管理科学与工程系学术讲座系列2020年第一讲

来源:管理科学与工程

主 题:Are You Depressed? A Deep Learning Model to Identify People with Depression Based on Their Online Postings

主讲人: 李文文 (在读博士,香港大学)

时 间:2020-01-02 12:00

地 点:明德商学楼1008室

语 言:中英文

 

ABSTRACT:

According to the World Health Organization, one in twenty people in the world have suffered from depression and emotional distress in the previous twelve months. When depression and emotional distress are comorbid with other diseases, the associated health outcomes will be worsened. How to manage and provide appropriate treatment to people suffering from depression and emotional distress is, therefore, a highly pressing issue. However, many people with depression and emotional distress are not sufficiently recognized and treated and do not actively seek help. It is therefore highly desirable to devise a method to effectively and proactively identify these people. Following the design science approach, we propose DK-LSTM (which stands for Domain Knowledge-enhanced Long Short-Term Memory), a novel design based on deep learning to identify people with depression and emotional distress. We conduct two experiments, one on a set of discussion forum postings in English and another on a set of blogs in Chinese, and the results show that the proposed design outperforms other machine learning classifiers and standard LSTM models. The research has important academic contributions and practical implications.


SHORT BIOGRAPHY:

Wenwen Li is currently a fifth-year Ph.D. student in Information Systems in the Faculty of Business and Economics at the University of Hong Kong, under the direction of Dr. Michael Chau. The core of her research is data analytics. Her research interests include business analytics and business intelligence, health analytics and mobile health, machine learning, deep learning, natural language processing.


 

人大商学院新闻网版权与免责声明:

① 凡本网未注明其他出处的作品,版权均属于人大商学院,未经本网授权不得转载、摘编或利用其它方式使用上述作品。已经本网授权使用作品的,应在授权范围内使用,并注明“来源:人大商学院”。违反上述声明者,本网将追究其相关责任。

② 凡本网注明其他来源的作品,均转载自其它媒体,转载目的在于传递更多信息,并不代表本网对其负责。

③ 有关作品内容、版权和其它问题请与本网联系。

※ 联系方式:中国人民大学商学院宣传信息事务办公室 邮箱:media@rmbs.ruc.edu.cn

官方微信 中国人民大学商学院 86-10-82509171 rmbs@rmbs.ruc.edu.cn

©中国人民大学商学院 版权所有 京ICP备05066828号-1