Asynchronous Graph Generators

Ley, Christopher P., Tobar, Felipe

arXiv.org Artificial Intelligence 

We introduce the asynchronous graph generator (AGG), a novel graph neural network architecture for multi-channel time series which models observations as nodes on a dynamic graph and can thus perform data imputation by transductive node generation. Completely free from recurrent components or assumptions about temporal regularity, AGG represents measurements, timestamps and metadata directly in the nodes via learnable embeddings, to then leverage attention to learn expressive relationships across the variables of interest. This way, the proposed architecture implicitly learns a causal graph representation of sensor measurements which can be conditioned on unseen timestamps and metadata to predict new measurements by an expansion of the learnt graph. The proposed AGG is compared both conceptually and empirically to previous work, and the impact of data augmentation on the performance of AGG is also briefly discussed. Our experiments reveal that AGG achieved state-of-the-art results in time series data imputation, classification and prediction for the benchmark datasets Beijing Air Quality, PhysioNet Challenge 2012 and UCI localisation. Incomplete time series data are ubiquitous in a number of applications (Miao et al., 2019), including medical logs, meteorology records, traffic monitoring, financial transactions and IoT sensing. Missing records may be due to various reasons which include failures either in the acquisition or transmission systems, privacy protocols, or simply because the data are collected asynchronously in time.

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