Combining Evaluation Metrics via the Unanimous Improvement Ratio and its Application to Clustering Tasks

01/18/2014
by   Enrique Amigó, et al.
0

Many Artificial Intelligence tasks cannot be evaluated with a single quality criterion and some sort of weighted combination is needed to provide system rankings. A problem of weighted combination measures is that slight changes in the relative weights may produce substantial changes in the system rankings. This paper introduces the Unanimous Improvement Ratio (UIR), a measure that complements standard metric combination criteria (such as van Rijsbergen's F-measure) and indicates how robust the measured differences are to changes in the relative weights of the individual metrics. UIR is meant to elucidate whether a perceived difference between two systems is an artifact of how individual metrics are weighted. Besides discussing the theoretical foundations of UIR, this paper presents empirical results that confirm the validity and usefulness of the metric for the Text Clustering problem, where there is a tradeoff between precision and recall based metrics and results are particularly sensitive to the weighting scheme used to combine them. Remarkably, our experiments show that UIR can be used as a predictor of how well differences between systems measured on a given test bed will also hold in a different test bed.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/07/2022

On the Metric Properties of IR Evaluation Measures Based on Ranking Axioms

The axiomatic analysis of IR evaluation metrics has contributed to a bet...
research
06/29/2021

When standard network measures fail to rank journals: A theoretical and empirical analysis

Journal rankings are widely used and are often based on citation data in...
research
10/03/2020

Hit ratio: An Evaluation Metric for Hashtag Recommendation

Hashtag recommendation is a crucial task, especially with an increase of...
research
05/30/2019

Using Metrics Suites to Improve the Measurement of Privacy in Graphs

Social graphs are widely used in research (e.g., epidemiology) and busin...
research
06/01/2020

An Effectiveness Metric for Ordinal Classification: Formal Properties and Experimental Results

In Ordinal Classification tasks, items have to be assigned to classes th...
research
12/29/2017

Objective evaluation metrics for automatic classification of EEG events

The evaluation of machine learning algorithms in biomedical fields for a...
research
02/22/2023

Recall as a Measure of Ranking Robustness

Researchers use recall to evaluate rankings across a variety of retrieva...

Please sign up or login with your details

Forgot password? Click here to reset