Search Results for author: Shengxiang Hu

Found 4 papers, 0 papers with code

Large Language Model Meets Graph Neural Network in Knowledge Distillation

no code implementations8 Feb 2024 Shengxiang Hu, Guobing Zou, Song Yang, Yanglan Gan, Bofeng Zhang, Yixin Chen

Despite recent community revelations about the advancements and potential applications of Large Language Models (LLMs) in understanding Text-Attributed Graph (TAG), the deployment of LLMs for production is hindered by its high computational and storage requirements, as well as long latencies during model inference.

Contrastive Learning Knowledge Distillation +4

Enhanced Fine-grained Motion Diffusion for Text-driven Human Motion Synthesis

no code implementations23 May 2023 Dong Wei, Xiaoning Sun, Huaijiang Sun, Bin Li, Shengxiang Hu, Weiqing Li, Jianfeng Lu

The emergence of text-driven motion synthesis technique provides animators with great potential to create efficiently.

Motion Synthesis valid

Structure-reinforced Transformer for Dynamic Graph Representation Learning with Edge Temporal States

no code implementations20 Apr 2023 Shengxiang Hu, Guobing Zou, Song Yang, Shiyi Lin, Bofeng Zhang, Yixin Chen

The burgeoning field of dynamic graph representation learning, fuelled by the increasing demand for graph data analysis in real-world applications, poses both enticing opportunities and formidable challenges.

Dynamic Link Prediction Graph Representation Learning

Human Joint Kinematics Diffusion-Refinement for Stochastic Motion Prediction

no code implementations12 Oct 2022 Dong Wei, Huaijiang Sun, Bin Li, Jianfeng Lu, Weiqing Li, Xiaoning Sun, Shengxiang Hu

This process offers a natural way to obtain the "whitened" latents without any trainable parameters, and human motion prediction can be regarded as the reverse diffusion process that converts the noise distribution into realistic future motions conditioned on the observed sequence.

motion prediction Stochastic Human Motion Prediction

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