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Spatial Pattern Evaluation of Rural Tourism via the Multifactor-Weighted Neural Network Model in the Big Data Era

机译:大数据时代基于多因素加权神经网络模型的乡村旅游空间格局评价

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摘要

The exploration of the evaluation effect of rural tourism spatial pattern based on the multifactor-weighted neural network model in the era of big data aims to optimize the spatial layout of rural tourist attractions. There are plenty of problems such as improper site selection, layout dispersion, and market competition disorder of rural tourism caused by insufficient consideration of planning and tourist market. Hence, the multifactor model after simple weighting is combined with the neural network to construct a spatiotemporal convolution neural network model based on multifactor weighting here to solve these problems. Moreover, the simulation experiment is conducted on the spatial pattern of rural tourism in the Ningxia Hui Autonomous Region to verify the evaluation performance of the constructed model. The results show that the prediction accuracy of the model is 97.69, which is at least 2.13 higher than that of the deep learning algorithm used by other scholars. Through the evaluation and analysis of the spatial pattern of rural tourist attractions, the spatial distribution of scenic spots in Ningxia has strong stability from 2009 to 2019. Meanwhile, the number of scenic spots in the seven plates has increased and the time cost of scenic spot accessibility has changed significantly. Besides, the change rate of the one-hour isochronous cycle reaches 41.67. This indicates that the neural network model has high prediction accuracy in evaluating the spatial pattern of rural tourist attractions, which can provide experimental reference for the digital development of the spatial pattern of rural tourism.
机译:探索大数据时代基于多因素加权神经网络模型的乡村旅游空间格局评价效果,旨在优化乡村旅游景区空间布局。由于规划和旅游市场考虑不足,乡村旅游存在选址不当、布局分散、市场竞争紊乱等问题。因此,将简单加权后的多因素模型与神经网络相结合,构建了基于多因素加权的时空卷积神经网络模型,以解决上述问题。此外,对宁夏回族自治区乡村旅游空间格局进行了仿真试验,验证了所构建模型的评价性能。结果表明,该模型的预测准确率为97.69%,比其他学者使用的深度学习算法至少提高了2.13%。通过对乡村旅游景区空间格局的评价分析,2009—2019年宁夏风景名胜区空间分布具有较强的稳定性。同时,七大板块景区数量增加,景区可达时间成本变化明显。此外,一小时等时周期的变化率达到41.67%。这表明神经网络模型在评价乡村旅游景区空间格局方面具有较高的预测精度,可为乡村旅游空间格局的数字化发展提供实验参考。

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