Sciweavers

HICSS
2003
IEEE

A General Method for Statistical Performance Evaluation

13 years 9 months ago
A General Method for Statistical Performance Evaluation
In the paper, we propose a general method for statistical performance evaluation. The method incorporates various statistical metrics and automatically selects an appropriate statistical metric according to the problem parameters. Empirically, We compare the performance of five representative statistical metrics under different conditions through simulation. They are expected loss, Friedman statistic, interval-based selection, probability of win, and probably approximately correct. In the experiments, expected loss is the best for small means, like 1 or 2, and probably approximately correct is the best for all the other cases. Also, we apply the general method to compare the performance of HITS-based algorithms that combine four relevance scoring methods, VSM, Okapi, TLS, and CDR, using a set of broad topic queries. Among the four relevance scoring methods, CDR is the best statistically when it is combined with a HITS-based algorithm.
Longzhuang Li, Yi Shang, Wei Zhang, Hongchi Shi
Added 04 Jul 2010
Updated 04 Jul 2010
Type Conference
Year 2003
Where HICSS
Authors Longzhuang Li, Yi Shang, Wei Zhang, Hongchi Shi
Comments (0)