Title
Ranking-based evaluation of regression models
Abstract
We suggest the use of ranking-based evaluation measures for regression models, as a complement to the commonly used residual-based evaluation. We argue that in some cases, such as the case study we present, ranking can be the main underlying goal in building a regression model, and ranking performance is the correct evaluation metric. However, even when ranking is not the contextually correct performance metric, the measures we explore still have significant advantages: They are robust against extreme outliers in the evaluation set; and they are interpretable. The two measures we consider correspond closely to non-parametric correlation coefficients commonly used in data analysis (Spearman's ρ and Kendall's τ); and they both have interesting graphical representations, which, similarly to ROC curves, offer useful various model performance views, in addition to a one-number summary in the area under the curve. An interesting extension which we explore is to evaluate models on their performance in “partially” ranking the data, which we argue can better represent the utility of the model in many cases. We illustrate our methods on a case study of evaluating IT Wallet size estimation models for IBM's customers.
Year
DOI
Venue
2007
10.1109/ICDM.2005.126
IEEE International Conference on Data Mining
Keywords
DocType
Volume
correlation methods,data analysis,regression analysis,data analysis,evaluation metric,graphical representation,model performance views,nonparametric correlation coefficients,ranking performance,ranking-based evaluation,regression model,residual-based evaluation
Journal
12
Issue
ISSN
ISBN
3
1550-4786
0-7695-2278-5
Citations 
PageRank 
References 
22
1.12
6
Authors
3
Name
Order
Citations
PageRank
Saharon Rosset11087105.33
Claudia Perlich252345.01
Bianca Zadrozny31585135.66