Energy-Based Sequence GANs for Recommendation and Their Connection to Imitation Learning
Yoo, Jaeyoon, Ha, Heonseok, Yi, Jihun, Ryu, Jongha, Kim, Chanju, Ha, Jung-Woo, Kim, Young-Han, Yoon, Sungroh
Recommender systems aim to find an accurate and efficient mapping from historic data of user-preferred items to a new item that is to be liked by a user. Towards this goal, energy-based sequence generative adversarial nets (EB-SeqGANs) are adopted for recommendation by learning a generative model for the time series of user-preferred items. By recasting the energy function as the feature function, the proposed EB-SeqGANs is interpreted as an instance of maximum-entropy imitation learning.
Jun-28-2017
- Country:
- North America > United States (0.47)
- Genre:
- Research Report (0.40)
- Industry:
- Leisure & Entertainment (0.70)
- Media > Music (0.48)