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Temporal Attribute Prediction via Joint Modeling of Multi-Relational Structure Evolution

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arxiv 2003.03919 v2 pith:TYONJLCP submitted 2020-03-09 cs.LG stat.ML

Temporal Attribute Prediction via Joint Modeling of Multi-Relational Structure Evolution

classification cs.LG stat.ML
keywords timepredictionseriesinformationdynamicgraphattributedartnet
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Time series prediction is an important problem in machine learning. Previous methods for time series prediction did not involve additional information. With a lot of dynamic knowledge graphs available, we can use this additional information to predict the time series better. Recently, there has been a focus on the application of deep representation learning on dynamic graphs. These methods predict the structure of the graph by reasoning over the interactions in the graph at previous time steps. In this paper, we propose a new framework to incorporate the information from dynamic knowledge graphs for time series prediction. We show that if the information contained in the graph and the time series data are closely related, then this inter-dependence can be used to predict the time series with improved accuracy. Our framework, DArtNet, learns a static embedding for every node in the graph as well as a dynamic embedding which is dependent on the dynamic attribute value (time-series). Then it captures the information from the neighborhood by taking a relation specific mean and encodes the history information using RNN. We jointly train the model link prediction and attribute prediction. We evaluate our method on five specially curated datasets for this problem and show a consistent improvement in time series prediction results. We release the data and code of model DArtNet for future research at https://github.com/INK-USC/DArtNet .

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