@lwa2010

A Novel Multidimensional Framework for Evaluating Recommender Systems

, , and . Proceedings of LWA2010 - Workshop-Woche: Lernen, Wissen & Adaptivitaet, Kassel, Germany, (2010)

Abstract

The popularity of recommender systems has led to a large variety of their application. This, however, makes their evaluation a challenging problem, because different and often contrasting criteria are established, such as accuracy, robustness, and scalability. In related research, usually only condensed numeric scores such as RMSE or AUC or F-measure are used for evaluation of an algorithm on a given data set. It is obvious that these scores are insufficient to measure user satisfaction. Focussing on the requirements of business and research users, this work proposes a novel, extensible framework for the evaluation of recommender systems. In order to ease user-driven analysis we have chosen a multidimensional approach. The research framework advocates interactive visual analysis, which allows easy refining and reshaping of queries. Integrated actions such as drill-down or slice/dice, enable the user to assess the performance of recommendations in terms of business criteria such as increase in revenue, accuracy, prediction error, coverage and more. The ability of the proposed framework to comprise an effective way for evaluating recommender systems in a business-user-centric way is shown by experimental results using a research prototype.

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