面向电子招聘的简历解析框架

Hira Sajid, Javeria Kanwal, Saeed Ur Rehman Bhatti, Saad Ali Qureshi, A. Basharat, Shujaat Hussain, Kifayat-Ullah Khan
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引用次数: 11

摘要

通过开发电子招聘推荐系统,改进网络和沟通的现代方法为推进招聘过程提供了途径。随着网络招聘的不断扩大,大量的简历被存储在招聘系统中。为了吸引招聘人员的注意,大多数简历都准备了多种风格,包括不同的字体大小、字体颜色和表格格式。然而,数据挖掘操作,如简历信息提取、自动配置文件匹配和申请人排名,受到各种格式的极大影响。基于规则的方法、监督的方法和基于语义的方法都可以准确地从简历中提取事实,但这些方法严重依赖于大量难以收集的注释数据,而且这些技术耗时长,存在知识不完全性,严重影响了简历解析器的准确性。在本文中,我们提出了一个简历解析框架,它处理了之前技术所面临的局限性。首先,从简历中提取原始文本,并使用文本块分类对文本块进行分离。在此基础上,采用命名实体识别对实体进行提取,并利用本体对实体进行充实。所提出的简历解析器可以准确地从简历中提取信息,直接有助于选择最佳候选人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resume Parsing Framework for E-recruitment
Modern approaches to improve networking and communication have given ways to the advancement of recruitment process through the development of e-recruitment recommender systems. The increasing expansion of internet- based recruiting has resulted in a large number of resumes being stored in recruitment systems. Most resumes are prepared in a variety of styles to attract the attention of recruiters, including different font sizes, font colors, and table formats. However, data mining operations such as resume information extraction, automatic profile matching, and applicant ranking are immensely affected by the variety of formats. Rule-based methods, supervised methods and semantics-based methods have been introduced to extract facts from resume accurately, however, these methods heavily depend on large amounts of annotated data that is usually difficult to collect Furthermore, these techniques are time-intensive and bear knowledge incompleteness that strongly affect the accuracy of resume parser. In this paper, we present a resume parsing framework that handles the limitations faced in the previous techniques. At first, the raw text is extracted from resumes and blocks are separated using text block classification. Furthermore, the entities are extracted using named entity recognition and enriched using ontology. The proposed resume parser accurately extracts information from resumes that directly contributes towards the selection of best candidate.
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