Search Results for author: Jieyue He

Found 6 papers, 0 papers with code

AGHINT: Attribute-Guided Representation Learning on Heterogeneous Information Networks with Transformer

no code implementations16 Apr 2024 Jinhui Yuan, Shan Lu, Peibo Duan, Jieyue He

Recently, heterogeneous graph neural networks (HGNNs) have achieved impressive success in representation learning by capturing long-range dependencies and heterogeneity at the node level.

Attribute Node Classification +1

Type-based Neural Link Prediction Adapter for Complex Query Answering

no code implementations29 Jan 2024 Lingning Song, Yi Zu, Shan Lu, Jieyue He

Answering complex logical queries on incomplete knowledge graphs (KGs) is a fundamental and challenging task in multi-hop reasoning.

Complex Query Answering Link Prediction

RoKEPG: RoBERTa and Knowledge Enhancement for Prescription Generation of Traditional Chinese Medicine

no code implementations29 Nov 2023 Hua Pu, Jiacong Mi, Shan Lu, Jieyue He

Traditional Chinese medicine (TCM) prescription is the most critical form of TCM treatment, and uncovering the complex nonlinear relationship between symptoms and TCM is of great significance for clinical practice and assisting physicians in diagnosis and treatment.

ACDNet: Attention-guided Collaborative Decision Network for Effective Medication Recommendation

no code implementations6 Jul 2023 Jiacong Mi, Yi Zu, Zhuoyuan Wang, Jieyue He

ACDNet also employs a collaborative decision framework, utilizing the similarity between medication records and medicine representation to facilitate the recommendation process.

Hybrid Attentional Memory Network for Computational drug repositioning

no code implementations12 Jun 2020 Jieyue He, Xinxing Yang, Zhuo Gong, lbrahim Zamit

Then a variant version of the autoencoder is used to extract the latent factor of drugs and diseases to capture the overall information shared by a majority of drug-disease associations.

Collaborative Filtering Drug Discovery

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