Multi-Modal Adversarial Autoencoders for Recommendations of Citations and Subject Labels

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Galke, Lukas; Mai, Florian; Vagliano, Iacopo; Scherp, Ansgar;
  • Publisher: ACM Press
  • Related identifiers: doi: 10.1145/3209219.3209236
  • Subject: Recommender Systems | Statistics - Machine Learning | Computer Science - Machine Learning | Neural Networks | Learning from implicit feedback | Sparsity | Adversarial Autoencoders | Multi-modal | Computer Science - Information Retrieval

We present multi-modal adversarial autoencoders for recommendation and evaluate them on two different tasks: citation recommendation and subject label recommendation. We analyze the effects of adversarial regularization, sparsity, and different input modalities. By co... View more
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