Abstract

Nowadays, the hotel management concept cannot keep pace with the times. Traditional concepts are often adopted to manage hotel financial personnel, for the hotel financial personnel cannot take timely and effective training. All these lead to the hotel financial staff designing the hotel’s related business without sufficient understanding of the hotel industry and judging and deciding if they do not master the hotel’s professional knowledge, which makes the participating projects unable to give correct and reasonable answers to the substantive problems of the hotel. This leads to the hotel management not going up; extensive management makes the hotel benefit not go up. Hotel intelligent technology can solve these problems and not only save manpower and material resources but also intelligently predict the financial crisis of hotels. In the context of the accelerated development of globalization and informatization, there are still many problems in the financial management process of my country’s hotel industry. Based on these questions, the article draws on foreign advanced experience, puts forward effective suggestions in financial management, and uses computational intelligence technology to design a centralized and intelligent financial management system. The research results show the following: (1) the financial crisis model is created by using the principle of support vector machine and logistic regression method, which greatly reduces the financial crisis of the enterprise. (2) The system can straightforwardly summarize the data for easy query. Taking three domestic hotels as an example, a comprehensive study has been carried out on the three aspects of pricing assessment risk, financial integration risk, and debt risk. In 2016, the financial leverage coefficient has been relatively high, the quick ratio has fluctuated greatly, and the interest protection coefficient has shown a downward trend. (3) The performance of the system is compared with traditional development mode, framework development mode, and intelligent optimization mode. The intelligent optimization system has the lowest response time and the highest success rate. The new system has reduced response time by about 57% compared with the original response time, and the access success rate has been greatly improved.

Highlights

  • The arrival of the information age has given new meaning to hotels

  • (3) The performance of the system is compared with traditional development mode, framework development mode, and intelligent optimization mode

  • The new system has reduced response time by about 57% compared with the original response time, and the access success rate has been greatly improved

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Summary

Introduction

The arrival of the information age has given new meaning to hotels. Traditional hotel financial management models can no longer meet today’s needs, so it is inevitable to apply intelligence to hotel financial management. Literature [3] proposed an intelligent financial management system This system is a system designed based on Python. Use computing intelligence to extract hotel information, establish customer models, realize the hotel’s “customer-centric” concept, Wireless Communications and Mobile Computing improve the hotel’s core competitiveness, and lay a solid foundation for the hotel’s long-term development. The literature [10] pointed out that recent reports focusing on the future of the global hotel industry have determined that key management issues include the impact of new technologies, lack of capital investment, and increasing attention to the future of the environment. People’s perception of the role of hotel finance director has changed tremendously This position is involved in the hotel’s management team. Pujie Technology uses artificial intelligence to bring new vitality and new development to the hotel industry and meets the unique experience needs of customers with the principle of customer first

Research Background
Financial Model Construction
Simulation Experiment
Debt Repayment Risk Identification
System Performance Test
Findings
Conclusion
Full Text
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