Hybrid procurement model for the construction of library literature and information resource procurement

Chuanyu Zhang, Changsheng Wang
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Abstract

To improve the efficiency of intelligent procurement of library literature and intelligence resources, the study conducts the design of literature and intelligence resources procurement model. The procurement model is constructed by using the support vector machine, and the optimal parameters of the support vector machine are obtained by using the genetic algorithm. The experimental results demonstrated that the mean square error of the proposed model was only 0.03, which was 40 % lower compared with the procurement models based on other optimization algorithms. The average accuracy of the proposed model was as high as 95.18 % and the prediction accuracy was 95.78 % compared to other methods. The accuracy was improved by 15.11 %, 24.57 % and 19.67 % respectively compared to other models. The results show that using genetic algorithm to optimize support vector machine can effectively improve the prediction speed and prediction efficiency of the model. The proposed hybrid procurement model based on genetic algorithm and support vector machine can effectively meet the needs of library literature and intelligence resources procurement construction. The model has positive application significance in library literature and intelligence resources procurement.

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图书馆文献建设与信息资源采购的混合采购模式
为提高图书馆文献情报资源智能采购的效率,本研究进行了文献情报资源采购模型的设计。利用支持向量机构建采购模型,并通过遗传算法获得支持向量机的最优参数。实验结果表明,所提模型的均方误差仅为 0.03,比基于其他优化算法的采购模型低 40%。与其他方法相比,拟议模型的平均准确率高达 95.18%,预测准确率为 95.78%。与其他模型相比,准确率分别提高了 15.11 %、24.57 % 和 19.67 %。结果表明,使用遗传算法优化支持向量机可以有效提高模型的预测速度和预测效率。所提出的基于遗传算法和支持向量机的混合采购模型能有效满足图书馆文献情报资源采购建设的需要。该模型在图书馆文献情报资源采购中具有积极的应用意义。
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