从西班牙语产品评论中进行否定检测的深度学习方法

Orlando Montenegro, O. S. Pabón, Raúl Ernesto Gutiérrez de Piñerez Reyes
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引用次数: 2

摘要

在线产品评论正变得越来越普遍,消费者越来越频繁地使用它来选择最具竞争力的产品。否定检测是产品评论文本信息提取的一项关键任务,因为否定可以改变消费者对产品或服务的意见的含义。虽然已经提出了几种产品评论中的否定检测方法,但研究工作主要集中在英语方面。本文描述了一种基于变压器的方法来检测用西班牙语写的产品评论中的否定。该方法利用迁移学习技术,使用基于bert的模型进行否定检测。使用SFU语料库对西班牙语进行测试,在线索检测任务中F1得分为95.4%,在范围分辨任务中F1得分为91.5%。我们的发现表明我们基于bert的方法在西班牙语中进行阴性检测是可行的。
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A Deep Learning Approach for Negation Detection from Product Reviews written in Spanish
Online product reviews are becoming common and are being used more frequently by consumers to choose the most competitive products. Negation detection is a crucial task for information extraction from product review texts because negation can change the meaning of opinions given by consumers about products or services. Although several approaches have been proposed for negation detection in product reviews, research efforts have concentrated mainly on English. This paper describes a transformer-based approach for detecting negation in product reviews written in Spanish. This approach takes advantage of transfer learning techniques and uses a BERT-based model to perform negation detection. Performed tests using the SFU corpus for Spanish, showed an F1 score of 95.4% in the cue detection task and 91.5% in the scope resolution task. Our finding suggests that our BERT-based approach is feasible to perform negation detection in Spanish.
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