Submitted:
30 October 2023
Posted:
01 November 2023
You are already at the latest version
Abstract
Keywords:
1. Introduction
1.1. Problem Statement
- During the busy hours in historical sites, the recommendation model for analyzing the culture of the place by recommending the most nearby cultural events is scarcely developed.
- In conventional works, when the recommendation is created only grounded on the reviews, the historical importance was neglected, which affects the recommendation of CT.
- When a tourism-centric database is created, there is no guarantee that the database is used by legal users only. This would cause a security threat to the historical sites, which are the cultural symbol of a country.
- To develop KIC and CVC-MST schemes for analyzing the possible nearest cultural events to the historical sites and suggested to tourism planners.
- To develop an MQ-LSTM recommendation model considering the location, time, review along with historical significance.
- To establish an LSH hashing for providing the security of the tourism recommendation database using the user attributes.
2. Related Works
3. Proposed Methodology for the Cultural Tourism Accelerator in Riyadh
3.1. Input Data
3.2. Processing with Location
3.2.1. Spectral Grouping
| Pseudocode of Proposed KIC grouping |
| Input: Locations |
| Output: grouped locations |
| Begin |
| Initialize locations, distance function |
| For input locations do |
| Construct graph with KNN |
| Perform partitioning of to |
| For merging do |
| Estimate KI relative interconnectivity closeness |
| Estimate relative closeness |
| If then |
| Merge sub-clusters |
| Else |
| Compare other sub-clusters |
| Repeat For2 |
| End If |
| End For |
| End For |
| Return cluster |
| End |
3.2.2. Tree Construction
3.2.3. Feature Extraction
3.3. Event Data Processing
3.3.1. Preprocessing
3.3.2. Word Embedding
3.4. Processing with SNS Data
3.4.1. Processes with the Review Data
- (i)
- Keyword Extraction
- (a)
- Locating keywords
- (b)
- Building score-weight matrix
- (c)
- Extracted keywords
3.4.2. Processing of News Data
- (a)
- Determining score value
3.5. Data Fusion
3.6. Recommendation
| Pseudocode of proposed MQ-LSTM |
| Input: Fused data |
| Output: contextual recommendation |
| Begin |
| Initialize states , gates , time instance |
| Set initial |
| For time instant do |
| Determine gates outputs |
| Perform MQ activation |
| Update cell state with |
| Estimate output gate value |
| End For |
| Return output |
| End |
3.7. Database Security
3.7.1. Registration
3.7.2. Hashcode Generation
4. Results and Discussion
4.1. Performance Analysis of the Recommendation System
4.2. Performance Analysis of Spectral Grouping
4.3. Comparative Measurement with Literature Papers
5. Conclusions
Acknowledgments
Conflicts of Interest
References
- Alghamdi, N.; Alageeli, N.; Sharkh, D.A.; Alqahtani, M.; Al-Razgan, M. An eye on riyadh tourist season: Using geo-tagged snapchat posts to analyse tourists impression. In Proceedings of the 2020 2nd International Conference on Computer and Information Sciences, Sakaka, Saudi Arabia, 13–15 October 2020. [Google Scholar] [CrossRef]
- Amato, F.; Moscato, F.; Moscato, V.; Pascale, F.; Picariello, A. An agent-based approach for recommending cultural tours. Pattern Recognition Letters 2020, 131, 341–347. [Google Scholar] [CrossRef]
- Andria, J.; di Tollo, G.; Pesenti, R. A heuristic fuzzy algorithm for assessing and managing tourism sustainability. Soft Computing 2019, 24, 4027–4040. [Google Scholar] [CrossRef]
- Cao, Z.; Xu, H.; Teo BS, X. Sentiment of chinese tourists towards malaysia cultural heritage based on online travel reviews. Sustainability 2023, 15, 1–17. [Google Scholar] [CrossRef]
- Dar, S.N.; Shah, S.A.; Wani, M.A. Geospatial tourist information system for promoting tourism in trans-himalayas: A study of leh Ladakh India. GeoJournal 2022, 87, 3249–3263. [Google Scholar] [CrossRef]
- He, S. Research on tourism route recommendation strategy based on convolutional neural network and collaborative filtering algorithm. Security and Communication Networks 2022, 2022, 1–9. [Google Scholar] [CrossRef]
- Konstantakis, M.; Christodoulou, Y.; Aliprantis, J.; Caridakis, G. ACUX recommender: A mobile recommendation system for multi-profile cultural visitors based on visiting preferences classification. Big Data and Cognitive Computing 2022, 6, 1–11. [Google Scholar] [CrossRef]
- Li, H.; Qiao, M.; Peng, S. Research on the recommendation algorithm of rural tourism routes based on the fusion model of multiple data sources. Discrete Dynamics in Nature and Society 2022, 2022, 1–10. [Google Scholar] [CrossRef]
- Nowacki, M. Heritage interpretation and sustainable development: A systematic literature review. Sustainability 2021, 13, 1–16. [Google Scholar] [CrossRef]
- Perles-Ribes, J.F.; Ramon-Rodriguez, A.B.; Moreno-Izquierdo, L.; Such-Devesa, M.J. Machine learning techniques as a tool for predicting overtourism: The case of Spain. International Journal of Tourism Research 2020, 22, 825–838. [Google Scholar] [CrossRef]
- Rehman Khan, H.U.; Kim Lim, C.; Ahmed, M.F.; Tan, K.L.; Mokhtar, M. Bin. Systematic review of contextual suggestion and recommendation systems for sustainable e-tourism. Sustainability 2021, 13, 1–27. [Google Scholar] [CrossRef]
- Saha, A.; Pal, S.C.; Santosh, M.; Janizadeh, S.; Chowdhuri, I.; Norouzi, A.; Roy, P.; Chakrabortty, R. Modelling multi-hazard threats to cultural heritage sites and environmental sustainability: The present and future scenarios. Journal of Cleaner Production 2021, 320, 128713. [Google Scholar] [CrossRef]
- Sarkar, J.L.; Majumder, A.; Panigrahi, C.R.; Roy, S. MULTITOUR: A multiple itinerary tourists recommendation engine. Electronic Commerce Research and Applications 2020, 40, 100943. [Google Scholar] [CrossRef]
- Stamatelatos, G.; Drosatos, G.; Gyftopoulos, S.; Briola, H.; Efraimidis, P.S. Point-of-interest lists and their potential in recommendation systems. In Information Technology and Tourism; Springer: Berlin Heidelberg, 2021; Volume 23, Issue 2. [Google Scholar] [CrossRef]
- Sung, P.L.; Hsiao, T.Y.; Huang, L.; Morrison, A.M. The influence of green trust on travel agency intentions to promote low-carbon tours for the purpose of sustainable development. Corporate Social Responsibility and Environmental Management 2021, 28, 1185–1199. [Google Scholar] [CrossRef]
- Wang, R. Spring festival holiday tourism data mining based on the deep learning model. Scientific Programming 2022, 2022, 1–13. [Google Scholar] [CrossRef]
- Weng, G.; Li, H.; Li, Y. The temporal and spatial distribution characteristics and influencing factors of tourist attractions in Chengdu-Chongqing economic circle. Environment Development and Sustainability 2022, 2022, 0123456789. [Google Scholar] [CrossRef]
- Wu, L.; Gu, T.; Chen, Z.; Zeng, P.; Liao, Z. Personalized day tour design for urban tourists with consideration to CO2 emissions. Chinese Journal of Population Resources and Environment 2022, 20, 237–244. [Google Scholar] [CrossRef]
- Yang, S. Analytic hierarchy process and its application in rural tourism service performance evaluation. Discrete Dynamics in Nature and Society 2022, 2022, 1–10. [Google Scholar] [CrossRef]
- Zhang, J.; Dong, L. Image monitoring and management of hot tourism destination based on data mining technology in big data environment. Microprocessors and Microsystems 2021, 80, 103515. [Google Scholar] [CrossRef]








| Techniques | MR (%) | NPV (%) | MCC (%) |
|---|---|---|---|
| Proposed MQ-LSTM | 2.78 | 96.15 | 93.53 |
| LSTM | 3.68 | 94.95 | 92.52 |
| RNN | 5.7 | 93.14 | 91.43 |
| DNN | 8.75 | 91.39 | 90.31 |
| ANN | 9.4 | 89.35 | 88.17 |
| Techniques | Training Time (ms) |
|---|---|
| Proposed MQ-LSTM | 45005 |
| LSTM | 53487 |
| RNN | 67543 |
| DNN | 78643 |
| ANN | 90049 |
| Techniques | Grouping Time (ms) |
|---|---|
| Proposed KIC | 36017 |
| Chameleon | 43129 |
| BIRCH | 53012 |
| CURE | 65894 |
| ROCK | 78653 |
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