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http://dx.doi.org/10.7236/IJIBC.2021.13.3.92

Design and Implementation of Intelligent Medical Service System Based on Classification Algorithm  

Yu, Linjun (School of Electronic Commerce, Jiujiang University)
Kang, Yun-Jeong (College of Convergence Liberal Arts, Wonkwang University)
Choi, Dong-Oun (Department of Computer Software Engineering, Wonkwang University)
Publication Information
International Journal of Internet, Broadcasting and Communication / v.13, no.3, 2021 , pp. 92-103 More about this Journal
Abstract
With the continuous acceleration of economic and social development, people gradually pay attention to their health, improve their living environment, diet, strengthen exercise, and even conduct regular health examination, to ensure that they always understand the health status. Even so, people still face many health problems, and the number of chronic diseases is increasing. Recently, COVID-19 has also reminded people that public health problems are also facing severe challenges. With the development of artificial intelligence equipment and technology, medical diagnosis expert systems based on big data have become a topic of concern to many researchers. At present, there are many algorithms that can help computers initially diagnose diseases for patients, but they want to improve the accuracy of diagnosis. And taking into account the pathology that varies from person to person, the health diagnosis expert system urgently needs a new algorithm to improve accuracy. Through the understanding of classic algorithms, this paper has optimized it, and finally proved through experiments that the combined classification algorithm improved by latent factors can meet the needs of medical intelligent diagnosis.
Keywords
Expert system; Medical diagnosis; Latent factor; Association rule algorithm;
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