We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects of life. Search engines and recommender systems amongst others are used as sources of information and to help us in making all sort of decisions from selecting restaurants and books, to choosing friends and careers. This has given rise to important concerns regarding the fairness of such systems. In this tutorial, we aim at presenting a toolkit of methods used for ensuring fairness in rankings and recommendations. Our objectives are two-fold: (a) to present related methods of this novel, quickly evolving and impactful domain, and put them into perspective, and (b) to highlight open challenges and research paths for future work.acceptedVersion...
Collaborative Recommender Systems learn the users' preferences through their interaction history and...
Enabling non-discrimination for end-users of recommender systems by introducing consumer fairness is...
Abstract and Figures Ranking is a responsible process because it involves working with sensitive at...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
Today, ranking is the de facto way that information is presented to users in automated systems, whic...
As one of the most pervasive applications of machine learning, recommender systems are playing an im...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Algorithmic decision-making has become ubiquitous in our societal and economic lives. With more and ...
Recommender systems can strongly influence which information we see online, e.g, on social media, an...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
Recommender systems have the potential of helping users in finding relevant items in the online envi...
Collaborative Recommender Systems learn the users' preferences through their interaction history and...
Enabling non-discrimination for end-users of recommender systems by introducing consumer fairness is...
Abstract and Figures Ranking is a responsible process because it involves working with sensitive at...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
Today, ranking is the de facto way that information is presented to users in automated systems, whic...
As one of the most pervasive applications of machine learning, recommender systems are playing an im...
Fairness and related concerns have become of increasing importance in a variety of AI and machine le...
Nowadays, it is widely recognized that algorithms risk to reproduce and amplify human bias that hist...
Algorithmic decision-making has become ubiquitous in our societal and economic lives. With more and ...
Recommender systems can strongly influence which information we see online, e.g, on social media, an...
In this paper, we present the results of an empirical evaluation investigating how recommendation a...
Recommender systems have the potential of helping users in finding relevant items in the online envi...
Collaborative Recommender Systems learn the users' preferences through their interaction history and...
Enabling non-discrimination for end-users of recommender systems by introducing consumer fairness is...
Abstract and Figures Ranking is a responsible process because it involves working with sensitive at...