论文标题
基于联合学习的学术异质信息网络的嵌入表示
Embedding Representation of Academic Heterogeneous Information Networks Based on Federated Learning
论文作者
论文摘要
现实世界中的学术网络通常可以描绘成具有多类,通用的节点和多关系的异质信息网络(HINS)。由于缺乏发行异质性的能力,一些现有的用于表示同质信息网络学习的研究不能适用于异质信息网络。同时,数据已成为生产因素,起着越来越重要的作用。由于不同企业之间企业的亲密关系和阻碍,数据岛存在严重的现象。 To solve the above challenges, aiming at the data information of scientific research teams closely related to science and technology, we proposed an academic heterogeneous information network embedding representation learning method based on federated learning (FedAHE), which utilizes node attention and meta path attention mechanism to learn low-dimensional, dense and real-valued vector representations while preserving the rich topological information and meta-path-based semantic information of nodes in network.此外,我们将联邦学习与由科学研究团队组成的HINS的代表学习相结合,并根据动态加权参数(FIDDWA)提出了一种联邦培训机制,以优化HINS的节点嵌入。通过足够的实验,我们展示了我们提出的框架的效率,准确性和可行性。
Academic networks in the real world can usually be portrayed as heterogeneous information networks (HINs) with multi-type, universally connected nodes and multi-relationships. Some existing studies for the representation learning of homogeneous information networks cannot be applicable to heterogeneous information networks because of the lack of ability to issue heterogeneity. At the same time, data has become a factor of production, playing an increasingly important role. Due to the closeness and blocking of businesses among different enterprises, there is a serious phenomenon of data islands. To solve the above challenges, aiming at the data information of scientific research teams closely related to science and technology, we proposed an academic heterogeneous information network embedding representation learning method based on federated learning (FedAHE), which utilizes node attention and meta path attention mechanism to learn low-dimensional, dense and real-valued vector representations while preserving the rich topological information and meta-path-based semantic information of nodes in network. Moreover, we combined federated learning with the representation learning of HINs composed of scientific research teams and put forward a federal training mechanism based on dynamic weighted aggregation of parameters (FedDWA) to optimize the node embeddings of HINs. Through sufficient experiments, the efficiency, accuracy and feasibility of our proposed framework are demonstrated.