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An Algorithm Combining Random Forest Classification and Fuzzy Comprehensive Evaluation

Authors :
Jing Zhu Jing Zhu
Song Huang Jing Zhu
Yaqing Shi Song Huang
Kaishun Wu Yaqing Shi
Yanqiu Wang Kaishun Wu
Source :
網際網路技術學刊. 23:735-747
Publication Year :
2022
Publisher :
Angle Publishing Co., Ltd., 2022.

Abstract

Random forest algorithm is a common classification method. However, if the weights of many attributes in a data set are not same or close to each other, the direct use of this algorithm for data training will lead to the neglect of the interrelationships between these attributes, and it is difficult to reflect the differences brought by different weights of different attributes. Worse, if the number of attributes in the data set is relatively large, many attributes will be given very little weight when normalization is satisfied, which will also lead to information loss. All of these will have a negative impact on the final result. To solve these problems, this paper proposes an algorithm combining random forest classification and fuzzy comprehensive evaluation, which not only take into account the correlation between attributes in data training, but also retain the information in the original data set to the maximun. At the same time, this algorithm significantly improves the accuracy of random forest training results. &nbsp

Details

ISSN :
16079264
Volume :
23
Database :
OpenAIRE
Journal :
網際網路技術學刊
Accession number :
edsair.doi...........26a344835bab9b506ecf9dafaac21f77
Full Text :
https://doi.org/10.53106/160792642022072304009