Visual Evaluation of Translation Alignment Data.

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Abstract

Translation alignment plays a crucial role in various applications in natural language processing and digital humanities. With the recent advance in neural machine translation and contextualized language models, numerous studies have emerged on this topic, and several models and tools have been proposed. The performance of the proposed models has been always tested on standard benchmark data sets of different language pairs according to quantitative metrics such as Alignment Error Rate (AER) and F1. However, a detailed explanation on what alignment features contribute to these scores is missing. In order to allow analyzing the performance of alignment models, we present a visual analytics framework that aids researchers and developers in visualizing the output of their alignment models. We propose different visualization approaches that support assessing their own model's performance against alignment gold standards or in comparison to the performance of other models.
OriginalsprogEngelsk
TitelEuroVis 2022 - Short Papers
RedaktørerMarco Agus, Wolfgang Aigner, Thomas Hoellt
Publikationsdato2022
Sider103-107
ISBN (Trykt)978-3-03868-184-7
DOI
StatusUdgivet - 2022
BegivenhedEUROVIS 2022: 24th EG Conference on Visualization - Rome, Italien
Varighed: 13. jun. 202217. jun. 2022
Konferencens nummer: 24
https://conferences.eg.org/eurovis2022/

Konference

KonferenceEUROVIS 2022
Nummer24
Land/OmrådeItalien
ByRome
Periode13/06/202217/06/2022
Internetadresse

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