Zhang Xin, Guo Junjie
School of Artificial Intelligence and Big data, Hefei University, Hefei, China.
PeerJ Comput Sci. 2024 Aug 28;10:e2284. doi: 10.7717/peerj-cs.2284. eCollection 2024.
Large amounts of machine learning methods with condensed names bring great challenges for researchers to select a suitable approach for a target dataset in the area of academic research. Although the graph neural networks based on the knowledge graph have been proven helpful in recommending a machine learning method for a given dataset, the issues of inadequate entity representation and over-smoothing of embeddings still need to be addressed. This article proposes a recommendation framework that integrates the feature-enhanced graph neural network and an anti-smoothing aggregation network. In the proposed framework, in addition to utilizing the textual description information of the target entities, each node is enhanced through its neighborhood information before participating in the higher-order propagation process. In addition, an anti-smoothing aggregation network is designed to reduce the influence of central nodes in each information aggregation by an exponential decay function. Extensive experiments on the public dataset demonstrate that the proposed approach exhibits substantial advantages over the strong baselines in recommendation tasks.
大量名称简洁的机器学习方法给学术研究领域的研究人员为目标数据集选择合适的方法带来了巨大挑战。尽管基于知识图谱的图神经网络已被证明有助于为给定数据集推荐机器学习方法,但实体表示不足和嵌入过度平滑的问题仍有待解决。本文提出了一个整合特征增强图神经网络和抗平滑聚合网络的推荐框架。在所提出的框架中,除了利用目标实体的文本描述信息外,每个节点在参与高阶传播过程之前通过其邻域信息进行增强。此外,设计了一个抗平滑聚合网络,通过指数衰减函数来减少每个信息聚合中中心节点的影响。在公共数据集上进行的大量实验表明,所提出的方法在推荐任务中比强大的基线方法具有显著优势。