聊天机器人
上瘾
计算机科学
好奇心
计算机安全
互联网隐私
认知
药物滥用
互联网
人工智能
万维网
心理学
数据科学
精神科
社会心理学
作者
Jui-Hsuan Lee,Eric Hsiao‐Kuang Wu,Yu‐Yen Ou,Yueh-Che Lee,Cheng‐Hsun Lee,Chia‐Ru Chung
标识
DOI:10.1109/tcss.2023.3238477
摘要
Drug abuse has always been a severe issue, but the proportion of drug abuse and addiction is rising. According to research reports, youth are motivated to access drugs mainly due to curiosity and peer influence. Additionally, youth especially lack proper knowledge and education surrounding drug abuse. Analyzing whether potential addicts intend to access drugs is helpful in preventing drug abuse and addiction. We developed an Anti-drug Chatbot for young people on a popular online social platform. We can detect potential risks, obtain warnings from the user-entered query and provide these to professional consultants for help. In this article, we present a hierarchical system with bidirectional encoder representation from transformers (BERT) to efficiently recognize and classify a user's intent. We use the Chinese BERT-based model to utilize contextual information to perform classification and recognition. We evaluate our proposed system on our conversational dataset.
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