4.7 Article

Local Prediction Models for Spatiotemporal Volume Visualization

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TVCG.2019.2961893

关键词

Data visualization; Predictive models; Spatiotemporal phenomena; Analytical models; Data models; Neural networks; Training; Volume visualization; machine learning; neural nets; ensemble visualization

资金

  1. Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany's Excellence Strategy [EXC-2075 (SimTech) - 390740016]

向作者/读者索取更多资源

The proposed machine learning approach detects and visualizes complex behavior in spatiotemporal volumes by training models to predict future data values and evaluating prediction errors; Aggregating prediction errors and visualizing them highlights regions of interesting behavior; Applicable to datasets from various domains, meaningful results are produced with minimal assumptions.
We present a machine learning-based approach for detecting and visualizing complex behavior in spatiotemporal volumes. For this, we train models to predict future data values at a given position based on the past values in its neighborhood, capturing common temporal behavior in the data. We then evaluate the model's prediction on the same data. High prediction error means that the local behavior was too complex, unique or uncertain to be accurately captured during training, indicating spatiotemporal regions with interesting behavior. By training several models of varying capacity, we are able to detect spatiotemporal regions of various complexities. We aggregate the obtained prediction errors into a time series or spatial volumes and visualize them together to highlight regions of unpredictable behavior and how they differ between the models. We demonstrate two further volumetric applications: adaptive timestep selection and analysis of ensemble dissimilarity. We apply our technique to datasets from multiple application domains and demonstrate that we are able to produce meaningful results while making minimal assumptions about the underlying data.

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