Saved in:
Bibliographic Details
Main Authors: Kocmi, Tom, Zouhar, Vilém, Federmann, Christian, Post, Matt
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.06760
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914830335606784
author Kocmi, Tom
Zouhar, Vilém
Federmann, Christian
Post, Matt
author_facet Kocmi, Tom
Zouhar, Vilém
Federmann, Christian
Post, Matt
contents Ten years ago a single metric, BLEU, governed progress in machine translation research. For better or worse, there is no such consensus today, and consequently it is difficult for researchers to develop and retain the kinds of heuristic intuitions about metric deltas that drove earlier research and deployment decisions. This paper investigates the "dynamic range" of a number of modern metrics in an effort to provide a collective understanding of the meaning of differences in scores both within and among metrics; in other words, we ask what point difference X in metric Y is required between two systems for humans to notice? We conduct our evaluation on a new large dataset, ToShip23, using it to discover deltas at which metrics achieve system-level differences that are meaningful to humans, which we measure by pairwise system accuracy. We additionally show that this method of establishing delta-accuracy is more stable than the standard use of statistical p-values in regards to testset size. Where data size permits, we also explore the effect of metric deltas and accuracy across finer-grained features such as translation direction, domain, and system closeness.
format Preprint
id arxiv_https___arxiv_org_abs_2401_06760
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Navigating the Metrics Maze: Reconciling Score Magnitudes and Accuracies
Kocmi, Tom
Zouhar, Vilém
Federmann, Christian
Post, Matt
Computation and Language
Ten years ago a single metric, BLEU, governed progress in machine translation research. For better or worse, there is no such consensus today, and consequently it is difficult for researchers to develop and retain the kinds of heuristic intuitions about metric deltas that drove earlier research and deployment decisions. This paper investigates the "dynamic range" of a number of modern metrics in an effort to provide a collective understanding of the meaning of differences in scores both within and among metrics; in other words, we ask what point difference X in metric Y is required between two systems for humans to notice? We conduct our evaluation on a new large dataset, ToShip23, using it to discover deltas at which metrics achieve system-level differences that are meaningful to humans, which we measure by pairwise system accuracy. We additionally show that this method of establishing delta-accuracy is more stable than the standard use of statistical p-values in regards to testset size. Where data size permits, we also explore the effect of metric deltas and accuracy across finer-grained features such as translation direction, domain, and system closeness.
title Navigating the Metrics Maze: Reconciling Score Magnitudes and Accuracies
topic Computation and Language
url https://arxiv.org/abs/2401.06760