DocumentCode
3582779
Title
Self-adaptive heterogeneous random forest
Author
Bader-El-Den, Mohamed
Author_Institution
Sch. of Comput., Univ. of Portsmouth, Portsmouth, UK
fYear
2014
Firstpage
640
Lastpage
646
Abstract
Random Forest RF is an ensemble learning approach that utilises a number of classifiers to contribute though voting to predicting the class label of any unlabelled instances. Parameters such as the size of the forest N and the number of features used at each split M, has significant impact on the performance of the RF especially on instances with very large number of attributes. In a previous work Genetic Algorithms has been used to dynamically optimize the size of RF. This study extends this genetic algorithm approach to further enhance the accuracy of Random Forests by building the forest out of heterogeneous decision trees, heterogeneous here means trees with different M values. The approach is termed as Heterogeneous Genetic Algorithm based Random Forests (HGARF). As Random Forests generates a typical large number of decision trees with randomisation over the feature space when splitting at each node for all the trees, this has motivated the development of a genetic algorithm based optimisation. Typically, HGARF accepts as an input a forest RF→ of N trees, the initial population is randomly generated from RF→ as a number of smaller random forests rfi→ where each one has a number ni ≤ N of trees. This population of forests is then evolved through a number of generations using genetic algorithms. Our extensive experimental study has proved that Random Forests performance could be boosted using the genetic algorithm approach.
Keywords
decision trees; genetic algorithms; learning (artificial intelligence); HGARF; ensemble learning approach; feature space; genetic algorithm based optimisation; heterogeneous decision tree; heterogeneous genetic algorithm based random forest; randomisation; self-adaptive heterogeneous random forest; Accuracy; Biological cells; Genetic algorithms; Radio frequency; Training; Vectors; Vegetation;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Systems and Applications (AICCSA), 2014 IEEE/ACS 11th International Conference on
Type
conf
DOI
10.1109/AICCSA.2014.7073259
Filename
7073259
Link To Document