Research on the evaluation and impact trends of China’s skill talent ecosystem in the digital era – An analysis based on neural network models and PVAR models
Gaoyang Liang,
Minqiang Xing
Abstract:This study develops a "Skill Talent Ecological Evaluation Model" across cultivation, potential energy, kinetic energy, innovation, and service and support ecologies. AHP-entropy determines indicator weights, Hopfield neural network assesses talent ecology levels, and the PVAR model analyzes digital transformation effects. Findings reveal: Cultivation ecology rates A, potential ecology rates B+, kinetic ecology rates B-, service and support ecology rates B-, and innovation ecology rates C. Digital transformatio… Show more
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