Tác giả: Da Thao Nguyen, Yi-min Li, Chi Lu Peng, Ming-Yuan Cho, Thanh-Phuong Nguyen

Abstract

The accuracy of tourism demand (TD) prediction, essential for managing available resources in the tourism industry, still needs to be improved with the unreliability of traditional algorithms. This research proposes a deep learning methodology that combines the convolution neural network (CNN) and gated recurrent unit (GRU), efficiently predicting Vietnam’s tourism demand. The Pearson correlation coefficients are performed to nominate the most appropriate feature inputs. The proposed algorithm is analyzed and evaluated with other benchmark approaches, comprising the recurrent neural network (RNN), the long short-term memory (LSTM), the GRU, and the CNN. The experiments prove that the developed hybrid algorithm could outperform previous methodologies in predicting TD in some of Vietnam’s provinces. The proposed algorithm could provide satisfactory predictions for tourism demand with a supreme enhancement of 77.1% MSE, 37.4% validating MSE, 46.0% MAE, 20.6% validating MAE, 76.6% MAPE, and 90.3% validating MAPE comparing across deep learning benchmarks.

Thông tin:

Thuộc danh mụcSSCI
Tạp chíInternational Journal of Tourism Research
Nhà xuất bảnJohn Wiley and Sons Ltd
Mã định danh bàie2812
Tập26
Số6
Ngày xuất bản12/12/2024
DOIhttps://doi.org/10.1002/jtr.2812