“…Currently, talent team construction performance prediction methods include fuzzy comprehensive evaluation method [9], machine learning method [10], neural network [11], integrated learning technology [12], deep learning method [13] and so on. Literature [14] deals with the performance evaluation weights of public security intelligence personnel through fuzzy theory, and proposes diversified incentive means and methods so as to improve the efficiency of human resources; Literature [15] utilizes hierarchical analysis method to solve the index weights based on the allround index system of university professors' scientific research work; Literature [16] uses more than two machine learning methods based on the performance data of the construction of the talent team through hierarchical analysis method weight optimization fusion to construct talent team construction performance prediction model, training test results show that the prediction method of multivariate isomorphism is conducive to the improvement of prediction accuracy; Literature [17] optimizes and improves the support vector machine through the use of swarm intelligent algorithm to construct university performance prediction method, so as to improve prediction accuracy and real-time; Literature [18] analyzes the results of the performance evaluation of the feedback is not timely, the performance evaluation of individual teachers and Teacher team performance assessment is inconsistent, teacher performance is not coordinated, performance and personal development can not be integrated, and other existing problems, the neural network as a prediction model, proposed a neural network-based talent team performance prediction method; Literature [19] combines the integrated learning and weak machine learning algorithms, proposed a talent team building performance prediction method based on integrated-support vector machine; Literature [20] through the construction of the talent construction performance system, establish a prediction model based on intelligent optimization algorithm to improve the deep learning method, which provides new ideas for the human resource prediction model. In response to the above literature analysis, the existing human team building performance prediction methods have the following defects [21]:…”