首页|New Machine Learning Findings from Sun Yat-sen University Reported (A Fusion Model of Temporal Graph Attention Network and Machine Learning for Inferring Commuting Flow From Human Activity Intensity Dynamics)
New Machine Learning Findings from Sun Yat-sen University Reported (A Fusion Model of Temporal Graph Attention Network and Machine Learning for Inferring Commuting Flow From Human Activity Intensity Dynamics)
扫码查看
点击上方二维码区域,可以放大扫码查看
原文链接
NETL
NSTL
Elsevier
Current study results on Machine Learning have been published. According to news reporting out of Guangzhou, People's Republic of China, by NewsRx editors, research stated, “Accurately estimating commuting flow is essential for optimizing urban planning and traffic design. The latest graph neural network (GNN) model with the encoder-decoder-predictor components has several limitations.” Funders for this research include National Natural Science Foundation of China (NSFC), Guangdong Basic and Applied Basic Research Foundation, Innovation Group Project of Southern Marine Science and Engineering Guangdong Laboratory (Zhuhai). Our news journalists obtained a quote from the research from Sun Yat-sen University, “First, it ignores the temporal dependency of node features for node embedding. Second, different estimation methods used in the decoder and predictor make it difficult to distinguish the contribution of node embedding or estimation method to flow estimation. Third, finer-grained socio-economic features of nodes are difficult to obtain due to low data availability. To address these problems, this study proposes a fusion model of temporal graph attention network and machine learning (TGAT-ML) to infer commuting flow from dynamic human activity intensity distribution. The model first constructs a commuting network with temporal human activity intensity as node features. A temporal graph attention network is then developed to capture the spatiotemporal dependency. The learned node embedding is generated by using a machine learning method in the decoder. Finally, based on learned node embedding and machine learning method used in the decoder, the commuting flow intensity is estimated. Results from an empirical study using the Baidu heat map data of Guangzhou city indicate that the proposed fusion model TGAT-ML outperforms all other baseline models. This study proves that the model performance can be significantly enhanced by determining the edge existence through commuting time-based approach, integrating temporal convolution with graph convolution, and unifying flow estimation method in both decoder and predictor.”
GuangzhouPeople’s Republic of ChinaAsiaCyborgsEmerging TechnologiesMachine LearningSun Yat-sen University