Along whith the arrival of the knowledge-based economy, talented person's strategy becomes the source of enterprise core competencies more and more. It is the key to find and to choose high feature and creative persons for the human resource development and management. An improved K-means clustering algorithm is brought forward, based on basic K-means Algorithm, adopts a method grounded on density to choose original clustering centers and feature weight learning to improve clustering result. It overcomes the shortcomings of the difficulty to choose original clustering centers and unstable clustering result. Then the clustering analysis model of Personal management system is put forward, based on improved K-means clustering algorithm. With the use of SQL Server 2000, the realization of the model has been successfully used in the human resource management of a famous domestic software company and offers a useful reference for the enterprise to select and appoint talented persons.
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