Recurrent Neural Networks for Session-based Recommendations - Alexandros Karatzoglou
Our research in the area started with our work on RNN’s for session-based based recommendations that was published in 2015 at ICLR. Since then we have extended the session-based RNN model with features, improved loss functions, personalization with hierarchical RNN’s, and compressed representations with bloom embeddings.
I will give an overview of our work in the area over the past two years.
Видео Recurrent Neural Networks for Session-based Recommendations - Alexandros Karatzoglou канала Criteo Eng
I will give an overview of our work in the area over the past two years.
Видео Recurrent Neural Networks for Session-based Recommendations - Alexandros Karatzoglou канала Criteo Eng
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