Numerous recommendation approaches are in use today. However, comparing their effectiveness is a challenging task because evaluation results are rarely reproducible. In this article, we examine the challenge of reproducibility in recommender-system research. We conduct experiments using Plista’s news recommender system, and Docear’s research-paper recommender system. The experiments show that there are large discrepancies in the effectiveness of identical recommendation approaches in only slightly different scenarios, as well as large discrepancies for slightly different approaches in identical scenarios. For example, in one news-recommendation scenario, the performance of a content-based filtering approach was twice as high as the second-b...
Recommender systems research is often based on comparisons of predictive accuracy: the better the ev...
A number of researches in the Recommender Systems (RSs) domain suggest that the recommendations that...
Recommender Systems (RSs) help users search large amounts of digital contents and services by allowi...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Recommender systems evaluation is usually based on predictiveaccuracy metrics with better scores mea...
This work is a reproducibility study of the paper "Revisiting Popularity and Demographic Biases in R...
Recommender systems' evaluation is usually based on predictive accuracy and information retrieval me...
Part 1: Long and Short PapersInternational audienceA number of researches in the Recommender Systems...
Recommender systems research is being slowed by the diffi-ulty of replicating and comparing research...
Abstract Recommender systems are now popular both commercially and in the research community, where ...
Recommender systems research is by and large based on compar-isons of recommendation algorithms ’ pr...
This is the author's version of the work. It is posted here for your personal use. Not for redistrib...
Abstract. In the last sixteen years, more than 200 research articles were published about research-p...
Recommender systems are used in many fields, and many ideas have been proposed how to recommend usef...
© 2019, Springer-Verlag London Ltd., part of Springer Nature. The offline evaluation of recommender ...
Recommender systems research is often based on comparisons of predictive accuracy: the better the ev...
A number of researches in the Recommender Systems (RSs) domain suggest that the recommendations that...
Recommender Systems (RSs) help users search large amounts of digital contents and services by allowi...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Recommender systems evaluation is usually based on predictiveaccuracy metrics with better scores mea...
This work is a reproducibility study of the paper "Revisiting Popularity and Demographic Biases in R...
Recommender systems' evaluation is usually based on predictive accuracy and information retrieval me...
Part 1: Long and Short PapersInternational audienceA number of researches in the Recommender Systems...
Recommender systems research is being slowed by the diffi-ulty of replicating and comparing research...
Abstract Recommender systems are now popular both commercially and in the research community, where ...
Recommender systems research is by and large based on compar-isons of recommendation algorithms ’ pr...
This is the author's version of the work. It is posted here for your personal use. Not for redistrib...
Abstract. In the last sixteen years, more than 200 research articles were published about research-p...
Recommender systems are used in many fields, and many ideas have been proposed how to recommend usef...
© 2019, Springer-Verlag London Ltd., part of Springer Nature. The offline evaluation of recommender ...
Recommender systems research is often based on comparisons of predictive accuracy: the better the ev...
A number of researches in the Recommender Systems (RSs) domain suggest that the recommendations that...
Recommender Systems (RSs) help users search large amounts of digital contents and services by allowi...