Revisiting the Modifiable Areal Unit Problem in Deep Traffic Prediction with Visual Analytics
Wei Zeng, Chengqiao Lin, Juncong Lin, Jincheng Jiang, Jiazhi Xia,, Cagatay Turkay, Wei Chen

TL;DR
This paper presents a visual analytics approach to address the modifiable areal unit problem in deep traffic prediction, enabling experts to explore how spatial aggregation scales affect model performance and stability.
Contribution
It introduces a novel visual analytics system combining spatial and multiscale visualization techniques to investigate the impact of data aggregation on deep traffic prediction models.
Findings
Geographical scale variations significantly affect prediction accuracy.
Interactive visual exploration aids experts in model development.
The approach improves understanding of spatial aggregation effects on deep learning models.
Abstract
Deep learning methods are being increasingly used for urban traffic prediction where spatiotemporal traffic data is aggregated into sequentially organized matrices that are then fed into convolution-based residual neural networks. However, the widely known modifiable areal unit problem within such aggregation processes can lead to perturbations in the network inputs. This issue can significantly destabilize the feature embeddings and the predictions, rendering deep networks much less useful for the experts. This paper approaches this challenge by leveraging unit visualization techniques that enable the investigation of many-to-many relationships between dynamically varied multi-scalar aggregations of urban traffic data and neural network predictions. Through regular exchanges with a domain expert, we design and develop a visual analytics solution that integrates 1) a Bivariate Map…
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Taxonomy
TopicsData Visualization and Analytics · Data Analysis with R · Traffic Prediction and Management Techniques
