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Exploiting job transition patterns for effective job recommendation

机译:利用工作转变模式进行有效的工作推荐

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摘要

E-recruitment sites such as LinkedIn, Reed, and Indeed have a huge number of professional resumes from job seekers and job openings posted by recruiters. In this situation, it is a very time-consuming task for job seekers to find job openings that are well matched to their careers and desired conditions. Accordingly, active studies on job recommendation (JR) have been conducted recently. In this paper, we address the important property of transition patterns in JR that previous studies have overlooked. To incorporate the property into JR, we first propose two data modeling methods of adjacent pairing and all paring that represent a career path of a job seeker as a set of job pairs. Then, we propose frequency-based and graph-based methods of preference inference based on the data modeling methods. Finally, we develop four recommendation approaches, AdjacentFreq, AllFreq, AdjacentGraph, and AllGraph, each of which is a combination of two data modeling methods and two preference inference methods. Through extensive experiments using a real-life dataset, we show that our proposed approaches effectively address the unique property of JR. Also, we show that JR utilizing the transition information provides accuracy higher than JR not using the information.
机译:诸如LinkedIn,Reed和Indeed等电子招聘网站都有大量的求职者简历和招聘人员发布的职位空缺。在这种情况下,对于求职者来说,找到与自己的职业和理想条件完全匹配的职位空缺是一项非常耗时的任务。因此,最近已经进行了关于工作推荐(JR)的积极研究。在本文中,我们讨论了先前研究中忽视的JR过渡模式的重要特性。为了将该属性合并到JR中,我们首先提出了两种相邻配对和全部配对的数据建模方法,这些方法将求职者的职业道路表示为一组工作对。然后,基于数据建模方法,提出了基于频率和基于图的偏好推理方法。最后,我们开发了四种推荐方法,即AdjacentFreq,AllFreq,AdjacentGraph和AllGraph,每种方法都是两种数据建模方法和两种偏好推理方法的组合。通过使用实际数据集的大量实验,我们表明,我们提出的方法有效地解决了JR的独特特性。此外,我们显示出使用过渡信息的JR提供的准确性要高于不使用该信息的JR。

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