TY - JOUR
T1 - A method for evaluating the navigability of recommendation algorithms
AU - Lamprecht, Daniel
AU - Strohmaier, Markus
AU - Helic, Denis
N1 - 5th International Workshop on Complex Networks and their Applications : COMPLEX NETWORKS 2016 , COMPLEX NETWORKS 2016 ; Conference date: 30-11-2016 Through 02-12-2016
PY - 2017
Y1 - 2017
N2 - Recommendations are increasingly used to support and enable discovery, browsing and exploration of large item collections, especially when no clear classification of items exists. Yet, the suitability of a recommendation algorithm to support these use cases cannot be comprehensively evaluated by any evaluation measures proposed so far. In this paper, we propose a method to expand the repertoire of existing recommendation evaluation techniques with a method to evaluate the navigability of recommendation algorithms. The proposed method combines approaches from network science and information retrieval and evaluates navigability by simulating three different models of information seeking scenarios and measuring the success rates. We show the feasibility of our method by applying it to four non-personalized recommendation algorithms on three datasets and also illustrate its applicability to personalized algorithms. Our work expands the arsenal of evaluation techniques for recommendation algorithms, extends from a one-click-based evaluation towards multi-click analysis and presents a general, comprehensive method to evaluating navigability of arbitrary recommendation algorithms.
AB - Recommendations are increasingly used to support and enable discovery, browsing and exploration of large item collections, especially when no clear classification of items exists. Yet, the suitability of a recommendation algorithm to support these use cases cannot be comprehensively evaluated by any evaluation measures proposed so far. In this paper, we propose a method to expand the repertoire of existing recommendation evaluation techniques with a method to evaluate the navigability of recommendation algorithms. The proposed method combines approaches from network science and information retrieval and evaluates navigability by simulating three different models of information seeking scenarios and measuring the success rates. We show the feasibility of our method by applying it to four non-personalized recommendation algorithms on three datasets and also illustrate its applicability to personalized algorithms. Our work expands the arsenal of evaluation techniques for recommendation algorithms, extends from a one-click-based evaluation towards multi-click analysis and presents a general, comprehensive method to evaluating navigability of arbitrary recommendation algorithms.
U2 - 10.1007/978-3-319-50901-3_20
DO - 10.1007/978-3-319-50901-3_20
M3 - Article
SN - 1860-949X
VL - 693
SP - 247
EP - 259
JO - Studies in Computational Intelligence
JF - Studies in Computational Intelligence
ER -