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Autores principales: Thomas, Konstantinos, Filandrianos, Giorgos, Lymperaiou, Maria, Zerva, Chrysoula, Stamou, Giorgos
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2409.13879
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author Thomas, Konstantinos
Filandrianos, Giorgos
Lymperaiou, Maria
Zerva, Chrysoula
Stamou, Giorgos
author_facet Thomas, Konstantinos
Filandrianos, Giorgos
Lymperaiou, Maria
Zerva, Chrysoula
Stamou, Giorgos
contents Equivocation and ambiguity in public speech are well-studied discourse phenomena, especially in political science and analysis of political interviews. Inspired by the well-grounded theory on equivocation, we aim to resolve the closely related problem of response clarity in questions extracted from political interviews, leveraging the capabilities of Large Language Models (LLMs) and human expertise. To this end, we introduce a novel taxonomy that frames the task of detecting and classifying response clarity and a corresponding clarity classification dataset which consists of question-answer (QA) pairs drawn from political interviews and annotated accordingly. Our proposed two-level taxonomy addresses the clarity of a response in terms of the information provided for a given question (high-level) and also provides a fine-grained taxonomy of evasion techniques that relate to unclear, ambiguous responses (lower-level). We combine ChatGPT and human annotators to collect, validate and annotate discrete QA pairs from political interviews, to be used for our newly introduced response clarity task. We provide a detailed analysis and conduct several experiments with different model architectures, sizes and adaptation methods to gain insights and establish new baselines over the proposed dataset and task.
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id arxiv_https___arxiv_org_abs_2409_13879
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle "I Never Said That": A dataset, taxonomy and baselines on response clarity classification
Thomas, Konstantinos
Filandrianos, Giorgos
Lymperaiou, Maria
Zerva, Chrysoula
Stamou, Giorgos
Computation and Language
Equivocation and ambiguity in public speech are well-studied discourse phenomena, especially in political science and analysis of political interviews. Inspired by the well-grounded theory on equivocation, we aim to resolve the closely related problem of response clarity in questions extracted from political interviews, leveraging the capabilities of Large Language Models (LLMs) and human expertise. To this end, we introduce a novel taxonomy that frames the task of detecting and classifying response clarity and a corresponding clarity classification dataset which consists of question-answer (QA) pairs drawn from political interviews and annotated accordingly. Our proposed two-level taxonomy addresses the clarity of a response in terms of the information provided for a given question (high-level) and also provides a fine-grained taxonomy of evasion techniques that relate to unclear, ambiguous responses (lower-level). We combine ChatGPT and human annotators to collect, validate and annotate discrete QA pairs from political interviews, to be used for our newly introduced response clarity task. We provide a detailed analysis and conduct several experiments with different model architectures, sizes and adaptation methods to gain insights and establish new baselines over the proposed dataset and task.
title "I Never Said That": A dataset, taxonomy and baselines on response clarity classification
topic Computation and Language
url https://arxiv.org/abs/2409.13879