利用高精度变压器集成解释网络欺凌特征检测

B. Goldfeder, Igor Griva
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引用次数: 0

摘要

网络欺凌仍然是社交媒体中的一个有害问题,它对在线社交活动越来越多的青少年和儿童产生了巨大的影响。最近的COVID-19大流行在学校和其他公共场所关闭期间使年轻学生在物理上隔离,这有助于增加社交媒体的使用。这些事件使我们更加需要谨慎的、可解释的和合乎道德的工具来监测和识别网络欺凌,并解释具体特征的分类。经典的机器学习方法构成了现有领域的很大一部分,可以更好地了解机器学习系统是如何得出其推理的。这些传统的基于随机的方法受到复杂的特征工程任务的阻碍,并且通常在精度上落后于较新的深度神经网络(DNN)架构。权衡的是,dnn在模型的可解释性、推理以及大量训练集对道德和偏见的影响方面往往是不透明的。在这项工作中,我们提出了一种先进的架构,该架构结合了第二代和第三代基于变压器的模型,以提供集中和高度准确的网络欺凌特征检测和识别,允许基于这些推断的人类验证和验证。该架构使用IEEE细粒度网络欺凌数据集(FGCD),超越了当前的SOA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explaining Cyberbullying Trait Detection Through High Accuracy Transformer Ensemble
Cyberbullying remains a pernicious concern within social media which can have an outsized impact on teens and children who are spending more and more of their social engagements online. The recent COVID-19 pandemic physically isolated young students during school and other public closures which served to increase usage of social media. These events heighten the need for careful, explainable, and ethical tools for monitoring and identifying cyberbullying with explaining classification to specific traits. Classical machine learning methods which form a large part of the existing domain provide better introspection into how the ML system arrives at its inference. These traditional stochastic based methodologies are hampered by the complex task of feature engineering and generally lag behind newer deep neural network (DNN) architectures in accuracy. The tradeoff is that DNNs are often opaque with respect to explainability of the model, the inference, and the impact of vast training sets toward ethics and bias. In this work, we propose an advanced architecture that incorporates second and third generation transformer-based models to provide focused and highly accurate cyberbullying trait detection and identification allowing for human verification and validation based on these inferences. This architecture uses the IEEE Fine-Grained Cyberbullying Dataset (FGCD) exceeding current SOA.
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