GFlowState introduces interactive visualizations such as trajectory node-link diagrams and transition heatmaps to make GFlowNet training dynamics observable for debugging and quality assessment.
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XFlowMap introduces cross-scale flow pattern detection using scan statistics, automated generalization, and a novel multi-attribute flow symbol for mapping massive OD data.
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GFlowState: Visualizing the Training of Generative Flow Networks Beyond the Reward
GFlowState introduces interactive visualizations such as trajectory node-link diagrams and transition heatmaps to make GFlowNet training dynamics observable for debugging and quality assessment.
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XFlowMap: Cross-Scale Generalization and Mapping of Massive Origin-Destination Data
XFlowMap introduces cross-scale flow pattern detection using scan statistics, automated generalization, and a novel multi-attribute flow symbol for mapping massive OD data.