Content recommender systems often rely on modeling users’ past behavioral data to provide personalized recommendations - a practice that works well for suggesting more of the same and for media that require little time investment from users, such as music tracks. However, this approach can be further optimized for media where the user investment is higher, such as podcasts, because there is a broader space of user goals that might not be captured by the implicit signals of their past behavior. Allowing users to directly specify their goals might help narrow the space of possible recommendations. Thus, in this paper, we explore how we can enable goal-focused exploration in recommender systems by leveraging explicit input from users about the...
Educational recommenders have received much less attention in comparison with e-commerce- and entert...
Abstract. Personalization is one of the important research issues in the areas of information retrie...
In everyday life, we keep receiving recommendations from others either by words of mouth, press prin...
Content recommender systems often rely on modeling users’ past behavioral data to provide personaliz...
We report on an exploratory, qualitative user study designed to identify users’ goals underlying pod...
Purpose - This research aims to identify users' goals and strategies when searching for podcasts and...
Recommender systems help people to find information that is interesting to them. However, current re...
Recommender Systems are popular tools that automatically compute personalised suggestions for items ...
Recommender systems focus on automatically surfacing suitable items for users from digital collectio...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
Users are often found in situations where they need to make selections from very large collections ...
The Internet has provided people with the possibility to easily publish and search for information. ...
26 pagesPeople’s online content choices should be driven by their intentions, but can be greatly aff...
This thesis explores the effects of incorporating user consumption behavior and multiple types of us...
Through analysis of five focus groups with people who “usually (more often than not) listened to at ...
Educational recommenders have received much less attention in comparison with e-commerce- and entert...
Abstract. Personalization is one of the important research issues in the areas of information retrie...
In everyday life, we keep receiving recommendations from others either by words of mouth, press prin...
Content recommender systems often rely on modeling users’ past behavioral data to provide personaliz...
We report on an exploratory, qualitative user study designed to identify users’ goals underlying pod...
Purpose - This research aims to identify users' goals and strategies when searching for podcasts and...
Recommender systems help people to find information that is interesting to them. However, current re...
Recommender Systems are popular tools that automatically compute personalised suggestions for items ...
Recommender systems focus on automatically surfacing suitable items for users from digital collectio...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
Users are often found in situations where they need to make selections from very large collections ...
The Internet has provided people with the possibility to easily publish and search for information. ...
26 pagesPeople’s online content choices should be driven by their intentions, but can be greatly aff...
This thesis explores the effects of incorporating user consumption behavior and multiple types of us...
Through analysis of five focus groups with people who “usually (more often than not) listened to at ...
Educational recommenders have received much less attention in comparison with e-commerce- and entert...
Abstract. Personalization is one of the important research issues in the areas of information retrie...
In everyday life, we keep receiving recommendations from others either by words of mouth, press prin...