An Interpretable CF-RL-TOPSIS Fusion Model for Skills-Aware Talent Recommendation
Researchers have developed a new interpretable model called CF-RL-TOPSIS for skills-aware talent recommendation. This model combines a collaborative filtering branch, a reinforcement learning-based bandit, and a TOPSIS method to balance behavioral patterns, adaptation, and occupation criteria. Evaluations on public datasets like JobHop and Karrierewege demonstrated the model's effectiveness, particularly in scenarios with rich semantic information, where it significantly outperformed several baseline recommendation systems. AI
IMPACT Introduces a novel interpretable model for talent recommendation, potentially improving HR and recruitment processes.