Home Appliance Review Analysis Via Adversarial Reptile

Tai-Jung Kan, Chia-Hui Chang
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引用次数: 0

Abstract

Studying discussion of products on social media can help manufacturers improve their products. Opinions provided through online reviews can immediately reflect whether the product is accepted by people, and which aspects of the product are most discussed. In this article, we divide the analysis of home appliances into three tasks, including named entity recognition (NER), aspect category extraction (ACE), and aspect category sentiment classification (ACSC). To improve the performance of ACSC, we combine the Reptile algorithm in meta learning with the concept of domain adversarial training to form the concept of the Adversarial Reptile algorithm. We found that the macro-F1 is improved from 68.6% (BERT fine-tuned model) to 70.3% (p-value 0.04).
家用电器评论分析通过敌对爬行动物
研究社交媒体上对产品的讨论可以帮助制造商改进产品。通过在线评论提供的意见可以立即反映出产品是否被人们接受,以及产品的哪些方面被讨论最多。在本文中,我们将家用电器的分析分为三个任务,包括命名实体识别(NER)、方面类别提取(ACE)和方面类别情感分类(ACSC)。为了提高ACSC的性能,我们将元学习中的Reptile算法与领域对抗训练的概念结合起来,形成了adversarial Reptile算法的概念。我们发现宏观f1从68.6% (BERT微调模型)提高到70.3% (p值0.04)。
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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