Improved code summarization via a graph neural network
Alexander LeClair, Sakib Haque, et al.
ICPC 2020
Crowdsourcing has attracted much attention for its convenience to collect labels from non-expert workers instead of experts. However, due to the high level of noise from the non-experts, a label aggregation model that infers the true label from noisy crowdsourced labels is required. In this article, we propose a novel framework based on graph neural networks for aggregating crowd labels. We construct a heterogeneous graph between workers and tasks and derive a new graph neural network to learn the representations of nodes and the true labels. Besides, we exploit the unknown latent interaction between the same type of nodes (workers or tasks) by adding a homogeneous attention layer in the graph neural networks. Experimental results on 13 real-world datasets show superior performance over state-of-the-art models.
Alexander LeClair, Sakib Haque, et al.
ICPC 2020
Jie Chen, Lingfei Wu, et al.
ICASSP 2016
Qiusi Zhan, Xiaojie Guo, et al.
NLP4ConvAI/ACL 2023
Ziyao Zhang, Liang Ma, et al.
ICC 2019