Optimizing Tourism Accommodation Offers by Integrating Language Models and Knowledge Graph Technologies

Author:

Cadeddu Andrea1,Chessa Alessandro1ORCID,De Leo Vincenzo12ORCID,Fenu Gianni2,Motta Enrico3ORCID,Osborne Francesco34ORCID,Reforgiato Recupero Diego2ORCID,Salatino Angelo3ORCID,Secchi Luca12

Affiliation:

1. Linkalab s.r.l., Viale Elmas 142, 09122 Cagliari, Italy

2. Department of Mathematics and Computer Science, University of Cagliari, Via Ospedale 72, 09124 Cagliari, Italy

3. Knowledge Media Institute, The Open University, Milton Keynes MK7 6AA, UK

4. Department of Business and Law, University of Milano Bicocca, 20126 Milan, Italy

Abstract

Online platforms have become the primary means for travellers to search, compare, and book accommodations for their trips. Consequently, online platforms and revenue managers must acquire a comprehensive comprehension of these dynamics to formulate a competitive and appealing offerings. Recent advancements in natural language processing, specifically through the development of large language models, have demonstrated significant progress in capturing the intricate nuances of human language. On the other hand, knowledge graphs have emerged as potent instruments for representing and organizing structured information. Nevertheless, effectively integrating these two powerful technologies remains an ongoing challenge. This paper presents an innovative deep learning methodology that combines large language models with domain-specific knowledge graphs for classification of tourism offers. The main objective of our system is to assist revenue managers in the following two fundamental dimensions: (i) comprehending the market positioning of their accommodation offerings, taking into consideration factors such as accommodation price and availability, together with user reviews and demand, and (ii) optimizing presentations and characteristics of the offerings themselves, with the intention of improving their overall appeal. For this purpose, we developed a domain knowledge graph covering a variety of information about accommodations and implemented targeted feature engineering techniques to enhance the information representation within a large language model. To evaluate the effectiveness of our approach, we conducted a comparative analysis against alternative methods on four datasets about accommodation offers in London. The proposed solution obtained excellent results, significantly outperforming alternative methods.

Funder

Italian Ministry of University and Research

Publisher

MDPI AG

Reference46 articles.

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3. Artificial intelligence empowered conversational agents: A systematic literature review and research agenda;Mariani;J. Bus. Res.,2023

4. Devlin, J., Chang, M.W., Lee, K., Google, K.T., and Language, A.I. (2018). BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding. arXiv.

5. Citation prediction by leveraging transformers and natural language processing heuristics;Buscaldi;Inf. Process. Manag.,2024

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