Abstract
Given a social network of users represented as a directed graph with edge weight as diffusion probability, the Social Influence Maximization Problem asks for selecting a set of highly influential users for initial activation to maximize the influence in the network. In this paper, we study a variant of this problem, where nodes are associated with a selection cost signifying the incentive demand; a fixed budget is allocated for the seed set selection process; a subset of the nodes is designated as the target nodes, and each of them is associated with a benefit value that can be earned by influencing the corresponding target user; and the goal is to choose a seed set within the allocated budget for maximizing the earned benefit. Formally, we call this problem as the Earned Benefit Maximization in Incentivized Social Networking Environment or Earned Benefit Maximization Problem (EBM Problem), in short. For this problem, we develop a priority-based ranking methodology having three steps. First, marking the effective nodes for the given target nodes; second, priority computation of the effective nodes and the third is to choose the seed nodes based on this priority value within the budget. We implement the proposed methodology with two publicly available social network datasets and observe that the proposed methodology can achieve more benefit compared to the baseline methods. To improve the proposed methodology, we exploit the community structure of the network. Experimental results show that the incorporation of community structure helps the proposed methodology to achieve more benefit without much increase in computational burden.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Algesheimer R, Dholakia UM, Herrmann A (2005) The social influence of brand community: evidence from european car clubs. J Mark 69(3):19–34
Alon N, Gamzu I, Tennenholtz M (2012) Optimizing budget allocation among channels and influencers. In: Proceedings of the 21st international conference on World Wide Web, ACM, pp 381–388
Angell R, Schoenebeck G (2017) Dont be greedy: leveraging community structure to find high quality seed sets for influence maximization. In: International conference on web and internet economics. Springer, pp 16–29
Aslay C, Bonchi F, Lakshmanan LV, Lu W (2017) Revenue maximization in incentivized social advertising. Proc VLDB Endow 10(11):1238–1249
Bakshy E, Rosenn I, Marlow C, Adamic L (2012) The role of social networks in information diffusion. In: Proceedings of the 21st international conference on World Wide Web, ACM, pp 519–528
Banerjee S, Jenamani M, Pratihar DK (2018a) A survey on influence maximization in a social network. arXiv preprint arXiv:180805502
Banerjee S, Jenamani M, Pratihar DK, Sirohi A (2018b) A priority-based ranking approach for maximizing the earned benefit in an incentivized social network. In: International conference on intelligent systems design and applications. Springer, Berlin, pp 717–726
Banerjee S, Jenamani M, Pratihar DK (2019) Maximizing the earned benefit in an incentivized social networking environment: An integer programming-based approach. In: Proceedings of the ACM India joint international conference on data science and management of data, ACM, pp 322–325
Bozorgi A, Haghighi H, Zahedi MS, Rezvani M (2016) Incim: a community-based algorithm for influence maximization problem under the linear threshold model. Inf Process Manag 52(6):1188–1199
Caliò A, Interdonato R, Pulice C, Tagarelli A (2018) Topology-driven diversity for targeted influence maximization with application to user engagement in social networks. IEEE Trans Knowl Data Eng
Cha M, Mislove A, Gummadi KP (2009) A measurement-driven analysis of information propagation in the flickr social network. In: Proceedings of the 18th international conference on World wide web, ACM, pp 721–730
Chen W, Wang C, Wang Y (2010) Scalable influence maximization for prevalent viral marketing in large-scale social networks. In: Proceedings of the 16th ACM SIGKDD international conference on Knowledge discovery and data mining, ACM, pp 1029–1038
Chen Y, Chang S, Chou C, Peng W, Lee S (2012) Exploring community structures for influence maximization in social networks. In: Proceedings of the 6th SNA-KDD Workshop on social network mining and analysis held in conjunction with KDD12 (SNA-KDD12), pp 1–6
Chen YC, Zhu WY, Peng WC, Lee WC, Lee SY (2014) Cim: community-based influence maximization in social networks. ACM Trans Intell Syst Technolgy (TIST) 5(2):25
Cheng C, Yang H, King I, Lyu MR (2012) Fused matrix factorization with geographical and social influence in location-based social networks. Aaai 12:17–23
Cheng S, Shen H, Huang J, Zhang G, Cheng X (2013) Staticgreedy: solving the scalability-accuracy dilemma in influence maximization. In: Proceedings of the 22nd ACM international conference on information and knowledge management, ACM, pp 509–518
Cui L, Hu H, Yu S, Yan Q, Ming Z, Wen Z, Lu N (2018) Ddse: a novel evolutionary algorithm based on degree-descending search strategy for influence maximization in social networks. J Netw Comput Appl 103:119–130
De Bruyn A, Lilien GL (2008) A multi-stage model of word-of-mouth influence through viral marketing. Int J Res Mark 25(3):151–163
Doerr B, Fouz M, Friedrich T (2012) Why rumors spread so quickly in social networks. Commun ACM 55(6):70–75
Domingos P, Richardson M (2001) Mining the network value of customers. In: Proceedings of the seventh ACM SIGKDD international conference on knowledge discovery and data mining, ACM, pp 57–66
Goel S, Watts DJ, Goldstein DG (2012) The structure of online diffusion networks. In: Proceedings of the 13th ACM conference on electronic commerce, ACM, pp 623–638
Goyal A, Lu W, Lakshmanan LV (2011a) Celf++: optimizing the greedy algorithm for influence maximization in social networks. In: Proceedings of the 20th international conference companion on World wide web, ACM, pp 47–48
Goyal A, Lu W, Lakshmanan LV (2011b) Simpath: An efficient algorithm for influence maximization under the linear threshold model. In: 2011 IEEE 11th international conference on data mining (ICDM), IEEE, pp 211–220
Güney E (2017) On the optimal solution of budgeted influence maximization problem in social networks. Oper Res 1–15
Han S, Zhuang F, He Q, Shi Z (2014) Balanced seed selection for budgeted influence maximization in social networks. In: Pacific-Asia conference on knowledge discovery and data mining. Springer, Berlin, pp 65–77
Ibrahim RA, Hefny HA, Hassanien AE (2016) Group impact: local influence maximization in social networks. In: International conference on advanced intelligent systems and informatics. Springer, Berlin, pp 447–455
Jung K, Heo W, Chen W (2012) Irie: Scalable and robust influence maximization in social networks. In: 2012 IEEE 12th international conference on data mining (ICDM), IEEE, pp 918–923
Ke X, Khan A, Cong G (2018) Finding seeds and relevant tags jointly: For targeted influence maximization in social networks. In: Proceedings of the 2018 international conference on management of data, ACM, pp 1097–1111
Kempe D, Kleinberg J, Tardos É (2003) Maximizing the spread of influence through a social network. In: Proceedings of the ninth ACM SIGKDD international conference on Knowledge discovery and data mining, ACM, pp 137–146
Leskovec J, Mcauley JJ (2012) Learning to discover social circles in ego networks. In: Advances in neural information processing systems, pp 539–547
Li M, Sun Y, Jiang Y, Tian Z (2018a) Answering the min-cost quality-aware query on multi-sources in sensor-cloud systems. Sensors 18(12):4486
Li Y, Fan J, Wang Y, Tan KL (2018b) Influence maximization on social graphs: a survey. IEEE Trans Knowl Data Eng
Narayanam R, Narahari Y (2011) A shapley value-based approach to discover influential nodes in social networks. IEEE Trans Autom Sci Eng 8(1):130–147
Nguyen H, Zheng R (2013) On budgeted influence maximization in social networks. IEEE J Select Areas Commun 31(6):1084–1094
Nguyen HT, Thai MT, Dinh TN (2016) Stop-and-stare: Optimal sampling algorithms for viral marketing in billion-scale networks. In: Proceedings of the 2016 international conference on management of data, ACM, pp 695–710
Nguyen HT, Thai MT, Dinh TN (2017) A billion-scale approximation algorithm for maximizing benefit in viral marketing. IEEE/ACM Trans Netw (TON) 25(4):2419–2429
Ni Y, Shi Q, Wei Z (2017) Optimizing influence diffusion in a social network with fuzzy costs for targeting nodes. J Ambient Intell Hum Comput 8(5):819–826
Pan Y, Li DH, Liu JG, Liang JZ (2010) Detecting community structure in complex networks via node similarity. Phys A Stat Mech Appl 389(14):2849–2857
Richardson M, Domingos P (2002) Mining knowledge-sharing sites for viral marketing. In: Proceedings of the eighth ACM SIGKDD international conference on Knowledge discovery and data mining, ACM, pp 61–70
Richardson M, Agrawal R, Domingos P (2003) Trust management for the semantic web. In: International semantic web conference. Springer, Berlin, pp 351–368
Samper JJ, Castillo PA, Araujo L, Merelo J (2006) Nectarss, an rss feed ranking system that implicitly learns user preferences. arXiv preprint arXiv:cs/0610019
Shang J, Zhou S, Li X, Liu L, Wu H (2017) Cofim: a community-based framework for influence maximization on large-scale networks. Knowl Based Syst 117:88–100
Su S, Li X, Cheng X, Sun C (2018) Location-aware targeted influence maximization in social networks. J Assoc Inf Sci Technol 69(2):229–241
Tan Q, Gao Y, Shi J, Wang X, Fang B, Tian ZH (2018) Towards a comprehensive insight into the eclipse attacks of tor hidden services. IEEE Internet Things J
Tang J, Tang X, Yuan J (2018a) An efficient and effective hop-based approach for influence maximization in social networks. Soc Netw Anal Min 8(1):10
Tang J, Zhang R, Yao Y, Zhao Z, Wang P, Li H, Yuan J (2018b) Maximizing the spread of influence via the collective intelligence of discrete bat algorithm. Knowl Based Syst 160:88–103
Tang Y, Xiao X, Shi Y (2014) Influence maximization: Near-optimal time complexity meets practical efficiency. In: Proceedings of the 2014 ACM SIGMOD international conference on management of data, ACM, pp 75–86
Tang Y, Shi Y, Xiao X (2015) Influence maximization in near-linear time: A martingale approach. In: Proceedings of the 2015 ACM SIGMOD international conference on management of data, ACM, pp 1539–1554
Tian Z, Su S, Shi W, Du X, Guizani M, Yu X (2019) A data-driven method for future internet route decision modeling. Future Gen Comput Syst 95:212–220
Wang C, Chen W, Wang Y (2012) Scalable influence maximization for independent cascade model in large-scale social networks. Data Min Knowle Discov 25(3):545–576
Wang X, Deng K, Li J, Yu JX, Jensen CS, Yang X (2018) Targeted influence minimization in social networks. In: Pacific-Asia conference on knowledge discovery and data mining. Springer, Berlin, pp 689–700
Wang Y, Cong G, Song G, Xie K (2010) Community-based greedy algorithm for mining top-k influential nodes in mobile social networks. In: Proceedings of the 16th ACM SIGKDD international conference on Knowledge discovery and data mining, ACM, pp 1039–1048
Wen YT, Peng WC, Shuai HH (2018) Maximizing social influence on target users. In: Pacific-Asia conference on knowledge discovery and data mining. Springer, Berlin, pp 701–712
Ye M, Liu X, Lee WC (2012) Exploring social influence for recommendation: a generative model approach. In: Proceedings of the 35th international ACM SIGIR conference on Research and development in information retrieval, ACM, pp 671–680
Zhang K, Du H, Feldman MW (2017) Maximizing influence in a social network: Improved results using a genetic algorithm. Phys A Stat Mech Appl 478:20–30
Acknowledgements
Authors thank Ministry of Human Resource and Development, Government of India, for the project E-business Center of Excellence, Grant No. F.No.5-5/2014-TS.VII.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Banerjee, S., Jenamani, M. & Pratihar, D.K. Maximizing the earned benefit in an incentivized social networking environment: a community-based approach. J Ambient Intell Human Comput 11, 2539–2555 (2020). https://doi.org/10.1007/s12652-019-01308-z
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12652-019-01308-z