Inferring user preferences over a set of items is an important problem that has found numerous applications. This work fo-cuses on the scenario where the explicit feature representation of items is unavailable, a setup that is similar to collaborative filtering. In order to learn a user’s preferences from his/her response to only a small number of pairwise comparisons, we propose to leverage the pairwise comparisons made by many crowd users, a problem we refer to as crowdranking. The proposed crowdranking framework is based on the the-ory of matrix completion, and we present efficient algorithms for solving the related optimization problem. Our theoretical analysis shows that, on average, only O(r logm) pairwise queries are needed to accura...
University of Minnesota Ph.D. dissertation.September 2017. Major: Computer Science. Advisor: George...
With the development of the Web, users spend more time accessing information that they seek. As a re...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Inferring user preferences over a set of items is an important problem that has found numerous appli...
Inferring user preferences over a set of items is an important problem that has found numerous appli...
Crowdsourced ranking algorithms ask the crowd to compare the objects and infer the full ranking base...
International audienceGiven a set of pairwise comparisons, the classical ranking problem computes a ...
Ranking items is an essential problem in recommendation systems. Since comparing two items is the si...
Crowdsourcing provides a convenient way to collect information from humans. It is proved to be an ef...
Crowdsourcing utilizes human ability by distributing tasks to a large number of workers. It is espec...
We consider the problem of learning users' preferential orderings for a set of items when only a lim...
This is the first study of crowdsourcing Pareto-optimal object find-ing over partial orders and by p...
Ranking a set of candidates or items from pair-wise comparisons is a fundamental problem that arises...
In this paper, we consider a popular model for collabora-tive filtering in recommender systems where...
We study the problem of learning to accurately rank a set of objects by combining a given collection...
University of Minnesota Ph.D. dissertation.September 2017. Major: Computer Science. Advisor: George...
With the development of the Web, users spend more time accessing information that they seek. As a re...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Inferring user preferences over a set of items is an important problem that has found numerous appli...
Inferring user preferences over a set of items is an important problem that has found numerous appli...
Crowdsourced ranking algorithms ask the crowd to compare the objects and infer the full ranking base...
International audienceGiven a set of pairwise comparisons, the classical ranking problem computes a ...
Ranking items is an essential problem in recommendation systems. Since comparing two items is the si...
Crowdsourcing provides a convenient way to collect information from humans. It is proved to be an ef...
Crowdsourcing utilizes human ability by distributing tasks to a large number of workers. It is espec...
We consider the problem of learning users' preferential orderings for a set of items when only a lim...
This is the first study of crowdsourcing Pareto-optimal object find-ing over partial orders and by p...
Ranking a set of candidates or items from pair-wise comparisons is a fundamental problem that arises...
In this paper, we consider a popular model for collabora-tive filtering in recommender systems where...
We study the problem of learning to accurately rank a set of objects by combining a given collection...
University of Minnesota Ph.D. dissertation.September 2017. Major: Computer Science. Advisor: George...
With the development of the Web, users spend more time accessing information that they seek. As a re...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...