利用长短期记忆模型预测IT行业职位空缺

R. S. Kumar, N. Prakash, S. Anbuchelian
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引用次数: 1

摘要

解决失业问题是一项有点挑战性的任务。非工程专业毕业生可以在所有部门工作,而工程专业毕业生可以在指定的工作领域工作。因此,需要引导工科毕业生在其工作领域内获得就业机会。印度的失业率每年都在急剧上升。工科毕业生的失业主要是由于缺乏对各种工作类别的知识,所有的毕业生都在有吸引力的领域或即将到来的技术中充实自己的技能。因此,毕业生只落在竞争更激烈的特定工作类别中。这个问题必须通过引导毕业生来解决。有必要采取一种平衡的方法来指导毕业生,以避免在有吸引力的领域寻找工作的问题。本文提出了一种基于地点和工作类别的职位空缺数量预测新方法——长短期记忆模型(LS TM)。经过一系列的实验,结果表明,该方法的有效性为96%。该系统的性能优于简单递归神经网络(SRNN)。通过使用所提出的模型,毕业生可以更好地了解当前的就业机会。
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Prediction of Job Openings in IT Sector using Long Short -Term Memory Model
Addressing the unemployment problem is a bit challenging task. The non-engineering graduates can work in all the sectors, whereas engineering graduates can work in their designated job domain. So, the engineering graduate needs to be guided in getting the employment opportunity in their job domain. The unemployment rate in India is increasing drastically every year. The unemployment of engineering graduates is mainly due to the lack of knowledge on various job categories and all the graduates are enriching their skills in the attractive domain or the upcoming technologies. So, the graduates are falling only in a specified job category where the competition is more. This problem must be resolved by guiding the graduates. There is a need for a balanced approach in guiding the graduates to avoid the problem of searching for the job in the attractive domain. This paper presents a new method to predict the number of job openings based on location and job category using the Long Short-Term Memory model (LS TM). After the series of experiments conducted, the results show that the proposed method is 96% effective. The performance of the proposed system is found to be superior to the Simple Recurrent Neural Network (SRNN). By using the proposed model, the graduates are benefited in getting knowledge about the current job opportunities.
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