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Main Authors: Masson, Maxime, Agerri, Rodrigo, Sallaberry, Christian, Bessagnet, Marie-Noelle, Lacayrelle, Annig Le Parc, Roose, Philippe
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2311.14727
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author Masson, Maxime
Agerri, Rodrigo
Sallaberry, Christian
Bessagnet, Marie-Noelle
Lacayrelle, Annig Le Parc
Roose, Philippe
author_facet Masson, Maxime
Agerri, Rodrigo
Sallaberry, Christian
Bessagnet, Marie-Noelle
Lacayrelle, Annig Le Parc
Roose, Philippe
contents The rising influence of social media platforms in various domains, including tourism, has highlighted the growing need for efficient and automated Natural Language Processing (NLP) strategies to take advantage of this valuable resource. However, the transformation of multilingual, unstructured, and informal texts into structured knowledge still poses significant challenges, most notably the never-ending requirement for manually annotated data to train deep learning classifiers. In this work, we study different NLP techniques to establish the best ones to obtain competitive performances while keeping the need for training annotated data to a minimum. To do so, we built the first publicly available multilingual dataset (French, English, and Spanish) for the tourism domain, composed of tourism-related tweets. The dataset includes multilayered, manually revised annotations for Named Entity Recognition (NER) for Locations and Fine-grained Thematic Concepts Extraction mapped to the Thesaurus of Tourism and Leisure Activities of the World Tourism Organization, as well as for Sentiment Analysis at the tweet level. Extensive experimentation comparing various few-shot and fine-tuning techniques with modern language models demonstrate that modern few-shot techniques allow us to obtain competitive results for all three tasks with very little annotation data: 5 tweets per label (15 in total) for Sentiment Analysis, 30 tweets for Named Entity Recognition of Locations and 1K tweets annotated with fine-grained thematic concepts, a highly fine-grained sequence labeling task based on an inventory of 315 classes. We believe that our results, grounded in a novel dataset, pave the way for applying NLP to new domain-specific applications, reducing the need for manual annotations and circumventing the complexities of rule-based, ad-hoc solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2311_14727
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Optimal strategies to perform multilingual analysis of social content for a novel dataset in the tourism domain
Masson, Maxime
Agerri, Rodrigo
Sallaberry, Christian
Bessagnet, Marie-Noelle
Lacayrelle, Annig Le Parc
Roose, Philippe
Computation and Language
Machine Learning
The rising influence of social media platforms in various domains, including tourism, has highlighted the growing need for efficient and automated Natural Language Processing (NLP) strategies to take advantage of this valuable resource. However, the transformation of multilingual, unstructured, and informal texts into structured knowledge still poses significant challenges, most notably the never-ending requirement for manually annotated data to train deep learning classifiers. In this work, we study different NLP techniques to establish the best ones to obtain competitive performances while keeping the need for training annotated data to a minimum. To do so, we built the first publicly available multilingual dataset (French, English, and Spanish) for the tourism domain, composed of tourism-related tweets. The dataset includes multilayered, manually revised annotations for Named Entity Recognition (NER) for Locations and Fine-grained Thematic Concepts Extraction mapped to the Thesaurus of Tourism and Leisure Activities of the World Tourism Organization, as well as for Sentiment Analysis at the tweet level. Extensive experimentation comparing various few-shot and fine-tuning techniques with modern language models demonstrate that modern few-shot techniques allow us to obtain competitive results for all three tasks with very little annotation data: 5 tweets per label (15 in total) for Sentiment Analysis, 30 tweets for Named Entity Recognition of Locations and 1K tweets annotated with fine-grained thematic concepts, a highly fine-grained sequence labeling task based on an inventory of 315 classes. We believe that our results, grounded in a novel dataset, pave the way for applying NLP to new domain-specific applications, reducing the need for manual annotations and circumventing the complexities of rule-based, ad-hoc solutions.
title Optimal strategies to perform multilingual analysis of social content for a novel dataset in the tourism domain
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2311.14727