Forecasting Daily Room Rates on the Basis of an LSTM Model in Difficult Times of Hong Kong: Evidence from Online Distribution Channels on the Hotel Industry
Abstract
:1. Introduction
2. Literature Review
2.1. Forecasting Objects
2.2. Forecasting Methods
3. Methodology
3.1. Data Set Collection
- The classification of Hong Kong hotels by district followed the official system used by the HKTB, namely, Hong Kong Island, Kowloon, New Territories, and Islands.
- Given that Hong Kong does not have a formal hotel star-rating system [40,41,42], the rating system on Hotels.com for hotel categories was used in this study. If the star rating of a selected hotel was not available on Hotels.com, it was verified by cross-checking with Bookings.com and TripAdvisor. In such cases, a half-star strategy was adopted. That is, an average of 0.5 was maintained, and there existed 3.5 and 4.5 stars in our category list. This would lead to accurate results for different categories. Given that Hotels.com uses the half-star strategy, the star-rating difference of hotels available on Hotels.com and those available on Bookings.com and TripAdvisor, and the star-rating difference between the Bookings.com and TripAdvisor on the same hotel could be leveraged.
- The data collection took place in a 9-month period from 2019 to 2020. The data range was from mid-October of 2019 to mid-June of 2020. There were 238 days in total.
- Prices were the average nightly price provided by the sub-channels. Consequently, the room rate is a real number (in HK dollars) if the scraping bot found the hotel on the collection date, for the given target date, and each sub-channel. For a particular date, the room rate could be missing if the bot could not find any price for the type of room returned by the sub-channels. Eventually, the raw data set contained about 455,457 data (room prices).
3.2. Model Development
3.3. Data Set Preprocessing
3.4. Baseline Models
3.5. Measures of Forecast Errors
4. Findings
4.1. Descriptive Analysis
4.2. Preliminary Analysis
5. Discussion
5.1. Theoretical Insights
5.2. Managerial Implications
6. Conclusions, Limitation and Future Directions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
Appendix A
References
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LSTM | ARIMA | SVR | Naïve | |||||
---|---|---|---|---|---|---|---|---|
Mean | SD | Mean | SD | Mean | SD | Mean | SD | |
Sunday | 4.31 | 2.27 | 8.66 | 5.09 | 14.15 | 7.52 | 6.91 | 4.14 |
Monday | 3.86 | 1.96 | 9.10 | 6.41 | 13.80 | 6.94 | 6.25 | 3.72 |
Tuesday | 3.86 | 2.03 | 10.21 | 7.86 | 16.27 | 6.37 | 5.98 | 3.59 |
Wednesday | 4.23 | 1.97 | 10.06 | 6.91 | 12.55 | 6.37 | 6.80 | 3.80 |
Thursday | 4.43 | 2.27 | 9.61 | 6.75 | 12.39 | 6.40 | 7.52 | 4.77 |
Friday | 4.36 | 2.22 | 8.68 | 5.80 | 12.43 | 6.30 | 7.43 | 4.84 |
Saturday | 4.68 | 2.47 | 8.93 | 4.78 | 13.06 | 6.83 | 7.77 | 4.82 |
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Zheng, T.; Liu, S.; Chen, Z.; Qiao, Y.; Law, R. Forecasting Daily Room Rates on the Basis of an LSTM Model in Difficult Times of Hong Kong: Evidence from Online Distribution Channels on the Hotel Industry. Sustainability 2020, 12, 7334. https://doi.org/10.3390/su12187334
Zheng T, Liu S, Chen Z, Qiao Y, Law R. Forecasting Daily Room Rates on the Basis of an LSTM Model in Difficult Times of Hong Kong: Evidence from Online Distribution Channels on the Hotel Industry. Sustainability. 2020; 12(18):7334. https://doi.org/10.3390/su12187334
Chicago/Turabian StyleZheng, Tianxiang, Shaopeng Liu, Zini Chen, Yuhan Qiao, and Rob Law. 2020. "Forecasting Daily Room Rates on the Basis of an LSTM Model in Difficult Times of Hong Kong: Evidence from Online Distribution Channels on the Hotel Industry" Sustainability 12, no. 18: 7334. https://doi.org/10.3390/su12187334
APA StyleZheng, T., Liu, S., Chen, Z., Qiao, Y., & Law, R. (2020). Forecasting Daily Room Rates on the Basis of an LSTM Model in Difficult Times of Hong Kong: Evidence from Online Distribution Channels on the Hotel Industry. Sustainability, 12(18), 7334. https://doi.org/10.3390/su12187334