We consider a new setting of online clustering of contextual cascading bandits, an online learning problem where the underlying cluster structure over users is unknown and needs to be learned from a random prefix feedback. More precisely, a learning agent recommends an ordered list of items to a user, who checks the list and stops at the first satisfactory item, if any. We propose an algorithm of CLUB-cascade for this setting and prove an n-step regret bound of order O(√n). Previous work corresponds to the degenerate case of only one cluster, and our general regret bound in this special case also significantly improves theirs. We conduct experiments on both synthetic and real data, and demonstrate the effectiveness of our algorithm and the ...
Ranking system is the core part of modern retrieval and recommender systems, where the goal is to ra...
We study identifying user clusters in contextual multi-armed bandits (MAB). Contextual MAB is an eff...
Abstract Most recommender systems recommend a list of items. The user examines the list, from the fi...
Non-stationarity appears in many online applications such as web search and advertising. In this pap...
We study the problem of learning a clustering of an online set of points. The specific formulation w...
11 pages, 1 figureWe study the problem of online clustering where a clustering algorithm has to assi...
In this paper, we study the problem of safe online learning to re-rank, where user feedback is used ...
We introduce a set of clustering algorithms whose performance func-tion is such that the algorithms ...
We study the problem of online multiclass classification in a setting where the learner’s feedback i...
We introduce a novel algorithmic approach to content recommendation based on adaptive clustering of ...
Multi-armed bandit problems are receiving a great deal of attention because they adequately formaliz...
In this thesis we address the multi-armed bandit (MAB) problem with stochastic rewards and correlate...
Contextual combinatorial cascading bandit ( $C^{3}$ -bandit) is a powerful multi-armed bandit framew...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
Modern learning systems like recommendation engines, computational advertising systems, online param...
Ranking system is the core part of modern retrieval and recommender systems, where the goal is to ra...
We study identifying user clusters in contextual multi-armed bandits (MAB). Contextual MAB is an eff...
Abstract Most recommender systems recommend a list of items. The user examines the list, from the fi...
Non-stationarity appears in many online applications such as web search and advertising. In this pap...
We study the problem of learning a clustering of an online set of points. The specific formulation w...
11 pages, 1 figureWe study the problem of online clustering where a clustering algorithm has to assi...
In this paper, we study the problem of safe online learning to re-rank, where user feedback is used ...
We introduce a set of clustering algorithms whose performance func-tion is such that the algorithms ...
We study the problem of online multiclass classification in a setting where the learner’s feedback i...
We introduce a novel algorithmic approach to content recommendation based on adaptive clustering of ...
Multi-armed bandit problems are receiving a great deal of attention because they adequately formaliz...
In this thesis we address the multi-armed bandit (MAB) problem with stochastic rewards and correlate...
Contextual combinatorial cascading bandit ( $C^{3}$ -bandit) is a powerful multi-armed bandit framew...
International audienceAlgorithms for learning to rank Web documents, display ads, or other types of ...
Modern learning systems like recommendation engines, computational advertising systems, online param...
Ranking system is the core part of modern retrieval and recommender systems, where the goal is to ra...
We study identifying user clusters in contextual multi-armed bandits (MAB). Contextual MAB is an eff...
Abstract Most recommender systems recommend a list of items. The user examines the list, from the fi...