Network Representation Learning (NRL) is a method to learn a representation of a graph in a low-dimensional space, such that the representation can be later utilized easily in various machine learning tasks such as classification, recommendation, and prediction. In contrast to homogeneous networks, heterogeneous information networks (HINs) contain rich semantics and structural information due to multiple types of nodes and edges. Due to heterogeneity, the conventional representation learning methods are not directly applicable. In this paper, we propose a semi-supervised HIN embedding model, adopted from the natural language processing community. The model uses sequences of nodes obtained by random walks constrained on edge types such that the structural and semantic properties are preserved. These sequences correspond to sentences in a document. Each sequence is labeled based on the nodes contained in it. We adopt a ID-Convolutional Neural Network sentence classification model that se...
Semi-Supervised Heterogeneous Information Network Embedding for Node Classification Using 1D-CNN / Sheikh, Nasrullah; Kefato, Zekarias T.; Montresor, Alberto. - ELETTRONICO. - (2018), pp. 177-181. ( 5th International Conference on Social Networks Analysis, Management and Security, SNAMS 2018 Spagna 2018) [10.1109/SNAMS.2018.8554840].
Semi-Supervised Heterogeneous Information Network Embedding for Node Classification Using 1D-CNN
Sheikh, Nasrullah;Kefato, Zekarias T.;Montresor, Alberto
2018-01-01
Abstract
Network Representation Learning (NRL) is a method to learn a representation of a graph in a low-dimensional space, such that the representation can be later utilized easily in various machine learning tasks such as classification, recommendation, and prediction. In contrast to homogeneous networks, heterogeneous information networks (HINs) contain rich semantics and structural information due to multiple types of nodes and edges. Due to heterogeneity, the conventional representation learning methods are not directly applicable. In this paper, we propose a semi-supervised HIN embedding model, adopted from the natural language processing community. The model uses sequences of nodes obtained by random walks constrained on edge types such that the structural and semantic properties are preserved. These sequences correspond to sentences in a document. Each sequence is labeled based on the nodes contained in it. We adopt a ID-Convolutional Neural Network sentence classification model that se...I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



