Task Execution Quality Maximization for Mobile Crowdsourcing in Geo-Social Networks

要旨

With the rapid development of smart devices and high-quality wireless technologies, mobile crowdsourcing (MCS) has been drawing increasing attention with its great potential in collaboratively completing complicated tasks on a large scale. A key issue toward successful MCS is participant recruitment, where a MCS platform directly recruits suitable crowd participants to execute outsourced tasks by physically traveling to specified locations. Recently, a novel recruitment strategy, namely Word-of-Mouth(WoM)-based MCS, has emerged to effectively improve recruitment effectiveness, by fully exploring users' mobility traces and social relationships on geo-social networks. Against this background, we study in this paper a novel problem, namely Expected Task Execution Quality Maximization (ETEQM) for MCS in geo-social networks, which strives to search a subset of seed users to maximize the expected task execution quality of all recruited participants, under a given incentive budget. To characterize the MCS task propagation process over geo-social networks, we first adopt a propagation tree structure to model the autonomous recruitment between the referrers and the referrals. Based on the model, we then formalize the task execution quality and devise a novel incentive mechanism by harnessing the business strategy of multi-level marketing. We formulate our ETEQM problem as a combinatorial optimization problem, and analyze its NP hardness and high-dimensional characteristics. Based on a cooperative co-evolution framework, we proposed a divide-and-conquer problem-solving approach named ETEQM-CC. We conduct extensive simulation experiments and a case study, verifying the effectiveness of our proposed approach.

著者
Liang Wang
Northwestern Polytechnical University, Xi'an, China
Zhiwen Yu
Northwestern Polytechnical University, Xi'an, China
Dingqi Yang
University of Fribourg, Fribourg, Switzerland
TIAN WANG
Huaqiao University, Xiamen, Fujian, China
En Wang
Jilin University, Changchun, China
Bin Guo
northwestern polytechnical univ., xian, China
Daqing Zhang
Peking University, Beijing, China
論文URL

https://doi.org/10.1145/3476053

動画

会議: CSCW2021

The 24th ACM Conference on Computer-Supported Cooperative Work and Social Computing

セッション: Crowds and Collaboration

Papers Room D
8 件の発表
2021-10-26 20:30:00
2021-10-26 22:00:00