ARC-NLP at PAN 2023: Hierarchical Long Text Classification for Trigger Detection

Umitcan Sahin, Izzet Emre Kucukkaya, Cagri Toraman
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引用次数: 1

Abstract

Fanfiction, a popular form of creative writing set within established fictional universes, has gained a substantial online following. However, ensuring the well-being and safety of participants has become a critical concern in this community. The detection of triggering content, material that may cause emotional distress or trauma to readers, poses a significant challenge. In this paper, we describe our approach for the Trigger Detection shared task at PAN CLEF 2023, where we want to detect multiple triggering content in a given Fanfiction document. For this, we build a hierarchical model that uses recurrence over Transformer-based language models. In our approach, we first split long documents into smaller sized segments and use them to fine-tune a Transformer model. Then, we extract feature embeddings from the fine-tuned Transformer model, which are used as input in the training of multiple LSTM models for trigger detection in a multi-label setting. Our model achieves an F1-macro score of 0.372 and F1-micro score of 0.736 on the validation set, which are higher than the baseline results shared at PAN CLEF 2023.
PAN 2023上的ARC-NLP:触发检测的分层长文本分类
同人小说是一种流行的创作形式,以既定的虚构世界为背景,在网上获得了大量的追随者。然而,确保参与者的福祉和安全已经成为这个社区的一个关键问题。检测触发内容,即可能对读者造成情感困扰或创伤的材料,构成了重大挑战。在本文中,我们描述了我们在PAN CLEF 2023上的触发检测共享任务的方法,我们希望在给定的同人小说文档中检测多个触发内容。为此,我们构建了一个分层模型,该模型在基于transformer的语言模型上使用递归。在我们的方法中,我们首先将长文档分成较小的部分,并使用它们对Transformer模型进行微调。然后,我们从微调后的Transformer模型中提取特征嵌入,并将其用作多标签设置下多个LSTM模型训练的输入,用于触发检测。我们的模型在验证集上的f1 -宏观得分为0.372,f1 -微观得分为0.736,高于PAN CLEF 2023共享的基线结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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