Research on Individual Trait Clustering and Development Pathway Adaptation Based on the K-means Algorithm
arXiv cs.LG / 3/25/2026
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Key Points
- The paper uses K-means clustering to group over 3,000 college students based on CET-4 scores, GPA, personality traits, and student cadre experience to study fit with different career directions.
- It forms four main student clusters by minimizing intra-cluster squared error, aiming for high within-cluster similarity and stronger differentiation across clusters.
- For each cluster, the study provides targeted career guidance suggestions rather than relying only on career-path prediction.
- The authors report that different combinations of student characteristics align with different career directions, suggesting a scientific basis for more personalized career guidance to improve employment outcomes.
- The study notes limitations and proposes future work to boost clustering precision by increasing sample size, adding features, and incorporating external factors.
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