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Main Authors: Wei, Qianru, Yang, Jihaoyu, Zhang, Cheng, Yang, Jinming
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.22302
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author Wei, Qianru
Yang, Jihaoyu
Zhang, Cheng
Yang, Jinming
author_facet Wei, Qianru
Yang, Jihaoyu
Zhang, Cheng
Yang, Jinming
contents With the development of information technology, the application of artificial intelligence and machine learning in the field of education shows great potential. This study aims to explore how to utilize K-means clustering algorithm to provide accurate career guidance for college students. Existing methods mostly focus on the prediction of career paths, but there are fewer studies on the fitness of students with different combinations of characteristics in specific career directions. In this study, we analyze the data of more than 3000 students on their CET-4 scores, GPA, personality traits and student cadre experiences, and use the K-means clustering algorithm to classify the students into four main groups. The K-means clustering algorithm groups students with similar characteristics into one group by minimizing the intra-cluster squared error, ensuring that the students within the same cluster are highly similar in their characteristics, and that differences between different clusters are maximized. Based on the clustering results, targeted career guidance suggestions are provided for each group. The results of the study show that students with different combinations of characteristics are suitable for different career directions, which provides a scientific basis for personalized career guidance and effectively enhances students' employment success rate. Future research can further improve the precision of clustering and the guidance effect by expanding the sample size, increasing the feature variables and considering external factors.
format Preprint
id arxiv_https___arxiv_org_abs_2603_22302
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Research on Individual Trait Clustering and Development Pathway Adaptation Based on the K-means Algorithm
Wei, Qianru
Yang, Jihaoyu
Zhang, Cheng
Yang, Jinming
Machine Learning
Computers and Society
Applications
With the development of information technology, the application of artificial intelligence and machine learning in the field of education shows great potential. This study aims to explore how to utilize K-means clustering algorithm to provide accurate career guidance for college students. Existing methods mostly focus on the prediction of career paths, but there are fewer studies on the fitness of students with different combinations of characteristics in specific career directions. In this study, we analyze the data of more than 3000 students on their CET-4 scores, GPA, personality traits and student cadre experiences, and use the K-means clustering algorithm to classify the students into four main groups. The K-means clustering algorithm groups students with similar characteristics into one group by minimizing the intra-cluster squared error, ensuring that the students within the same cluster are highly similar in their characteristics, and that differences between different clusters are maximized. Based on the clustering results, targeted career guidance suggestions are provided for each group. The results of the study show that students with different combinations of characteristics are suitable for different career directions, which provides a scientific basis for personalized career guidance and effectively enhances students' employment success rate. Future research can further improve the precision of clustering and the guidance effect by expanding the sample size, increasing the feature variables and considering external factors.
title Research on Individual Trait Clustering and Development Pathway Adaptation Based on the K-means Algorithm
topic Machine Learning
Computers and Society
Applications
url https://arxiv.org/abs/2603.22302