首页> 外文期刊>Computational intelligence and neuroscience >Implementation of Personalized Scenic Spot Recommendatioi Algorithm Based on Generalized Regression Neural Network for 5G Smart Tourism System
【24h】

Implementation of Personalized Scenic Spot Recommendatioi Algorithm Based on Generalized Regression Neural Network for 5G Smart Tourism System

机译:基于广义回归神经网络的个性化景区推荐算法在5G智慧旅游系统中的实现

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

On the basis of the analysis of the evolution dynamics and the process of smart tourism service, this paper constructs the evolutionary game model of smart tourism service and reveals the evolution mechanism of smart tourism service based on the network platform. Based on the strategic main line of “advantages,” it proposes the design ideas and overall framework of the smart tourism service model based on the network platform, including the smart tourism information interactive service model, the element collaborative service model, and the value cocreation service model. The comparison of recommendation results shows that the recommendation error of the genetically improved generalized regression neural network algorithm is reduced, and the recommendation accuracy is better than that of the unimproved generalized regression neural network algorithm. In the recommendation scenario of click-through rate recommendation, the existing recommendation models are difficult to meet the functions of memory and generalization at the same time and cannot fully mine and combine low-level features, and the model parameters of the deep learning model are difficult to learn under the high-dimensional sparse data set of the recommendation system. To solve the problem of generalization, this paper proposes a deep CTR recommendation model based on the gradient boosting tree and factorization machine. It can fully mine low-level feature information and automatically realize low-level feature combination, which can better learn model parameters on high-dimensional sparse data sets, and the recommendation results are no longer overgeneralized. In this paper, simulation experiments are carried out on the data set, and the related recommendation models are compared. The experimental results show that the model proposed in this paper achieves better results in both the AUC (area under ROC curve) evaluation index and the cross-entropy evaluation index.
机译:本文在分析智慧旅游服务演化动态和过程的基础上,构建了智慧旅游服务的演化博弈模型,揭示了基于网络平台的智慧旅游服务的演化机理。基于“优势”的战略主线,提出了基于网络平台的智慧旅游服务模式的设计思路和总体框架,包括智慧旅游信息互动服务模式、元素协同服务模式、价值共创服务模式等。推荐结果对比表明,遗传改良广义回归神经网络算法的推荐误差降低,推荐准确率优于未改进的广义回归神经网络算法。在点击率推荐的推荐场景中,现有的推荐模型难以同时满足记忆和泛化的功能,无法充分挖掘和组合低级特征,深度学习模型的模型参数在推荐系统的高维稀疏数据集下难以学习。针对泛化问题,该文提出一种基于梯度提升树和因式分解机的深度点击率推荐模型。它可以充分挖掘低级特征信息并自动实现低级特征组合,可以更好地学习高维稀疏数据集上的模型参数,并且推荐结果不再过度泛化。本文对数据集进行了仿真实验,并对比了相关推荐模型。实验结果表明,该模型在AUC(ROC曲线下面积)评价指标和交叉熵评价指标上均取得了较好的结果。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号