Most recommender systems suggest items to a user that are popular among all users and similar to items the user usually consumes. As a result, a user receives recommendations that she/he is already familiar with or would find anyway, leading to low satisfaction. To overcome this problem, a recommender system should suggest novel, relevant and unexpected, i.e. serendipitous items. In this paper, we propose a serendipity-oriented algorithm, which improves serendipity through feature diversification and helps overcome the overspecialization problem. To evaluate our algorithm and compare it with others, we employ a serendipity metric that captures each component of serendipity, unlike the most common metric.peerReviewe
The development of information technology has stimulated an increasing number of researchers to inve...
Recommender rystem (RS) is created to solve the problem by recommending some items among a huge sele...
Abstract. Recommender systems can provide users with relevant items based on each user’s preferences...
Most recommender systems suggest items that are popular among all users and similar to items a user ...
Recommender systems are filters which suggest items or information that might be interesting to use...
Most recommender systems suggest items similar to a user profile, which results in boring recommenda...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
Recommender systems suggest items, such as movies or books, to users based on their interests. These...
Today recommenders are commonly used with various purposes, especially dealing with e-commerce and i...
Personalization techniques aim at helping people dealing with the ever growing amount of information...
Recommender systems enable users to discover items of interest from a large set of alternatives. Mos...
Recommender systems are intelligent applications build to predict the rating or preference that a us...
Recommender Systems try to assist users to access complex information spaces regarding their long te...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
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 rystem (RS) is created to solve the problem by recommending some items among a huge sele...
Abstract. Recommender systems can provide users with relevant items based on each user’s preferences...
Most recommender systems suggest items that are popular among all users and similar to items a user ...
Recommender systems are filters which suggest items or information that might be interesting to use...
Most recommender systems suggest items similar to a user profile, which results in boring recommenda...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
Recommender systems suggest items, such as movies or books, to users based on their interests. These...
Today recommenders are commonly used with various purposes, especially dealing with e-commerce and i...
Personalization techniques aim at helping people dealing with the ever growing amount of information...
Recommender systems enable users to discover items of interest from a large set of alternatives. Mos...
Recommender systems are intelligent applications build to predict the rating or preference that a us...
Recommender Systems try to assist users to access complex information spaces regarding their long te...
Widely used recommendation systems are mainly accuracy-oriented since they are based on item-based r...
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 rystem (RS) is created to solve the problem by recommending some items among a huge sele...
Abstract. Recommender systems can provide users with relevant items based on each user’s preferences...