Stance detection predicts attitudes towards targets in texts and has gained attention with the rise of social media. Traditional approaches include conventional machine learning, early deep neural networks, and pre-trained fine-tuning models. However, with the evolution of very large pre-trained language models (VLPLMs) like ChatGPT (GPT-3.5), traditional methods face deployment challenges. The parameter-free Chain-of-Thought (CoT) approach, not requiring backpropagation training, has emerged as a promising alternative. This paper examines CoT's effectiveness in stance detection tasks, demonstrating its superior accuracy and discussing associated challenges.
翻译:观点检测是预测文本中对目标的态度,随着社交媒体的兴起而受到关注。传统方法包括传统的机器学习、早期的深度神经网络和预训练的微调模型。然而,随着非常大的预训练语言模型(VLPLMs)如ChatGPT(GPT-3.5)的出现,传统方法面临着部署挑战。不需要反向传播训练的无参数思考链条(CoT)方法已成为有望的替代方法。本文考察了CoT在观点检测任务中的有效性,证明了其更高的准确度并讨论相关挑战。