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Consumption Structure Optimization Strategy for Scenic Spots Using the Deep Learning Model under Digital Economy

机译:数字经济下基于深度学习模型的景区消费结构优化策略

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摘要

The purpose is to find out the problems existing in the consumption economy structure of the scenic spots and to promote the rationalization of the consumption economy of the scenic spots. Based on the analysis of the applicability of the backpropagation neural network (BPNN) model, it uses BPNN to analyze the economic development level of Overseas Chinese Town East (OCT East). Firstly, the weight of each index is determined by the Analytic Hierarchy Process (AHP), and the expected value of the comprehensive evaluation is obtained. Secondly, to ensure the validity of the evaluation model for the development level of the tourism complex, the BPNN model is trained and tested to enable it to be applied to the evaluation of the economic development level of OCT East. The development level of OCT East from 2012 to 2021 is divided into three stages: high, higher, and lower. The development characteristics and existing problems of the OCT East are analyzed, and the optimization strategy of the consumption economy of the scenic spots is put forward in a targeted manner. The research results manifest, that from 2012 to 2021, the development level index of OCT East increased from 0.2457 to 0.5304, and it was in a state of steady growth. In 2019, the development level index reached 0.6497, and it was upgraded to “high-level,” but the average development level index of OCT East was only 0.5662, and there was a lot of room for improvement. According to the divided evaluation indicators, the development level of OCT East is evaluated. In 2012, the development level was low. From 2013 to 2018, it was at a high level, and from 2019 to 2021, it was a high level of development. By studying the Tourism Consumption Structure (TCS) of scenic spots in the OCT East, the research method of the consumption economic structure has been expanded. Therefore, it not only provides a reference for optimizing the consumption of scenic spots, but also contributes to the progress of the social tourism economy.
机译:目的是找出景区消费经济结构存在的问题,促进景区消费经济的合理化。在分析反向传播神经网络(BPNN)模型适用性的基础上,利用BPNN分析华侨城东部(华侨城东部)的经济发展水平。首先,通过层次分析法(AHP)确定各指标的权重,得到综合评价的期望值;其次,为保证旅游综合体发展水平评价模型的有效性,对BPNN模型进行训练和测试,使其能够应用于东部华侨城经济发展水平评价。东部华侨城2012-2021年的发展水平分为高、高、低三个阶段。分析东部华侨城的发展特点和存在的问题,有针对性地提出景区消费经济优化策略。研究结果表明,2012—2021年,东部华侨城发展水平指数从0.2457上升至0.5304,处于平稳增长状态。2019年发展水平指数达到0.6497,上调至“高水平”,但东部华侨城平均发展水平指数仅为0.5662,有很大的提升空间。根据划分的评价指标,对东部华侨城的发展水平进行评价。2012年,发展水平较低。从2013年到2018年,它处于高水平,从2019年到2021年,它处于高水平发展。通过对东部华侨城景区旅游消费结构的研究,拓展了东部华侨城景区旅游消费结构的研究方法。因此,它不仅为优化景区消费提供了参考,也为社会旅游经济的进步做出了贡献。

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