spread model, namely, Complementary\&Competitive Independent Cascade (C$^2$IC) model. C$^2$IC model generalizes three well known influence model, i.e., influence boosting (IB) model, campaign oblivious (CO)IC model and the IC-N (IC model with negative opinions) model. This is the first model that considers both complementary and competitive influence spread comprehensively under multi-agent environment. Correspondingly, we propose the Complementary\&Competitive influence maximization (C$^2$IM) problem. Given an ally seed set and a rival seed set, the C$^2$IM problem aims to select a set of assistant nodes that can boost the ally spread and prevent the rival spread concurrently. We show the problem is NP-hard and can generalize the influence boosting problem and the influence blocking problem. With classifying the different cascade priorities into 4 cases by the monotonicity and submodularity (M\&S) holding conditions, we design 4 algorithms respectively, with theoretical approximation bounds provided. We conduct extensive experiments on real social networks and the experimental results demonstrate the effectiveness of the proposed algorithms. We hope this work can inspire abundant future exploration for constructing more generalized influence models that help streamline the works of this area.
format Preprint
id arxiv_https___arxiv_org_abs_2302_09620
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Jointly Complementary&Competitive Influence Maximization with Concurrent Ally-Boosting and Rival-Preventing
Shi, Qihao
Tian, Wenjie
Yang, Wujian
Xue, Mengqi
Wang, Can
Wu, Minghui
Artificial Intelligence
In this paper, we propose a new influence spread model, namely, Complementary\&Competitive Independent Cascade (C$^2$IC) model. C$^2$IC model generalizes three well known influence model, i.e., influence boosting (IB) model, campaign oblivious (CO)IC model and the IC-N (IC model with negative opinions) model. This is the first model that considers both complementary and competitive influence spread comprehensively under multi-agent environment. Correspondingly, we propose the Complementary\&Competitive influence maximization (C$^2$IM) problem. Given an ally seed set and a rival seed set, the C$^2$IM problem aims to select a set of assistant nodes that can boost the ally spread and prevent the rival spread concurrently. We show the problem is NP-hard and can generalize the influence boosting problem and the influence blocking problem. With classifying the different cascade priorities into 4 cases by the monotonicity and submodularity (M\&S) holding conditions, we design 4 algorithms respectively, with theoretical approximation bounds provided. We conduct extensive experiments on real social networks and the experimental results demonstrate the effectiveness of the proposed algorithms. We hope this work can inspire abundant future exploration for constructing more generalized influence models that help streamline the works of this area.
title Jointly Complementary&Competitive Influence Maximization with Concurrent Ally-Boosting and Rival-Preventing
topic Artificial Intelligence
url https://arxiv.org/abs/2302.09620