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ZenCrowd: Leveraging Probabilistic Reasoning and Crowdsourcing Techniques for Large-Scale Entity Linking

机译:ZenCrowd:利用概率推理和众包技术进行大规模实体链接

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摘要

We tackle the problem of entity linking for large collections of online pages; Our system, ZenCrowd, identifies entities from natural language text using state of the art techniques and automatically connects them to the Linked Open Data cloud. We show how one can take advantage of human intelligence to improve the quality of the links by dynamically generating micro-tasks on an online crowdsourcing platform. We develop a probabilistic framework to make sensible decisions about candidate links and to identify unreliable human workers. We evaluate ZenCrowd in a real deployment and show how a combination of both probabilistic reasoning and crowdsourcing techniques can significantly improve t he quality of the links, while limiting the amount of work performed bv the crowd.
机译:我们解决了大量在线页面的实体链接问题;我们的系统ZenCrowd使用最先进的技术从自然语言文本中识别实体,并将其自动连接到链接的开放数据云。我们展示了如何通过在在线众包平台上动态生成微任务来利用人类智能来提高链接质量。我们开发了一个概率框架,以便对候选链接做出明智的决策,并确定不可靠的人工工人。我们在实际部署中对ZenCrowd进行了评估,并展示了概率推理和众包技术的结合如何能够显着改善链接质量,同时又限制了通过人群进行的工作量。

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