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Main Authors: Aghababaei, Ali, Nikadon, Jan, Formanowicz, Magdalena, Bettinsoli, Maria Laura, Cervone, Carmen, Suitner, Caterina, Erseghe, Tomaso
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.04989
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author Aghababaei, Ali
Nikadon, Jan
Formanowicz, Magdalena
Bettinsoli, Maria Laura
Cervone, Carmen
Suitner, Caterina
Erseghe, Tomaso
author_facet Aghababaei, Ali
Nikadon, Jan
Formanowicz, Magdalena
Bettinsoli, Maria Laura
Cervone, Carmen
Suitner, Caterina
Erseghe, Tomaso
contents Classification of textual data in terms of sentiment, or more nuanced sociopsychological markers (e.g., agency), is now a popular approach commonly applied at the sentence level. In this paper, we exploit the integrated gradient (IG) method to capture the classification output at the word level, revealing which words actually contribute to the classification process. This approach improves explainability and provides in-depth insights into the text. We focus on sociopsychological markers beyond sentiment and investigate how to effectively train IG in agency, one of the very few markers for which a verified deep learning classifier, BERTAgent, is currently available. Performance and system parameters are carefully tested, alternatives to the IG approach are evaluated, and the usefulness of the result is verified in a relevant application scenario. The method is also applied in a scenario where only a small labeled dataset is available, with the aim of exploiting IG to identify the salient words that contribute to building the different classes that relate to relevant sociopsychological markers. To achieve this, an uncommon training procedure that encourages overfitting is employed to enhance the distinctiveness of each class. The results are analyzed through the lens of social psychology, offering valuable insights.
format Preprint
id arxiv_https___arxiv_org_abs_2503_04989
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Application of integrated gradients explainability to sociopsychological semantic markers
Aghababaei, Ali
Nikadon, Jan
Formanowicz, Magdalena
Bettinsoli, Maria Laura
Cervone, Carmen
Suitner, Caterina
Erseghe, Tomaso
Computation and Language
Classification of textual data in terms of sentiment, or more nuanced sociopsychological markers (e.g., agency), is now a popular approach commonly applied at the sentence level. In this paper, we exploit the integrated gradient (IG) method to capture the classification output at the word level, revealing which words actually contribute to the classification process. This approach improves explainability and provides in-depth insights into the text. We focus on sociopsychological markers beyond sentiment and investigate how to effectively train IG in agency, one of the very few markers for which a verified deep learning classifier, BERTAgent, is currently available. Performance and system parameters are carefully tested, alternatives to the IG approach are evaluated, and the usefulness of the result is verified in a relevant application scenario. The method is also applied in a scenario where only a small labeled dataset is available, with the aim of exploiting IG to identify the salient words that contribute to building the different classes that relate to relevant sociopsychological markers. To achieve this, an uncommon training procedure that encourages overfitting is employed to enhance the distinctiveness of each class. The results are analyzed through the lens of social psychology, offering valuable insights.
title Application of integrated gradients explainability to sociopsychological semantic markers
topic Computation and Language
url https://arxiv.org/abs/2503.04989