﻿ 基于Fuzzy Rough Set约简的健康快速评估算法

# 基于Fuzzy Rough Set约简的健康快速评估算法Health Rapid Assessment Based on Fuzzy Rough Set Reduction Algorithm

Abstract: Health is a good important indicator of people’s living standard, but how to quickly evaluate health level based on physiological index is the core issue of concern for medical wisdom. Due to redundancy characteristics between various physiological indicators to determine, it’s important to analyze the properties for physical test indexes. Rough Set has a strong processing capacity, in terms of knowledge discovery. This paper based on Rough Set of Fuzzy data processing method, puts forward a kind of Fuzzy Rough Set reduction algorithm; this algorithm can implement rapid assessment to the health using physical testing data. At the same time due to the use of Fuzzy theory, the result is more suitable for people to accept, and can reflect the probability characteris-tics in nature of the data. The simulation analysis of actual data can be found that the algorithm has a high recognition accuracy in the rapid assessment of health.

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