Induced Consent Analysis of Privacy Policy Based on Grounded Theory and Machine Learning
Chen Menglei1 Luo Yingjia2 Zhu Hou1
1.Information Management College, Sun Yat-Sen University, Guangzhou,510006;
2.School of Physical and Mathematical Sciences, Nanyang Technological University, Singapore, 637371
Online:2024-09-26
Published:2024-10-15
About author:Chen Menglei,master candidate,specializing in semantic analysis of information resources;Luo Yingjia,master candidate,specializing in semantic analysis of information resources;Zhu Hou(corresponding author) ,Ph.D., associate professor and master’s supervisor, specializing in privacy management and computer simulation,Email:zhuhou3@mail.sysu.edu.cn.
Supported by:
This is an outcome from "Public Opinion Evolution Mechanism and Risk Control of Smart Media Based on Crowd-Algorithm Interaction"(23YJC630270) funded by Ministry of Education in China Project of Humanities and Social Sciences and "Research on Mechanism of Social Media Privacy Leakage from Multi-sources and Their Interaction Based on Computational Experiments"(71801229) funded by National Natural Science Foundation of China.
Chen Menglei Luo Yingjia Zhu Hou. Induced Consent Analysis of Privacy Policy Based on Grounded Theory and Machine Learning[J]. Journal of Information Resources Management, 2024, 14(5): 75-90.