Measuring disentangled generative spatio-temporal representation
This work addresses the lack of attention to disentangling latent features in spatio-temporal data mining, offering potential for improved interpretability and performance in applications like forecasting, but it is incremental as it builds on existing methods.
The study applied two state-of-the-art disentangled representation learning methods to three large-scale public spatio-temporal datasets, proposing an internal evaluation metric to assess correlation among latent variables and downstream prediction performance. Empirical results showed that the modified method achieved the same level of performance as existing state-of-the-art methods in spatio-temporal sequence forecasting and could discover real-world spatial-temporal semantics.
Disentangled representation learning offers useful properties such as dimension reduction and interpretability, which are essential to modern deep learning approaches. Although deep learning techniques have been widely applied to spatio-temporal data mining, there has been little attention to further disentangle the latent features and understanding their contribution to the model performance, particularly their mutual information and correlation across features. In this study, we adopt two state-of-the-art disentangled representation learning methods and apply them to three large-scale public spatio-temporal datasets. To evaluate their performance, we propose an internal evaluation metric focusing on the degree of correlations among latent variables of the learned representations and the prediction performance of the downstream tasks. Empirical results show that our modified method can learn disentangled representations that achieve the same level of performance as existing state-of-the-art ST deep learning methods in a spatio-temporal sequence forecasting problem. Additionally, we find that our methods can be used to discover real-world spatial-temporal semantics to describe the variables in the learned representation.