期刊文献+

智能推荐的法律问题及其纾解之径 被引量:1

On the Legal Problem and Solutions of Intelligent Recommendation
下载PDF
导出
摘要 智能推荐旨在提供更针对性产品或服务,解决信息过载问题。但这一服务也产生用户画像获取了用户隐私,限制个人选择和发展,算法偏见导致不公平等诸多问题。本文在分析目前我国智能推荐的问题基础上,提出加强对平台关于用户隐私、用户信息的保护,严格遵循用户知情、同意使用的原则;引入平衡推荐机制以及提高算法的透明度与维度,加入人工审查等多项建议。以求平衡人工智能发展与个人权利保护的矛盾,更好的应用科技促进发展。 Intelligent recommendation aims to provide more targeted products or services to solve information overload problems.But this kind of service has produced some problems like producing users’portraits that captured their privacy,restricting personal choice and development,and leading some unfair issues by algorithmic bias.On the basis of analyzing the current problems of intelligent recommendation in China,this article proposed some suggestions of strengthening the protection of users'privacy and information on the platform,following the principle of user's consent,introducing balanced recommendation mechanism and improving the transparency and dimension of algorithm,and adding manual review,so as to balance the development of artificial intelligence and the protection of individual rights,and achieve better application in technology to promote development.
作者 雍晨 张冉 Yong Chen;Zhang Ran(Southwest University of Political Science and Law, Chongqing 401120)
机构地区 西南政法大学
出处 《安徽警官职业学院学报》 2018年第6期22-27,共6页 Journal of Anhui Vocational College of Police Officers
关键词 智能推荐 算法偏见 隐私权 个人信息 自由发展权 intelligent recommendation algorithm bias privacy personal information right to free development
  • 相关文献

参考文献4

二级参考文献25

  • 1王利明.隐私权的新发展[J].人大法律评论,2009(1):3-27. 被引量:64
  • 2张新宝.侵害名誉权的损害后果及其民事救济方式探讨[J].法商研究,1997,15(6):8-16. 被引量:20
  • 3孙国华,杨思斌.公私法的划分与法的内在结构[J].法制与社会发展,2004,10(4):100-109. 被引量:81
  • 4王秀哲.论个人隐私权的行政法保护[J].行政法学研究,2006(2):39-45. 被引量:8
  • 5张中学,宋娟.偏见研究的进展[J].心理与行为研究,2007,5(2):150-155. 被引量:36
  • 6Justin J. Levandoski, Mohamed Sarwat, Ahmed E1- dawy, et al. LARS: A Location-Aware Recommender System[C]//Data Engineering(ICDE), IEEE 28th In- ternational Conference onInternational Conference, 2012 : 450-461.
  • 7E. Cho, S. Myers, J. Leskovec. Friendship and mob- ility.- user movement in location-based social networks [J ]. ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 2011,17:1082- 1090.
  • 8Huiji Gao, Jiliang Tang, Huan Liu. Exploring Social- Historical Ties on Location-Based Social Networks [C]//Breslin JG, Ellison NB, Shanahan JG, at el. IC- WSM. The AAAI Press, California, 2012 : 114-122.
  • 9Anagnostopoulos, A. , Kumar, tL , Mahdian, M. In- fluence and correlation in social networks[J]. ACM KDD, 2008 : 7-15.
  • 10项亮.推荐系统实践[M].北京:人民邮电出版社,2012:2-3.

共引文献399

同被引文献11

引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部