Search Results for author: Nan Yin

Found 12 papers, 0 papers with code

Continuous Spiking Graph Neural Networks

no code implementations2 Apr 2024 Nan Yin, Mengzhu Wan, Li Shen, Hitesh Laxmichand Patel, Baopu Li, Bin Gu, Huan Xiong

Inspired by recent spiking neural networks (SNNs), which emulate a biological inference process and provide an energy-efficient neural architecture, we incorporate the SNNs with CGNNs in a unified framework, named Continuous Spiking Graph Neural Networks (COS-GNN).

A Survey of Graph Neural Networks in Real world: Imbalance, Noise, Privacy and OOD Challenges

no code implementations7 Mar 2024 Wei Ju, Siyu Yi, Yifan Wang, Zhiping Xiao, Zhengyang Mao, Hourun Li, Yiyang Gu, Yifang Qin, Nan Yin, Senzhang Wang, Xinwang Liu, Xiao Luo, Philip S. Yu, Ming Zhang

To tackle these issues, substantial efforts have been devoted to improving the performance of GNN models in practical real-world scenarios, as well as enhancing their reliability and robustness.

Fraud Detection

Merging Multi-Task Models via Weight-Ensembling Mixture of Experts

no code implementations1 Feb 2024 Anke Tang, Li Shen, Yong Luo, Nan Yin, Lefei Zhang, DaCheng Tao

A notable challenge is mitigating the interference between parameters of different models, which can substantially deteriorate performance.

Pre-insertion resistors temperature prediction based on improved WOA-SVR

no code implementations7 Jan 2024 Honghe Dai, Site Mo, Haoxin Wang, Nan Yin, Songhai Fan, Bixiong Li

The pre-insertion resistors (PIR) within high-voltage circuit breakers are critical components and warm up by generating Joule heat when an electric current flows through them.

Dynamic Spiking Graph Neural Networks

no code implementations15 Dec 2023 Nan Yin, Mengzhu Wang, Zhenghan Chen, Giulia De Masi, Bin Gu, Huan Xiong

Current work often uses SNNs instead of Recurrent Neural Networks (RNNs) by using binary features instead of continuous ones for efficient training, which would overlooks graph structure information and leads to the loss of details during propagation.

Dynamic Node Classification Graph Representation Learning

Dance of Channel and Sequence: An Efficient Attention-Based Approach for Multivariate Time Series Forecasting

no code implementations11 Dec 2023 Haoxin Wang, Yipeng Mo, Nan Yin, Honghe Dai, Bixiong Li, Songhai Fan, Site Mo

In recent developments, predictive models for multivariate time series analysis have exhibited commendable performance through the adoption of the prevalent principle of channel independence.

Multivariate Time Series Forecasting Time Series

Deep Imbalanced Learning for Multimodal Emotion Recognition in Conversations

no code implementations11 Dec 2023 Tao Meng, Yuntao Shou, Wei Ai, Nan Yin, Keqin Li

The main task of Multimodal Emotion Recognition in Conversations (MERC) is to identify the emotions in modalities, e. g., text, audio, image and video, which is a significant development direction for realizing machine intelligence.

Data Augmentation Generative Adversarial Network +2

A Comprehensive Survey on Multi-modal Conversational Emotion Recognition with Deep Learning

no code implementations10 Dec 2023 Yuntao Shou, Tao Meng, Wei Ai, Nan Yin, Keqin Li

Unlike the traditional single-utterance multi-modal emotion recognition or single-modal conversation emotion recognition, MCER is a more challenging problem that needs to deal with more complex emotional interaction relationships.

Emotion Recognition

Asymmetrically Decentralized Federated Learning

no code implementations8 Oct 2023 Qinglun Li, Miao Zhang, Nan Yin, Quanjun Yin, Li Shen

To further improve algorithm performance and alleviate local heterogeneous overfitting in Federated Learning (FL), our algorithm combines the Sharpness Aware Minimization (SAM) optimizer and local momentum.

Federated Learning

Continual Learning From a Stream of APIs

no code implementations31 Aug 2023 Enneng Yang, Zhenyi Wang, Li Shen, Nan Yin, Tongliang Liu, Guibing Guo, Xingwei Wang, DaCheng Tao

Next, we train the CL model by minimizing the gap between the responses of the CL model and the black-box API on synthetic data, to transfer the API's knowledge to the CL model.

Continual Learning

CoCo: A Coupled Contrastive Framework for Unsupervised Domain Adaptive Graph Classification

no code implementations8 Jun 2023 Nan Yin, Li Shen, Mengzhu Wang, Long Lan, Zeyu Ma, Chong Chen, Xian-Sheng Hua, Xiao Luo

Although graph neural networks (GNNs) have achieved impressive achievements in graph classification, they often need abundant task-specific labels, which could be extensively costly to acquire.

Contrastive Learning Domain Adaptation +2

DyHCN: Dynamic Hypergraph Convolutional Networks

no code implementations1 Jan 2021 Nan Yin, Zhigang Luo, Wenjie Wang, Fuli Feng, Xiang Zhang

In general, DyHCN consists of a Hypergraph Convolution (HC) to encode the hypergraph structure at a time point and a Temporal Evolution module (TE) to capture the varying of the relations.

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