Fine-grained tourism demand forecasting: A decomposition ensemble deep learning model

IF 3.6 3区 管理学 Q1 ECONOMICS
Jianwei Bi, T. Han, Yanbo Yao
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引用次数: 1

Abstract

Compared with coarse-grained forecasting, fine-grained tourism demand forecasting is a more challenging task, but research on this issue is very scarce. To address this issue, a decomposition ensemble deep learning model is proposed by integrating CEEMDAN, CNNs, LSTM networks, and AR models. The CEEMDAN can decompose complex tourism demand data into multiple components with simpler characteristics, thereby reducing the complexity of forecasting. The CNNs and LSTM networks can fully capture the locally recurring patterns and the long-term dependencies of the components obtained by CEEMDAN. The AR model can capture the scale of tourism demand data, which can overcome the problem that the output scale of the deep neural networks (i.e., CNNs and LSTM networks) is not sensitive to the scale of the inputs. The effectiveness of the proposed model is verified by comparing with five benchmark models using real-time data on tourist volumes at two attractions.
细粒度旅游需求预测:一个分解集成深度学习模型
与粗粒度预测相比,细粒度旅游需求预测是一项更具挑战性的任务,但对这一问题的研究却非常匮乏。为了解决这个问题,通过集成CEEMDAN、CNNs、LSTM网络和AR模型,提出了一种分解集成深度学习模型。CEEMDAN可以将复杂的旅游需求数据分解为多个具有更简单特征的组件,从而降低预测的复杂性。CNNs和LSTM网络可以完全捕获CEEMDAN获得的组件的本地重复模式和长期依赖性。AR模型可以捕捉旅游需求数据的规模,可以克服深度神经网络(即CNN和LSTM网络)的输出规模对输入规模不敏感的问题。通过使用两个景点的旅游量实时数据与五个基准模型进行比较,验证了所提出模型的有效性。
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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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