首页> 外文会议>International Conference on Computational Data and Social Networks Social Networks >Smart Crowdsourcing Based Content Review System (SCCRS): An Approach to Improve Trustworthiness of Online Contents
【24h】

Smart Crowdsourcing Based Content Review System (SCCRS): An Approach to Improve Trustworthiness of Online Contents

机译:基于智能众群的内容审查系统(SCCRS):一种提高在线内容可信赖的方法

获取原文

摘要

Online media is now a significant carrier for quicker and ubiquitous diffusion of information. Any user in social media can post contents, provide news blogs, and engage in debate or opinion nowadays. Most of the posted pieces of information on social media are useful while some are fallacious and insulting to others. Keeping the promise of freedom of speech and simultaneously no tolerance against hate speech often becomes a challenge for the hosting services. Some automated tools were developed for content filtering in industries. Also, companies are hiring specialized reviewers for accurate and unbiased reporting. However, these approaches are not achieving the goal as expected, on the other hand, new strategies are being adopted to tweak the automated systems. To face the situation, we proposed a smart crowdsourcing based content review technique to provide trustworthy and unbiased reviews for online shared contents. In this techniques, we designed an intelligent self-learned crowdsourcing strategy to select an appropriate set of reviewers efficiently which ensures reviewers' diversity, availability, quality, and familiarity with the news topic. To evaluate our proposed method, we developed a mobile app similar to popular social media (e.g., Facebook).
机译:在线媒体现在是一个重要的载体,以便更快,无处不在的信息传播。社交媒体中的任何用户都可以发布内容,提供新闻博客,并现在参与辩论或意见。关于社交媒体的大多数信息界的信息都很有用,而有些人则对别人造成沉默而侮辱。保持言论自由的承诺,同时对仇恨言论的宽容通常是托管服务的挑战。在行业中开发了一些自动化工具以进行内容过滤。此外,公司正在聘请专门的审稿人,以准确和无偏见的报告。然而,这些方法并没有按预期实现目标,另一方面,正在采用新的策略来调整自动化系统。要面对这种情况,我们提出了一个基于智能的众群的内容审查技术,为在线共享内容提供值得义的和无偏见的审查。在这种技术中,我们设计了一个智能自我学习的众包策略,以便有效地选择适当的审稿人,以确保审阅者的多样性,可用性,质量和熟悉新闻主题。为了评估我们所提出的方法,我们开发了类似于流行的社交媒体(例如,Facebook)的移动应用程序。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号