Most recommender systems suggest items similar to a user profile, which results in boring recommendations limited by user preferences indicated in the system. To overcome this problem, recommender systems should suggest serendipitous items, which is a challenging task, as it is unclear what makes items serendipitous to a user and how to measure serendipity. The concept is difficult to investigate, as serendipity includes an emotional dimension and serendipitous encounters are very rare. In this paper, we discuss mentioned challenges, review definitions of serendipity and serendipity-oriented evaluation metrics. The goal of the paper is to guide and inspire future efforts on serendipity in recommender systems.peerReviewe
In this paper, we propose a model to operationalise serendipity in content-based recommender systems...
The development of information technology has stimulated an increasing number of researchers to inve...
Recommender systems enable users to discover items of interest from a large set of alternatives. Mos...
Recommender systems suggest items, such as movies or books, to users based on their interests. These...
Most recommender systems suggest items to a user that are popular among all users and similar to ite...
Recommender systems analyze a users past behavior, build a user profile that stores information abo...
Recommender systems are intelligent applications build to predict the rating or preference that a us...
Recommender rystem (RS) is created to solve the problem by recommending some items among a huge sele...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
Recommender systems are filters which suggest items or information that might be interesting to use...
Personalization techniques aim at helping people dealing with the ever growing amount of information...
Today recommenders are commonly used with various purposes, especially dealing with e-commerce and i...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
We are investigating the problem of proposing serendipitous contents in a recommender system environ...
Most recommender systems suggest items that are popular among all users and similar to items a user ...
In this paper, we propose a model to operationalise serendipity in content-based recommender systems...
The development of information technology has stimulated an increasing number of researchers to inve...
Recommender systems enable users to discover items of interest from a large set of alternatives. Mos...
Recommender systems suggest items, such as movies or books, to users based on their interests. These...
Most recommender systems suggest items to a user that are popular among all users and similar to ite...
Recommender systems analyze a users past behavior, build a user profile that stores information abo...
Recommender systems are intelligent applications build to predict the rating or preference that a us...
Recommender rystem (RS) is created to solve the problem by recommending some items among a huge sele...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
Recommender systems are filters which suggest items or information that might be interesting to use...
Personalization techniques aim at helping people dealing with the ever growing amount of information...
Today recommenders are commonly used with various purposes, especially dealing with e-commerce and i...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
We are investigating the problem of proposing serendipitous contents in a recommender system environ...
Most recommender systems suggest items that are popular among all users and similar to items a user ...
In this paper, we propose a model to operationalise serendipity in content-based recommender systems...
The development of information technology has stimulated an increasing number of researchers to inve...
Recommender systems enable users to discover items of interest from a large set of alternatives. Mos...