Healthy Menu Recommendation for Malnutrition Patients Based on Ontology

Authors

DOI:

https://doi.org/10.30865/mib.v7i1.5543

Keywords:

Healthy Menu, Malnutrition, Chatbot, Ontology, Semantic Web Rule Language

Abstract

A healthy diet is one of the keys to creating a healthy lifestyle, but at this time the selection of a healthy and nutritious meal menu in the society is difficult to do because of the limited nutritional information contained in a food. A healthy diet can help a person to get balanced nutrition, good nutritional intake can increase the body's immunity, and make a normal or healthy body weight so that it can increase work productivity and prevention of chronic diseases. To overcome this problem, we propose the use of ontology and Semantic Web Rule Language (SWRL) to build a healthy menu recommendation system in the form of a chatbot to make it easier for users to determine the daily meal menu. These recommendations are personalized by considering the user's needs. Ontology is used to represent the required knowledge and the reasoning process uses SWRL. From the results of system testing, the recommendations get the accuracy of the F-Score value of 0.951

Author Biographies

Igga Febrian Virgiani, Telkom University, Bandung

School of Computing

Z K A Baizal, Telkom University, Bandung

School of Computing

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Published

2023-01-28