Research on fairness in machine learning has been recently extended to recommender systems. One of the factors that may impact fairness is bias disparity, the degree to which a group’s preferences on various item categories fail to be reflected in the recommendations they receive. In some cases biases in the original data may be amplified or reversed by the underlying recommendation algorithm. In this paper, we explore how different recommendation algorithms reflect the tradeoff between ranking quality and bias disparity. Our experiments include neighborhood-based, model-based, and trust-aware recommendation algorithms.</p
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
Collaborative filtering algorithms have the advantage of not requiring sensitive user or item inform...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Collaborative filtering algorithms have the advantage of not requiring sensitive user or item inform...
Collaborative filtering algorithms have the advantage of not requiring sensitive user or item inform...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
Research on fairness in machine learning has been recently extended to recommender systems. One of t...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
Collaborative filtering algorithms have the advantage of not requiring sensitive user or item inform...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Collaborative filtering algorithms have the advantage of not requiring sensitive user or item inform...
Collaborative filtering algorithms have the advantage of not requiring sensitive user or item inform...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Recommender Systems are widely used to personalize the user experience in a diverse set of online ap...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...