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논문검색

Application of Improved Decision Tree Method based on Rough Set in Building Smart Medical Analysis CRM System

원문정보

초록

영어

Medical Customer Relationship Management (CRM) is a kind of study method for the patient and potential patient carries on the exchange, timely access to and convey information, tracking to give the necessary guidance. The purpose of community hospital CRM is the daily business management and decision analysis of the hospital with the relationship between doctors and patients. Decision tree learning is an inductive learning algorithm based example. Rough set theory is used to process uncertain and imprecise information. In this paper, a decision tree algorithm based on rough set is proposed, and the improved decision tree algorithm based on rough classification is better than the standard C4.5 algorithm in classification accuracy and regression rate by experiment. Finally, the improved decision tree method is applied to the smart medical analysis CRM system. The experimental results show that the method can improve the management efficiency of CRM.

목차

Abstract
 1. Introduction
 2. Method of Improved Decision Tree C4.5 based on Rough Set
 3. Smart Medical Analysis CRM System
 4. Smart Medical Analysis CRM System based on Rough Set Improved Decision Tree
 5. Experiments and Analysis
 6. Summary
 References

저자정보

  • Hongsheng Xu Luoyang Normal University Henan Luoyang, 471022, China
  • Lan Wang Luoyang Normal University Henan Luoyang, 471022, China
  • Wenli Gan Luoyang Normal University Henan Luoyang, 471022, China

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