百家乐怎么玩-澳门百家乐官网娱乐城网址_网上百家乐是不是真的_全讯网888 (中国)·官方网站

Robust Misinformation Detection on Online Social Media

 

Misinformation is false information that spreads regardless of whether there is intent to mislead the public, consisting fake news, rumours, telecom fraud, etc. As online social media lacks serious verification of posts, and most netizens are unable to discriminate between fake and real news, misinformation has proliferated in recent years, affecting all aspects of individuals and society. Although there are several products powered by advanced AI algorithms and blockchain technologies to tackle the threat of misinformation, existing AI algorithms require a considerable amount of labeled data for model training. This is considered unrealistic in practice because collecting a massive volume of news and posts is cumbersome, and the data rely highly on past events, so they may not be able to generalize to recent news events. Increasing multimodal content (i.e. posts with images) make this task even more challenging. On the other hand, blockchain-based products require the additional cost of setting separate identification codes for each piece of misinformation.

Thus, we h propose a domain-robust multimodal misinformation detection system, called Defender, which comprises an AI algorithms bank, an AI models bank and an online detection system to help government, businesses and individuals create a better-informed world.

Owing to the effective inference of our proposed AI model, enhanced by transferring learning algorithms, our Defender system can provide real-time and more accurate detection for large-scale information on social media platforms without a huge volume of annotation for all relevant posts for model training.

 

Team member(s)

Mr Liu Hui* (PhD student, Department of Electrical Engineering, City University of Hong Kong)
Mr Yang Huanqi (PhD student, Department of Computer Science, City University of Hong Kong)
Mr Zhong Yi (Peking University)
Mr Niu Maolin (The Chinese University of Hong Kong)
Mr Wang Qian (The Hong Kong University of Science and Technology)
Mr Sun Hao (Peking University)

* Person-in-charge
(Info based on the team's application form)

 

Achievement(s)
  1. CityU HK Tech 300 Seed Fund (2023)


大兴区| 微信百家乐群二维码| 南宁百家乐官网赌| 百家乐官网打法内容介绍| 威尼斯人娱乐城网址是| 99棋牌游戏| 百家乐官网投注技巧| 百家乐终端下载| 大发888娱乐免费试玩| 常熟市| 亚洲顶级赌场 网投领导者| 武强县| 百家乐路单免费下载| 大发888在线开户| 超级百家乐官网2龙虎斗| 百家乐赌具哪里最好| 赌百家乐官网赢的奥妙| 杨氏百家乐官网必胜公式| 百家乐官网赢一注| 澳门百家乐游戏玩法| 百家乐官网园36bol在线| 雁荡棋牌游戏| 百家乐官网闲单开多少| 狮威百家乐的玩法技巧和规则 | 百家乐园zyylc| 大发888坑人么| 百家乐官网投注必胜法| 百家乐官网赚水方| 菲律宾百家乐官网娱乐平台| 百家乐官网高额投注| 百家乐类游戏平台| 百家乐实战路| 邵武市| 赌场百家乐官网赌场| 百家乐透明发牌靴| 网上百家乐官网开户送现金| 百家乐真人百家乐皇冠| 怎么看百家乐官网的路| 重庆市| 安桌百家乐官网游戏百家乐官网| 威尼斯人娱乐平台代理|