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Joint modelling of task requirements and worker preferences based on heterogeneous features and multiple interactions for knowledge-intensive crowdsourcing recommendation

Yang, Biyu; Wang, Xu*; Zhang, Shuai; Gao, Min; Tian, Jiejie; Tan, Guangzhu; Yang, Linda; Su, Jiafu
Science Citation Index Expanded
重庆大学

摘要

Automatic worker recommendation has become a key technology in knowledge-intensive crowdsourcing (KIC). However, KIC recommendation encounters the task cold-start problem in nature as only newly posted tasks need to be matched with workers. Current studies fail to accurately model both tasks and workers in the task cold-start scenario, and ignore the problem of task clarity in task requirements understanding and treat task features linearly in worker preferences estimation. Therefore, this paper proposed a heterogeneous features and multiple interactions-based deep neural framework (called HFMIRec) to assist new task completion more smartly in KIC. Specifically, different types of task features can be flexibly incorporated to tackle the cold-start problem. To accurately model both tasks and workers, multiple interactions between tasks and workers are identified and learned by attentive neural networks in the framework. Extensive experiments on a real-world dataset demonstrate the effectiveness of the proposed model.

关键词

crowdsourcing task cold-start worker recommendation supply-demand matching recommender system