Previous research has found that enabling users to control the recommendation process increases user satisfaction. However, providing additional controls also increases cognitive load, and different users have different needs for control. Therefore, in this study, we investigate the effect of two personal characteristics: musical sophistication and visual memory capacity. We designed a visual user interface, on top of a commercial music recommender, with different controls: interactions with recommendations (i.e., the output of a recommender system), the user profile (i.e., the top listened songs), and algorithm parameters (i.e., weights in an algorithm). We created eight experimental settings with combinations of these three user controls ...
Recommender systems are efficient at predicting users' current preferences, but how users' preferenc...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
This paper proposes a novel approach to automated music recommendation systems. Current systems use ...
Previous research has found that enabling users to control the recommendation process increases user...
Music recommender systems typically offer a “one-size-fits-all” approach with the same user controls...
© 2018 Association for Computing Machinery. The "black box" nature of today's recommender systems ra...
are often presented with a narrower range of content. To mitigate this issue, diversity-enhanced use...
When recommendations become increasingly personalized, users are often presented with a narrower ran...
We have become increasingly reliant on recommender systems to help us make decisions in our daily li...
© 2018 Association for Computing Machinery. When recommendations become increasingly personalized, u...
Music preferences are likely to depend on contextual characteristics such as location and activity. ...
Software has indeed become an essential part of how cultural artifacts are circulated. Due to advanc...
© 2019 Association for Computing Machinery. Recommender systems have been increasingly used in onlin...
We investigate a range of music recommendation algorithm combinations, score aggregation functions, ...
Abstract. We investigate a range of music recommendation algorithm combinations, score aggregation f...
Recommender systems are efficient at predicting users' current preferences, but how users' preferenc...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
This paper proposes a novel approach to automated music recommendation systems. Current systems use ...
Previous research has found that enabling users to control the recommendation process increases user...
Music recommender systems typically offer a “one-size-fits-all” approach with the same user controls...
© 2018 Association for Computing Machinery. The "black box" nature of today's recommender systems ra...
are often presented with a narrower range of content. To mitigate this issue, diversity-enhanced use...
When recommendations become increasingly personalized, users are often presented with a narrower ran...
We have become increasingly reliant on recommender systems to help us make decisions in our daily li...
© 2018 Association for Computing Machinery. When recommendations become increasingly personalized, u...
Music preferences are likely to depend on contextual characteristics such as location and activity. ...
Software has indeed become an essential part of how cultural artifacts are circulated. Due to advanc...
© 2019 Association for Computing Machinery. Recommender systems have been increasingly used in onlin...
We investigate a range of music recommendation algorithm combinations, score aggregation functions, ...
Abstract. We investigate a range of music recommendation algorithm combinations, score aggregation f...
Recommender systems are efficient at predicting users' current preferences, but how users' preferenc...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
This paper proposes a novel approach to automated music recommendation systems. Current systems use ...