A user of a recommender system is more likely to be satisfied by one or more of the recommendations if each individual recommendation is relevant to her but additionally if the set of recommendations is diverse. The most common approach to recommendation diversification uses re-ranking: the recommender system scores a set of candidate items for relevance to the user; it then re-ranks the candidates so that the subset that it will recommend achieves a balance between relevance and diversity. Ordinarily, we expect a trade-off between relevance and diversity: the diversity of the set of recommendations increases by including items that have lower relevance scores but which are different from the items already in the set. In early work, the div...
There is increasing awareness in the Recommender Systems field that diversity is a key property that...
The intent-oriented search diversification methods developed in the field so far tend to build on ge...
Recommender systems use data on past user preferences to predict possible future likes and interests...
A user of a recommender system is more likely to be satisfied by one or more of the recommendations ...
A user of a recommender system is more likely to be satisfied by one or more of the recommendations ...
International audienceThe diversity of the item list suggested by recommender systems has been prove...
ReportRecommender Systems have emerged to guide users in the task of efficiently browsing/exploring ...
Accuracy of the recommendations has long been regarded as the primary quality aspect of Recommender ...
Recommender Systems (RS) have emerged to guide users in the task of efficiently browsing/exploring a...
People like variety and often prefer to choose from large item sets. However, large sets can cause a...
This paper addresses recommendation diversification. Existing diversification methods have difficult...
Diversity has been identified as one of the key dimensions of recommendation utility that should be ...
This is the author's version of the work. It is posted here for your personal use. Not for redistrib...
Sales diversity is considered a key feature of Recommender Systems from a business perspective. Sale...
The need for diversification manifests in various recommendation use cases. In this work, we pro-pos...
There is increasing awareness in the Recommender Systems field that diversity is a key property that...
The intent-oriented search diversification methods developed in the field so far tend to build on ge...
Recommender systems use data on past user preferences to predict possible future likes and interests...
A user of a recommender system is more likely to be satisfied by one or more of the recommendations ...
A user of a recommender system is more likely to be satisfied by one or more of the recommendations ...
International audienceThe diversity of the item list suggested by recommender systems has been prove...
ReportRecommender Systems have emerged to guide users in the task of efficiently browsing/exploring ...
Accuracy of the recommendations has long been regarded as the primary quality aspect of Recommender ...
Recommender Systems (RS) have emerged to guide users in the task of efficiently browsing/exploring a...
People like variety and often prefer to choose from large item sets. However, large sets can cause a...
This paper addresses recommendation diversification. Existing diversification methods have difficult...
Diversity has been identified as one of the key dimensions of recommendation utility that should be ...
This is the author's version of the work. It is posted here for your personal use. Not for redistrib...
Sales diversity is considered a key feature of Recommender Systems from a business perspective. Sale...
The need for diversification manifests in various recommendation use cases. In this work, we pro-pos...
There is increasing awareness in the Recommender Systems field that diversity is a key property that...
The intent-oriented search diversification methods developed in the field so far tend to build on ge...
Recommender systems use data on past user preferences to predict possible future likes and interests...