Modern recommender systems aim to improve user experience. As reinforcement learning (RL) naturally fits this objective -- maximizing an user's reward per session -- it has become an emerging topic in recommender systems. Developing RL-based recommendation methods, however, is not trivial due to the \emph{offline training challenge}. Specifically, the keystone of traditional RL is to train an agent with large amounts of online exploration making lots of `errors' in the process. In the recommendation setting, though, we cannot afford the price of making `errors' online. As a result, the agent needs to be trained through offline historical implicit feedback, collected under different recommendation policies; traditional RL algorithms may lead...
Scaling reinforcement learning (RL) to recommender systems (RS) is promising since maximizing the ex...
Recommendation systems are information filtering systems that deal with information overload by help...
Methods for reinforcement learning for recommendation (RL4Rec) are increasingly receiving attention ...
Recommender system has been a persistent research goal for decades, which aims at recommending suita...
Recommender systems have been widely applied in different real-life scenarios to help us find useful...
In session-based or sequential recommendation, it is important to consider a number of factors like ...
Reinforcement learning (RL) is an area of machine learning concerned with how intelligent agents are...
The first part of this thesis concludes with an overall summary of the publications so far on the re...
Interactive systems such as search engines or recommender systems are increasingly moving away from ...
Recommender systems are devoted to find and automatically recommend valuable information and service...
Casting session-based or sequential recommendation as reinforcement learning (RL) through reward sig...
International audienceA common assumption in recommender systems (RS) is the existence of a best fix...
ABSTRACT: Interactive information systems are often designed on the basis of little knowledge about ...
How might we design Reinforcement Learning (RL)-based recommenders that encourage aligning user traj...
Interactive recommendation with natural-language feedback can provide richer user feedback and has d...
Scaling reinforcement learning (RL) to recommender systems (RS) is promising since maximizing the ex...
Recommendation systems are information filtering systems that deal with information overload by help...
Methods for reinforcement learning for recommendation (RL4Rec) are increasingly receiving attention ...
Recommender system has been a persistent research goal for decades, which aims at recommending suita...
Recommender systems have been widely applied in different real-life scenarios to help us find useful...
In session-based or sequential recommendation, it is important to consider a number of factors like ...
Reinforcement learning (RL) is an area of machine learning concerned with how intelligent agents are...
The first part of this thesis concludes with an overall summary of the publications so far on the re...
Interactive systems such as search engines or recommender systems are increasingly moving away from ...
Recommender systems are devoted to find and automatically recommend valuable information and service...
Casting session-based or sequential recommendation as reinforcement learning (RL) through reward sig...
International audienceA common assumption in recommender systems (RS) is the existence of a best fix...
ABSTRACT: Interactive information systems are often designed on the basis of little knowledge about ...
How might we design Reinforcement Learning (RL)-based recommenders that encourage aligning user traj...
Interactive recommendation with natural-language feedback can provide richer user feedback and has d...
Scaling reinforcement learning (RL) to recommender systems (RS) is promising since maximizing the ex...
Recommendation systems are information filtering systems that deal with information overload by help...
Methods for reinforcement learning for recommendation (RL4Rec) are increasingly receiving attention ...