User-Centric Evaluation of a K-Furthest Neighbor Collaborative Filtering Recommender Algorithm

Abstract

Collaborative filtering recommender systems often use nearest neighbor methods to identify candidate items. In this paper we present an inverted neighborhood model, k-Furthest Neighbors, to identify less ordinary neighborhoods for the purpose of creating more diverse recommendations. The approach is evaluated two-fold, once in a traditional information retrieval evaluation setting where the model is trained and validated on a split train/test set, and once through an online user study (N=132) to identify users’ perceived quality of the recommender. A standard k-nearest neighbor recommender is used as a baseline in both evaluation settings. Our evaluation shows that even though the proposed furthest neighbor model is outperformed in the traditional evaluation setting, the perceived usefulness of the algorithm shows no significant difference in the results of the user study.

@inproceedings{Said:2013:UEK,
author = {Alan Said and Benjamin Fields and Brijnesh J. Jain and Sahin Albayrak},
title = {User-Centric Evaluation of a K-Furthest Neighbor Collaborative Filtering Recommender Algorithm},
booktitle = {Proceedings of 16th ACM Conference on Computer Supported Cooperative Work and Social Computing},
year = {2013},
publisher = {ACM},
series = {CSCW},
}
Authors:
Alan Said, Benjamin Fields, Brijnesh Jain, Sahin Albayrak
Category:
Conference Paper
Year:
2013
Location:
Proceedings of the 16th ACM Conference on Computer Supported Cooperative Work and Social Computing (CSCW'13) [to appear]