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Resume Information Extraction with Cascaded Hybrid Model

机译:用级联混合模型恢复信息提取

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This paper presents an effective approach for resume information extraction to support automatic resume management and routing. A cascaded information extraction (IE) framework is designed. In the first pass, a resume is segmented into a consecutive blocks attached with labels indicating the information types. Then in the second pass, the detailed information, such as Name and Address, are identified in certain blocks (e.g. blocks labelled with Personal Information), instead of searching globally in the entire resume. The most appropriate model is selected through experiments for each IE task in different passes. The experimental results show that this cascaded hybrid model achieves better F-score than flat models that do not apply the hierarchical structure of resumes. It also shows that applying different IE models in different passes according to the contextual structure is effective.
机译:本文介绍了恢复信息提取的有效方法,以支持自动恢复管理和路由。设计了级联信息提取(即)框架。在第一次通过中,将恢复分段为连接的连续块,标签指示信息类型。然后在第二次通过中,在某些块中识别出详细信息,例如姓名和地址(例如,用个人信息标记的块),而不是在整个简历中全局搜索。通过不同通过的每个IE任务的实验选择最合适的模型。实验结果表明,这种级联的混合模型比不适应恢复等级结构的平面模型实现了更好的F分。它还表明,根据上下文结构应用不同的IE模型是有效的。

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