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Main Authors: Havaldar, Shreya, Pressimone, Matthew, Wong, Eric, Ungar, Lyle
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.07135
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author Havaldar, Shreya
Pressimone, Matthew
Wong, Eric
Ungar, Lyle
author_facet Havaldar, Shreya
Pressimone, Matthew
Wong, Eric
Ungar, Lyle
contents Understanding how styles differ across languages is advantageous for training both humans and computers to generate culturally appropriate text. We introduce an explanation framework to extract stylistic differences from multilingual LMs and compare styles across languages. Our framework (1) generates comprehensive style lexica in any language and (2) consolidates feature importances from LMs into comparable lexical categories. We apply this framework to compare politeness, creating the first holistic multilingual politeness dataset and exploring how politeness varies across four languages. Our approach enables an effective evaluation of how distinct linguistic categories contribute to stylistic variations and provides interpretable insights into how people communicate differently around the world.
format Preprint
id arxiv_https___arxiv_org_abs_2310_07135
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Comparing Styles across Languages: A Cross-Cultural Exploration of Politeness
Havaldar, Shreya
Pressimone, Matthew
Wong, Eric
Ungar, Lyle
Computation and Language
Understanding how styles differ across languages is advantageous for training both humans and computers to generate culturally appropriate text. We introduce an explanation framework to extract stylistic differences from multilingual LMs and compare styles across languages. Our framework (1) generates comprehensive style lexica in any language and (2) consolidates feature importances from LMs into comparable lexical categories. We apply this framework to compare politeness, creating the first holistic multilingual politeness dataset and exploring how politeness varies across four languages. Our approach enables an effective evaluation of how distinct linguistic categories contribute to stylistic variations and provides interpretable insights into how people communicate differently around the world.
title Comparing Styles across Languages: A Cross-Cultural Exploration of Politeness
topic Computation and Language
url https://arxiv.org/abs/2310.07135