Exploiting Spatial-temporal Data for Sleep Stage Classification via
Hypergraph Learning
- URL: http://arxiv.org/abs/2309.02124v1
- Date: Tue, 5 Sep 2023 11:01:30 GMT
- Title: Exploiting Spatial-temporal Data for Sleep Stage Classification via
Hypergraph Learning
- Authors: Yuze Liu, Ziming Zhao, Tiehua Zhang, Kang Wang, Xin Chen, Xiaowei
Huang, Jun Yin, Zhishu Shen
- Abstract summary: We propose a dynamic learning framework STHL, which introduces hypergraph to encode spatial-temporal data for sleep stage classification.
Our proposed STHL outperforms the state-of-the-art models in sleep stage classification tasks.
- Score: 16.802013781690402
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Sleep stage classification is crucial for detecting patients' health
conditions. Existing models, which mainly use Convolutional Neural Networks
(CNN) for modelling Euclidean data and Graph Convolution Networks (GNN) for
modelling non-Euclidean data, are unable to consider the heterogeneity and
interactivity of multimodal data as well as the spatial-temporal correlation
simultaneously, which hinders a further improvement of classification
performance. In this paper, we propose a dynamic learning framework STHL, which
introduces hypergraph to encode spatial-temporal data for sleep stage
classification. Hypergraphs can construct multi-modal/multi-type data instead
of using simple pairwise between two subjects. STHL creates spatial and
temporal hyperedges separately to build node correlations, then it conducts
type-specific hypergraph learning process to encode the attributes into the
embedding space. Extensive experiments show that our proposed STHL outperforms
the state-of-the-art models in sleep stage classification tasks.
Related papers
- DyG-Mamba: Continuous State Space Modeling on Dynamic Graphs [59.434893231950205]
Dynamic graph learning aims to uncover evolutionary laws in real-world systems.
We propose DyG-Mamba, a new continuous state space model for dynamic graph learning.
We show that DyG-Mamba achieves state-of-the-art performance on most datasets.
arXiv Detail & Related papers (2024-08-13T15:21:46Z) - Multi-Scale Spatial-Temporal Self-Attention Graph Convolutional Networks for Skeleton-based Action Recognition [0.0]
In this paper, we propose self-attention GCN hybrid model, Multi-Scale Spatial-Temporal self-attention (MSST)-GCN.
We utilize spatial self-attention module with adaptive topology to understand intra-frame interactions within a frame among different body parts, and temporal self-attention module to examine correlations between frames of a node.
arXiv Detail & Related papers (2024-04-03T10:25:45Z) - Spatial-Temporal Decoupling Contrastive Learning for Skeleton-based
Human Action Recognition [10.403751563214113]
STD-CL is a framework to obtain discriminative and semantically distinct representations from the sequences.
STD-CL achieves solid improvements on NTU60, NTU120, and NW-UCLA benchmarks.
arXiv Detail & Related papers (2023-12-23T02:54:41Z) - MTS2Graph: Interpretable Multivariate Time Series Classification with
Temporal Evolving Graphs [1.1756822700775666]
We introduce a new framework for interpreting time series data by extracting and clustering the input representative patterns.
We run experiments on eight datasets of the UCR/UEA archive, along with HAR and PAM datasets.
arXiv Detail & Related papers (2023-06-06T16:24:27Z) - Continuous time recurrent neural networks: overview and application to
forecasting blood glucose in the intensive care unit [56.801856519460465]
Continuous time autoregressive recurrent neural networks (CTRNNs) are a deep learning model that account for irregular observations.
We demonstrate the application of these models to probabilistic forecasting of blood glucose in a critical care setting.
arXiv Detail & Related papers (2023-04-14T09:39:06Z) - Dynamic Spatial-temporal Hypergraph Convolutional Network for
Skeleton-based Action Recognition [4.738525281379023]
Skeleton-based action recognition relies on the extraction of spatial-temporal topological information.
This paper proposes a dynamic spatial-temporal hypergraph convolutional network (DST-HCN) to capture spatial-temporal information for skeleton-based action recognition.
arXiv Detail & Related papers (2023-02-17T04:42:19Z) - Equivariant Hypergraph Diffusion Neural Operators [81.32770440890303]
Hypergraph neural networks (HNNs) using neural networks to encode hypergraphs provide a promising way to model higher-order relations in data.
This work proposes a new HNN architecture named ED-HNN, which provably represents any continuous equivariant hypergraph diffusion operators.
We evaluate ED-HNN for node classification on nine real-world hypergraph datasets.
arXiv Detail & Related papers (2022-07-14T06:17:00Z) - An Adaptive Federated Relevance Framework for Spatial Temporal Graph
Learning [14.353798949041698]
We propose an adaptive federated relevance framework, namely FedRel, for spatial-temporal graph learning.
The core Dynamic Inter-Intra Graph (DIIG) module in the framework is able to use these features to generate the spatial-temporal graphs.
To improve the model generalization ability and performance while preserving the local data privacy, we also design a relevance-driven federated learning module.
arXiv Detail & Related papers (2022-06-07T16:12:17Z) - Towards Similarity-Aware Time-Series Classification [51.2400839966489]
We study time-series classification (TSC), a fundamental task of time-series data mining.
We propose Similarity-Aware Time-Series Classification (SimTSC), a framework that models similarity information with graph neural networks (GNNs)
arXiv Detail & Related papers (2022-01-05T02:14:57Z) - Spatial-Temporal Correlation and Topology Learning for Person
Re-Identification in Videos [78.45050529204701]
We propose a novel framework to pursue discriminative and robust representation by modeling cross-scale spatial-temporal correlation.
CTL utilizes a CNN backbone and a key-points estimator to extract semantic local features from human body.
It explores a context-reinforced topology to construct multi-scale graphs by considering both global contextual information and physical connections of human body.
arXiv Detail & Related papers (2021-04-15T14:32:12Z) - Convolutional Tensor-Train LSTM for Spatio-temporal Learning [116.24172387469994]
We propose a higher-order LSTM model that can efficiently learn long-term correlations in the video sequence.
This is accomplished through a novel tensor train module that performs prediction by combining convolutional features across time.
Our results achieve state-of-the-art performance-art in a wide range of applications and datasets.
arXiv Detail & Related papers (2020-02-21T05:00:01Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.