Vritthi -一个基于机器学习技术的IT招聘理论框架,应用于Twitter, LinkedIn, SPOJ和GitHub配置文件

Animesh Giri, A. Ravikumar, Sneha R. Mote, Rahul Bharadwaj
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引用次数: 8

摘要

在这个模型中,我们提出了一个创新的招聘系统,使用Twitter和LinkedIn等社交网站以及代码库托管网站GitHub和SPOJ等竞争性编码平台。它旨在开发先进的搜索引擎,利用各种数据挖掘和机器学习技术,根据工作要求自动对求职者进行分类。Vritthi允许求职者量化他们的工作准备,并提供一个具体领域的清单供他们关注。我们提出VPQF (Vritthi Professional Quotient)的公式,使用K-means算法将用户划分到合适的聚类中,并给出相应的改进建议。使用经典的数据挖掘技术,如过滤、分类、聚类、分析以及字符串匹配和用户分析,该工具将使招聘人员能够以无麻烦的自动化方式有效地选择适合其组织的候选人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vritthi - a theoretical framework for IT recruitment based on machine learning techniques applied over Twitter, LinkedIn, SPOJ and GitHub profiles
In this model, we propose an innovative recruitment system using social networking websites like Twitter and LinkedIn along with code repository hosting website GitHub and competitive coding platforms like SPOJ. It is aimed to develop advanced search engines to automatically sort the job-seekers based on job offer requirements using various data mining and machine learning techniques. Vritthi allows job-seekers to quantify their job preparedness and offer a list of specific areas for them to focus on. We propose the formulation of VPQF (Vritthi Professional Quotient) that involves the use of K-means algorithm to classify users into appropriate clusters and provide them with appropriate suggestions for improvement. Using classic data mining techniques like filtration, classification, clustering, profiling as well as string matching & user profiling, this tool will enable recruiters to effectively select candidates who fit their organization in a hassle-free automated manner.
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