||
2023年12月22日,云南师范大学民族教育信息化教育部重点实验室唐明靖教授课题组在《Expert Systems with Applications》杂志在线发表最新成果研究《EPAN-SERec: Expertise preference-aware networks for software expert recommendations with knowledge graph 》。云南师范大学民族教育信息化教育部重点实验室和信息学院为第一作者和通讯作者单位。
Abstract
The software knowledge community provides software developers with valuable knowledge of technologies, activities, tools and project management related to software development. However, a large number of unresolved questions and the lack of expert participation have become evident and critical challenges for the software knowledge community. To address the problems of label dependence, interactive data’s sparsity and unassociated knowledge in community-based software expert recommendation, we propose an Expertise Preference-Aware Network model for Software Expert Recommendation (EPAN-SERec) with knowledge graph. Firstly, the software knowledge graph is utilized as an auxiliary resource to provide domain knowledge representation. Secondly, we devise an expertise preference-learning framework by means of deep reinforcement learning that models the historical interactive information of experts and generate the expertise preference weight graph. To better learn expertise preference features, a graph convolutional network (GCN) model with integrated graph self-supervised learning is proposed to optimize the features representation. Finally, software knowledge entity embeddings with semantic information are obtained by exploiting the graph-embedding model, and the final features of question to be answered are obtained by fusing the expertise preference of experts. Extensive experiments on the dataset based on StackOverflow demonstrate that our approach achieves a better outcome than baseline models.
Archiver|手机版|科学网 ( 京ICP备07017567号-12 )
GMT+8, 2024-11-23 02:16
Powered by ScienceNet.cn
Copyright © 2007- 中国科学报社