主观性
模糊性
计算机科学
自然语言处理
谱号
人工智能
任务(项目管理)
词典
排名(信息检索)
判决
德国的
基线(sea)
语言学
情报检索
模糊逻辑
哲学
认识论
海洋学
管理
地质学
经济
作者
Morgane Casanova,Julien Chanson,Benjamin Icard,Géraud Faye,Guillaume Gadek,Guillaume Gravier,Paul Égré
标识
DOI:10.48550/arxiv.2407.03770
摘要
This paper presents the HYBRINFOX method used to solve Task 2 of Subjectivity detection of the CLEF 2024 CheckThat! competition. The specificity of the method is to use a hybrid system, combining a RoBERTa model, fine-tuned for subjectivity detection, a frozen sentence-BERT (sBERT) model to capture semantics, and several scores calculated by the English version of the expert system VAGO, developed independently of this task to measure vagueness and subjectivity in texts based on the lexicon. In English, the HYBRINFOX method ranked 1st with a macro F1 score of 0.7442 on the evaluation data. For the other languages, the method used a translation step into English, producing more mixed results (ranking 1st in Multilingual and 2nd in Italian over the baseline, but under the baseline in Bulgarian, German, and Arabic). We explain the principles of our hybrid approach, and outline ways in which the method could be improved for other languages besides English.
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