Pre-Trained Models for Intent Classification in Chatbot: Comparative Study and Critical Analysis

Adnane Souha, Charaf Ouaddi, Lamya Benaddi, Abdeslam Jakimi
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Abstract

The emergence of pre-trained models based on deep learning has considerably enhanced the development of many applications, such as chatbots. These models can be refined for specific tasks to improve chatbot accuracy. The core of the chatbot is its ability to understand the user’s intent through its Natural Language Understanding (NLU) component. Within NLU, intent classification is a central task. Recently, transformer models have revolutionized the resolution of this task by capturing the semantic relations between words in a sentence. This article presents a comparative study and critical analysis of four transformer models, which are Bert, Albert, Roberta, and Gpt2, to identify which offers the best accuracy for an existing dataset for the intent classification task.
用于聊天机器人意图分类的预训练模型:比较研究与批判性分析
基于深度学习的预训练模型的出现大大促进了聊天机器人等许多应用的开发。这些模型可以针对特定任务进行改进,以提高聊天机器人的准确性。聊天机器人的核心是通过自然语言理解(NLU)组件理解用户意图的能力。在 NLU 中,意图分类是一项核心任务。最近,转换器模型通过捕捉句子中单词之间的语义关系,彻底改变了这一任务的解决方法。本文对 Bert、Albert、Roberta 和 Gpt2 四种转换器模型进行了比较研究和批判性分析,以确定哪种模型在现有数据集的意图分类任务中精度最高。
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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