Federated Multi-task Learning for Complaint Identification from Social Media Data

A. Singh, Tanmay Sen, S. Saha, Mohammed Hasanuzzaman
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引用次数: 2

Abstract

Complaining is a speech act that is often used by consumers to signify a breach of expectation, i.e., an expression of displeasure on a consumer's behalf towards an organization, product, or event. Complaint identification has been previously analyzed based on extensive feature engineering in centralized settings, disregarding the non-identically independently distributed (non-IID), security, and privacy-preserving characteristics of complaints that can hamper data accumulation, distribution, and learning. In this work, we propose a Bidirectional Encoder Representations from Transformers (BERT) based multi-task framework that aims to learn two closely related tasks,viz. complaint identification (primary task) and sentiment classification (auxiliary tasks) concurrently under federated-learning settings. Extensive evaluation on two real-world datasets shows that our proposed framework surpasses the baselines and state-of-the-art framework results by a significant margin.
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基于社交媒体数据的投诉识别联邦多任务学习
抱怨是一种言语行为,通常被消费者用来表示违背期望,即代表消费者对组织、产品或事件表达不满。投诉识别以前已经基于集中设置的广泛特征工程进行了分析,忽略了投诉的非同一性独立分布(non-IID)、安全性和隐私保护特征,这些特征会阻碍数据的积累、分布和学习。在这项工作中,我们提出了一个基于变形金刚双向编码器表示(BERT)的多任务框架,旨在学习两个密切相关的任务,即:在联合学习设置下,投诉识别(主要任务)和情感分类(辅助任务)同时进行。对两个真实世界数据集的广泛评估表明,我们提出的框架大大超过了基线和最先进的框架结果。
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