Tourism demand forecasting with time series imaging: A deep learning model

Volume: 90, Pages: 103255 - 103255
Published: Sep 1, 2021
Abstract
To leverage computer vision technology to improve the accuracy of tourism demand forecasting, a model based on deep learning with time series imaging is proposed. The model consists of three parts: sequence image generation, image feature extraction, and model training. In the first part, the tourism demand data are encoded into images. In the second part, the convolution and pooling layers are used to extract features from the obtained images....
Paper Details
Title
Tourism demand forecasting with time series imaging: A deep learning model
Published Date
Sep 1, 2021
Volume
90
Pages
103255 - 103255
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