학술논문

比較多種機器學習預測技術於急診看診人數預測之研究 / Using machine learning techniques for prediction emergency department visits
Document Type
Dissertation
Author
Source
清雲科技大學工業工程與管理系學位論文. p1-66. 66 p.
Subject
急診預測
機器學習
支援向量迴歸
快速決策樹
Emergency Department prediction
machine learning
support vector regression
Reduces Error Pruning Tree
Language
繁體中文
Abstract
In the emergency room of the hospital, patients who need emergency medical care are waiting for emergency treatment, so the emergency room time every minute is very valuable. Because the health insurance system is very serious and the emergency medical resources are limited, if we can predict how many patients will appear in the emergency room, the hospital will be able to dispatch the resources more effectively, but also reduce the pressure of the medical staff in the emergency, improve the medical Quality, emergency patients waiting time will be reduced, so the emergency medical staff how to effectively allocate resources to provide patients with the best quality service is a question worthy of discussion. This study uses ten prediction modes such as Simple Linear Regression, Linear Regression, Multilayer Perceptron, SVR, RBF Network, IBK, K Star, LWL, REP Tree and M5 Rules in Weka system. The purpose of this paper is to compare the prediction techniques of machine learning Method to find out the forecasting technology suitable for predicting the number of emergencies, hoping to be the basis for the allocation of human resources and medical resources. The experimental results show that the SVR and REP Tree prediction models are more suitable for the prediction of the number of emergencies provided by the regional hospitals.

Online Access