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Main Authors: Bagdon, Christopher, Karmalker, Prathamesh, Gurulingappa, Harsha, Klinger, Roman
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.17612
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author Bagdon, Christopher
Karmalker, Prathamesh
Gurulingappa, Harsha
Klinger, Roman
author_facet Bagdon, Christopher
Karmalker, Prathamesh
Gurulingappa, Harsha
Klinger, Roman
contents Labeling corpora constitutes a bottleneck to create models for new tasks or domains. Large language models mitigate the issue with automatic corpus labeling methods, particularly for categorical annotations. Some NLP tasks such as emotion intensity prediction, however, require text regression, but there is no work on automating annotations for continuous label assignments. Regression is considered more challenging than classification: The fact that humans perform worse when tasked to choose values from a rating scale lead to comparative annotation methods, including best-worst scaling. This raises the question if large language model-based annotation methods show similar patterns, namely that they perform worse on rating scale annotation tasks than on comparative annotation tasks. To study this, we automate emotion intensity predictions and compare direct rating scale predictions, pairwise comparisons and best-worst scaling. We find that the latter shows the highest reliability. A transformer regressor fine-tuned on these data performs nearly on par with a model trained on the original manual annotations.
format Preprint
id arxiv_https___arxiv_org_abs_2403_17612
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle "You are an expert annotator": Automatic Best-Worst-Scaling Annotations for Emotion Intensity Modeling
Bagdon, Christopher
Karmalker, Prathamesh
Gurulingappa, Harsha
Klinger, Roman
Computation and Language
Labeling corpora constitutes a bottleneck to create models for new tasks or domains. Large language models mitigate the issue with automatic corpus labeling methods, particularly for categorical annotations. Some NLP tasks such as emotion intensity prediction, however, require text regression, but there is no work on automating annotations for continuous label assignments. Regression is considered more challenging than classification: The fact that humans perform worse when tasked to choose values from a rating scale lead to comparative annotation methods, including best-worst scaling. This raises the question if large language model-based annotation methods show similar patterns, namely that they perform worse on rating scale annotation tasks than on comparative annotation tasks. To study this, we automate emotion intensity predictions and compare direct rating scale predictions, pairwise comparisons and best-worst scaling. We find that the latter shows the highest reliability. A transformer regressor fine-tuned on these data performs nearly on par with a model trained on the original manual annotations.
title "You are an expert annotator": Automatic Best-Worst-Scaling Annotations for Emotion Intensity Modeling
topic Computation and Language
url https://arxiv.org/abs/2403.17612