Recommender systems rely heavily on user data to make accurate rec- ommendations. This presents a problem for new users for whom no such data is available. This study investigated if this problem could be reduced by basing recommendations solely on user’s demographic in- formation. Experiments were conducted using a framework that em- ploys K-means clustering. To evaluate the framework, the MovieLens 100K dataset was applied to a set of experiments. While the results did not exhibit any correlation between ratings and demographic features in the MovieLens 100K dataset, it does not exclude that the framework is not effective on other datasets with more demographic features. Rekommendationssystem förlitar sig starkt på användardata för at...
This report targets a specific problem for recommender algorithms which is the new item problem and ...
There is a substantial increase in demand for recommender systems which have applications in a varie...
Thanks to the internet an abundance of information is available just one click away. All this inform...
Recommender systems rely heavily on user data to make accurate rec- ommendations. This presents a pr...
Recommender systems are used extensively today in many areas to help users and consumers with making...
Many services provide recommendations for their users in order for them to easily find relevant info...
The amount of video content online will nearly triple in quantity by 2021 compared to 2016. The impl...
This thesis investigates how quantitative user data, extracted from server logs, and clustering algo...
Det finns många webbsidor och flera av dem erbjuder miljontals objekt. För att hjälpa användarna att...
Personalisation of content is a frequently used technique intended to improve user engagement and pr...
Recommendation systems is an area within machine learning that has become increasingly relevant with...
Recommender Systems are information filtering systems that aim to predict a user’s preference for an...
This study investigated the effect that aggregation functions and similarity measures had on the acc...
The goal of this master’s thesis was to create a model that predicts preference towards a specific e...
With a constantly increasing amount of content on the internet, filtering algorithms are now more re...
This report targets a specific problem for recommender algorithms which is the new item problem and ...
There is a substantial increase in demand for recommender systems which have applications in a varie...
Thanks to the internet an abundance of information is available just one click away. All this inform...
Recommender systems rely heavily on user data to make accurate rec- ommendations. This presents a pr...
Recommender systems are used extensively today in many areas to help users and consumers with making...
Many services provide recommendations for their users in order for them to easily find relevant info...
The amount of video content online will nearly triple in quantity by 2021 compared to 2016. The impl...
This thesis investigates how quantitative user data, extracted from server logs, and clustering algo...
Det finns många webbsidor och flera av dem erbjuder miljontals objekt. För att hjälpa användarna att...
Personalisation of content is a frequently used technique intended to improve user engagement and pr...
Recommendation systems is an area within machine learning that has become increasingly relevant with...
Recommender Systems are information filtering systems that aim to predict a user’s preference for an...
This study investigated the effect that aggregation functions and similarity measures had on the acc...
The goal of this master’s thesis was to create a model that predicts preference towards a specific e...
With a constantly increasing amount of content on the internet, filtering algorithms are now more re...
This report targets a specific problem for recommender algorithms which is the new item problem and ...
There is a substantial increase in demand for recommender systems which have applications in a varie...
Thanks to the internet an abundance of information is available just one click away. All this inform...