Intelligent Arabic-Based Healthcare Assistant

Tasneem Wael, Ahmed Hesham, Mohamed Youssef, Omar Adel, Hamis Hesham, M. Darweesh
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引用次数: 3

Abstract

Text classification has been one of the most common natural language processing (NLP) objectives in recent years. Compared to other languages, this mission with Arabic is relatively restricted and in its early stages, and this combination in the medical application area is rare. This paper builds an Arabic health care assistant, specifically a pediatrician that supports Arabic dialects, especially Egyptian accents. The proposed application is a chatbot based on Artificial Intelligence (AI) models after experimenting with Two Bidirectional Encoder Representations from Transformers (BERT) models, a pre-trained BERT and Logistic regression TF-IDF and Doc2vec. These models were applied to the Arabic dataset with different dialects from different couturiers such as Egypt, Saudi Arabia, and Iraq. The proposed system consists of 4 stages: scrapping and collecting data, then wrangling it, data preprocessing, data extraction, trained models with new data, and connect the model to the database that contains the answers. Experimental tests showed that the BERT model outperformed the others by getting a 95% Accuracy. Logistic regression with Doc2vec was the second best with 71% F-measure and 73% Accuracy.
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智能阿拉伯医疗保健助手
文本分类是近年来自然语言处理(NLP)中最常见的目标之一。与其他语文相比,使用阿拉伯文的特派团相对受限,而且还处于初期阶段,这种结合在医疗应用领域是罕见的。本文构建了一个阿拉伯语卫生保健助理,特别是一个支持阿拉伯语方言,特别是埃及口音的儿科医生。提出的应用程序是一个基于人工智能(AI)模型的聊天机器人,实验了来自变形金刚(BERT)模型的两个双向编码器表示,一个预训练的BERT和逻辑回归TF-IDF和Doc2vec。这些模型被应用于阿拉伯语数据集,这些数据集具有来自埃及、沙特阿拉伯和伊拉克等不同时装设计师的不同方言。提出的系统包括4个阶段:废弃和收集数据,然后整理数据,数据预处理,数据提取,用新数据训练模型,并将模型连接到包含答案的数据库。实验测试表明,BERT模型的准确率达到95%,优于其他模型。Doc2vec的Logistic回归是第二好的,f测量值为71%,准确度为73%。
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