Target-Phrase Zero-Shot Stance Detection: Where Do We Stand? | Computational Science – ICCS 2024 (2024)

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Authors: Dawid Motyka and Maciej Piasecki

Computational Science – ICCS 2024: 24th International Conference, Malaga, Spain, July 2–4, 2024, Proceedings, Part II

July 2024

Pages 34 - 49

Published: 02 July 2024 Publication History

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    Abstract

    Stance detection, i.e. recognition of utterances in favor, against or neutral in relation to some targets is important for text analysis. However, different approaches were tested on different datasets, often interpreted in different ways. We propose a unified overview of the state-of-the-art stance detection methods in which targets are expressed by short phrases. Special attention is given to zero-shot learning settings. An overview of the available multiple target datasets is presented that reveals several problems with the sets and their proper interpretation. Wherever possible, methods were re-run or even re-implemented to facilitate reliable comparison. A novel modification of a prompt-based approach to training encoder transformers for stance detection is proposed. It showed comparable results to those obtained with large language models, but at the cost of an order of magnitude fewer parameters. Our work tries to reliably show where do we stand in stance detection and where should we go, especially in terms of datasets and experimental settings.

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    Information & Contributors

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    Published In

    Target-Phrase Zero-Shot Stance Detection: Where Do We Stand? | Computational Science – ICCS 2024 (3)

    Computational Science – ICCS 2024: 24th International Conference, Malaga, Spain, July 2–4, 2024, Proceedings, Part II

    Jul 2024

    421 pages

    ISBN:978-3-031-63753-7

    DOI:10.1007/978-3-031-63751-3

    • Editors:
    • Leonardo Franco

      https://ror.org/036b2ww28University of Malaga, Malaga, Spain

      ,
    • Clélia de Mulatier

      University of Amsterdam, Amsterdam, The Netherlands

      ,
    • Maciej Paszynski

      AGH University of Science and Technology, Krakow, Poland

      ,
    • Valeria V. Krzhizhanovskaya

      https://ror.org/04dkp9463University of Amsterdam, Amsterdam, The Netherlands

      ,
    • Jack J. Dongarra

      University of Tennessee, Knoxville, TN, USA

      ,
    • Peter M. A. Sloot

      University of Amsterdam, Amsterdam, The Netherlands

    © The Author(s), under exclusive license to Springer Nature Switzerland AG 2024.

    Publisher

    Springer-Verlag

    Berlin, Heidelberg

    Publication History

    Published: 02 July 2024

    Author Tags

    1. stance detection
    2. zero-shot learning
    3. prompt based learning for transformers

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    Target-Phrase Zero-Shot Stance Detection: Where Do We Stand? | Computational Science – ICCS 2024 (10)

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    FAQs

    What is zero-shot stance detection? ›

    Zero-shot and few-shot stance detection identify the polarity of text with regard to a certain target when we have only limited or no training resources for the target. Previous work generally formulates the problem into a classification setting, ignoring the potential use of label text.

    What is a zero-shot prediction? ›

    Zero-shot learning is a technique that enables pre-trained models to predict class labels of previously unknown data, i.e., data samples not present in the training data.

    What are zero-shot prompts? ›

    What is Zero-Shot Prompting? Zero-shot prompting is like being asked to solve a problem or perform a task without any specific preparation or examples just for that task. Imagine someone asks you to do something you've never done before, but they don't give you any specific instructions or examples to follow.

    What is zero-shot object detection? ›

    Zero-shot object detection is a computer vision task to detect objects and their classes in images, without any prior training or knowledge of the classes.

    What is zero-shot action recognition? ›

    Zero-shot action recognition, which recognizes actions in videos without having received any training examples, is gaining wide attention considering it can save labor costs and training time. Nevertheless, the performance of zero-shot learning is still unsatisfactory, which limits its practical application.

    What does zero-shot performance mean? ›

    Zero-shot learning refers to the ability to complete a task without having received any training examples. Consider the case of recognizing a category of object in images without ever having seen a photo of that type of object.

    What is the difference between zero-shot and unsupervised? ›

    On one hand, unsupervised domain adaptation assumes there is no labelled data from target domain, while in the zero-shot learning problem it is assumed there exist some labelled examples from the target domain although the labelled examples are only restricted to a subset of the whole target label space.

    What is zero-shot image retrieval? ›

    To avoid difficult to-obtain labeled triplet training data, zero-shot composed image retrieval (ZS-CIR) has been introduced, which aims to retrieve the target image by learning from image-text pairs (self-supervised triplets), without the need for human-labeled triplets.

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