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논문검색

Adaptive Recommendation System for Health Screening based on Machine Learning

초록

영어

As the demand for health screening increases, there is a need for efficient design of screening items. We build machine learning models for health screening and recommend screening items to provide personalized health care service. When offline, a synthetic data set is generated based on guidelines and clinical results from institutions, and a machine learning model for each screening item is generated. When online, the recommendation server provides a recommendation list of screening items in real time using the customer's health condition and machine learning models. As a result of the performance analysis, the accuracy of the learning model was close to 100%, and server response time was less than 1 second to serve 1,000 users simultaneously. This paper provides an adaptive and automatic recommendation in response to changes in the new screening environment.

목차

Abstract
1. Introduction
2. System Architecture
2.1 Data Generator
2.2 Learning Model Generator
2.3 Recommendation Server
3. Experiment
4. Conclusions
Acknowledgement
References

저자정보

  • Namyun Kim Professor, School of Computer Engineering, Hansung University, Korea
  • Sung-Dong Kim Professor, School of Computer Engineering, Hansung University, Korea

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