USING MACHINE LEARNING METHODS FOR PREDICTING THE EMPLOYMENT OF GRADUATES

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Abstract

In today’s world, technology continues to play an increasingly important role in all spheres of human life. Education is no exception and keeps pace with the times. One of the more promising directions in this area is the use of machine learning methods to analyze data on graduates and predict their future employment, based on the accumulated information about students. Such information not only helps to determine the future profession, but also will allow educational institutions to co-ordinate their activities more effectively and improve the quality of education. In addition, the use of machine learning in education can lead to the creation of new, more effective teaching methods that take into account the individual characteristics of each student. The result of this work is an in-telligent system of big data processing, capable of adapting to the current state of the labor market and helping graduates in an earlier determination of their future profession. Data analysis was con-ducted on a sample of students of Tomsk State Pedagogical University of 2021-2023 academic years.
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使用机器学习方法预测毕业生就业情况
当今世界,技术在人类生活的各个领域发挥着越来越重要的作用。教育也不例外,与时俱进。在这一领域,比较有前景的一个方向是利用机器学习方法分析毕业生的数据,并根据积累的学生信息预测他们未来的就业情况。这些信息不仅有助于确定未来的职业,还能让教育机构更有效地协调活动,提高教育质量。此外,机器学习在教育领域的应用还能创造出更有效的新教学方法,将每个学生的个性特点考虑在内。这项工作的成果是一个智能化的大数据处理系统,能够适应劳动力市场的现状,帮助毕业生更早地确定自己未来的职业。对托木斯克国立师范大学 2021-2023 学年的学生样本进行了数据分析。
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