基于空间依赖的多景点旅游需求协同预测:一种组合深度学习模型

IF 3.6 3区 管理学 Q1 ECONOMICS
Jianwei Bi, T. Han, Yanbo Yao
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引用次数: 3

摘要

针对具有空间依赖性的旅游需求预测问题,提出了一个新的旅游需求预测模型,该模型分为三个阶段:旅游景点选择、基础预测量生成和基础预测量组合。在第一阶段,采用一种基于多维尺度的关联景点选择方法来确定每对景点之间的空间依赖强度。第二阶段,构建了基于LSTM网络和自回归模型的混合基预测器,利用LSTM网络捕获景点间的空间依赖性,利用自回归模型捕获各景点的游客数量规模。在第三阶段,提出了一种结合这些基本预测因子的策略;可以缓解LSTM的过拟合问题,提高预测的稳定性。最后,通过北京市77个景点的客流量数据验证了该模型的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative forecasting of tourism demand for multiple tourist attractions with spatial dependence: A combined deep learning model
To forecast the tourism demand across a set of tourist attractions with spatial dependence, a new model is proposed, which has three stages: tourist attraction selection, base predictor generation, and base predictor combination. In stage 1, a method for selecting associated attractions based on multi-dimensional scaling is used to determine the strength of the spatial dependence between each pair of attractions. In stage 2, a hybrid base predictor based on LSTM networks and Autoregressive model is developed, where the LSTM networks are used to capture the spatial dependence among attractions, and the Autoregressive model is used capture the scale of tourist volume at each attraction. In stage 3, a strategy for combining these base predictors is proposed; it can alleviate the overfitting problem of LSTM and improve the stability of forecasts. Finally, the superiority of the model is verified through the data on tourist volumes at 77 attractions in Beijing.
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来源期刊
Tourism Economics
Tourism Economics Multiple-
CiteScore
9.30
自引率
11.40%
发文量
90
期刊介绍: Tourism Economics, published quarterly, covers the business aspects of tourism in the wider context. It takes account of constraints on development, such as social and community interests and the sustainable use of tourism and recreation resources, and inputs into the production process. The definition of tourism used includes tourist trips taken for all purposes, embracing both stay and day visitors. Articles address the components of the tourism product (accommodation; restaurants; merchandizing; attractions; transport; entertainment; tourist activities); and the economic organization of tourism at micro and macro levels (market structure; role of public/private sectors; community interests; strategic planning; marketing; finance; economic development).
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