Evaluating Lean Service Principles in Restaurants: A Data-Driven Approach with Fuzzy Logic

Evaluating Lean Service Principles in Restaurants: A Data-Driven Approach with Fuzzy Logic

Authors

  • Suzanawati Abu Hasan College of Computing, Informatics and Mathematics, Universiti Teknologi MARA Perlis Branch, Malaysia
  • Yeong Kin Teoh College of Computing, Informatics and Mathematics, Universiti Teknologi MARA Perlis Branch, Malaysia
  • Diana Sirmayunie Mohd Nasir College of Computing, Informatics and Mathematics, Universiti Teknologi MARA Perlis Branch, Malaysia
  • Afiza Syazwani Mohd Razali College of Computing, Informatics and Mathematics, Universiti Teknologi MARA Perlis Branch, Malaysia
  • Marini Mohd Thaib Politeknik Balik Pulau, Penang, Malaysia

DOI:

https://doi.org/10.24191/jcrinn.v9i2.402

Keywords:

Fuzzy logic, Restaurant service quality, Lean assessment, Physical environment

Abstract

Customers' perceptions of a restaurant and their overall satisfaction level can be significantly improved by investing in and improving its physical environment. Applying Lean Service Principles in restaurants enables the identification of areas for enhancement and proposes solutions to achieve exceptional outcomes efficiently, using minimal time and resources. Restaurant management needs more information about customers' preferences to overcome existing weaknesses. The research aims to improve a restaurant's service quality using fuzzy logic by examining the data attributes provided within a service quality leanness assessment. Ten physical environment data attributes were collected from data attributes within a leanness assessment of quality service for use in this study. Recognizing the weaker attributes would assist restaurant management in improving the physical environment of their restaurant so that they could capture more customers in the future and positively impact loyal customers. The result shows three attributes with the lowest ranking scores: the visually appealing dining area, the restaurant's décor typical of its image and price range and the easily readable menu. The study revealed that parking lots with visually appealing features and well-functioning parking management systems obtained a maximum score. In response, the restaurant must take the appropriate actions to improve them. Based on the findings of this study, evaluating a restaurant's physical attributes may enhance customer happiness. The restaurant management would only be able to resolve the current challenges faced by their company with access to the findings of this survey, as they would need an in-depth knowledge of their consumers' preferences.

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References

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Published

2024-09-09

How to Cite

Abu Hasan, S., Teoh, Y. K., Mohd Nasir, D. S., Mohd Razali, A. S., & Mohd Thaib, M. (2024). Evaluating Lean Service Principles in Restaurants: A Data-Driven Approach with Fuzzy Logic. Journal of Computing Research and Innovation, 9(2), 1–12. https://doi.org/10.24191/jcrinn.v9i2.402

Issue

Section

General Computing

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