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      Predicting Dynamic Embedding Trajectory in Temporal Interaction Networks

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          Abstract

          Modeling sequential interactions between users and items/products is crucial in domains such as e-commerce, social networking, and education. Representation learning presents an attractive opportunity to model the dynamic evolution of users and items, where each user/item can be embedded in a Euclidean space and its evolution can be modeled by an embedding trajectory in this space. However, existing dynamic embedding methods generate embeddings only when users take actions and do not explicitly model the future trajectory of the user/item in the embedding space. Here we propose JODIE, a coupled recurrent neural network model that learns the embedding trajectories of users and items. JODIE employs two recurrent neural networks to update the embedding of a user and an item at every interaction. Crucially, JODIE also models the future embedding trajectory of a user/item. To this end, it introduces a novel projection operator that learns to estimate the embedding of the user at any time in the future. These estimated embeddings are then used to predict future user-item interactions. To make the method scalable, we develop a t-Batch algorithm that creates time-consistent batches and leads to 9× faster training. We conduct six experiments to validate JODIE on two prediction tasks— future interaction prediction and state change prediction—using four real-world datasets. We show that JODIE outperforms six state-of-the-art algorithms in these tasks by at least 20% in predicting future interactions and 12% in state change prediction.

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          Author and article information

          Contributors
          Journal
          101523327
          37437
          KDD
          KDD
          KDD : proceedings. International Conference on Knowledge Discovery & Data Mining
          2154-817X
          24 August 2019
          August 2019
          19 September 2019
          : 2019
          : 1269-1278
          Affiliations
          Stanford University, USA and Georgia Institute of Technology, USA
          University of Illinois, Urbana-Champaign, USA
          Stanford University, USA
          Author notes
          Article
          PMC6752886 PMC6752886 6752886 nihpa1047384
          10.1145/3292500.3330895
          6752886
          31538030
          dc1ba047-3206-4731-ab69-4d3067ae3596
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