location: Current position: Home >> Scientific Research >> Paper Publications

SPGLAD: A Self-paced Learning-Based Crowdsourcing Classification Model

Hits:

Indexed by:会议论文

Date of Publication:2017-01-01

Included Journals:EI、CPCI-S

Volume:10526

Page Number:189-201

Key Words:Crowdsourcing; Self-paced learning; Quality control

Abstract:Crowdsourcing platforms like Amazon's Mechanical Turk provide fast and effective solutions of collecting massive datasets for performing tasks in domains such as image classification, information retrieval, etc. Crowdsourcing quality control plays an essential role in such systems. However, existing algorithms are prone to get stuck in a bad local optimum because of ill-defined datasets. To overcome the above drawbacks, we propose a novel self-paced quality control model integrating a priority-based sample-picking strategy. The proposed model ensures the evident samples do better efforts during iterations. We also empirically demonstrate that the proposed self-paced learning strategy promotes common quality control methods.

Pre One:Recognize the Same Users across Multiple Online Social Networks

Next One:Supervised Ranking Framework for Relationship Prediction in Heterogeneous Information Networks