Saved in:
Bibliographic Details
Main Authors: Wei, Johnny Tian-Zheng, Jia, Robin
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2105.12437
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917868041404416
author Wei, Johnny Tian-Zheng
Jia, Robin
author_facet Wei, Johnny Tian-Zheng
Jia, Robin
contents Estimating the expected output quality of generation systems is central to NLG. This paper qualifies the notion that automatic metrics are not as good as humans in estimating system-level quality. Statistically, humans are unbiased, high variance estimators, while metrics are biased, low variance estimators. We compare these estimators by their error in pairwise prediction (which generation system is better?) using the bootstrap. Measuring this error is complicated: predictions are evaluated against noisy, human predicted labels instead of the ground truth, and metric predictions fluctuate based on the test sets they were calculated on. By applying a bias-variance-noise decomposition, we adjust this error to a noise-free, infinite test set setting. Our analysis compares the adjusted error of metrics to humans and a derived, perfect segment-level annotator, both of which are unbiased estimators dependent on the number of judgments collected. In MT, we identify two settings where metrics outperform humans due to a statistical advantage in variance: when the number of human judgments used is small, and when the quality difference between compared systems is small. The data and code to reproduce our analyses are available at https://github.com/johntzwei/metric-statistical-advantage .
format Preprint
id arxiv_https___arxiv_org_abs_2105_12437
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle The statistical advantage of automatic NLG metrics at the system level
Wei, Johnny Tian-Zheng
Jia, Robin
Computation and Language
Estimating the expected output quality of generation systems is central to NLG. This paper qualifies the notion that automatic metrics are not as good as humans in estimating system-level quality. Statistically, humans are unbiased, high variance estimators, while metrics are biased, low variance estimators. We compare these estimators by their error in pairwise prediction (which generation system is better?) using the bootstrap. Measuring this error is complicated: predictions are evaluated against noisy, human predicted labels instead of the ground truth, and metric predictions fluctuate based on the test sets they were calculated on. By applying a bias-variance-noise decomposition, we adjust this error to a noise-free, infinite test set setting. Our analysis compares the adjusted error of metrics to humans and a derived, perfect segment-level annotator, both of which are unbiased estimators dependent on the number of judgments collected. In MT, we identify two settings where metrics outperform humans due to a statistical advantage in variance: when the number of human judgments used is small, and when the quality difference between compared systems is small. The data and code to reproduce our analyses are available at https://github.com/johntzwei/metric-statistical-advantage .
title The statistical advantage of automatic NLG metrics at the system level
topic Computation and Language
url https://arxiv.org/abs/2105.12437