Indonesian Journal of Electrical Engineering and Computer Science, volume 32, issue 2, pages 1086

Random forest for lung cancer analysis using Apache Mahout and Hadoop based on software defined networking

Publication typeJournal Article
Publication date2023-11-01
scimago Q3
SJR0.247
CiteScore2.9
Impact factor
ISSN25024752, 25024760
Electrical and Electronic Engineering
Hardware and Architecture
Information Systems
Computer Networks and Communications
Control and Optimization
Signal Processing
Abstract

<span>Random forest is a machine learning algorithm that mainly built as a classification method to make predictions based on decision trees. Many machine learning approaches used random forest to perform deep analysis on different cancer diseases to understand their complex characterstics and behaviour. However, due to massive and complex data generated from such diseases, it has become difficult to run random forest using single machine. Therefore, advanced tools are highly required to run random forest to analyse such massive data. In this paper, random forest algorithm using Apache Mahout and Hadoop based software defined networking (SDN) are used to conduct the prediction and analysis on large lung cancer datasets. Several experiments are conducted to evaluate the proposed system. Experiments are conducted using nine virtual nodes. Experiments show that the implementation of random forest algorithm using the proposed work outperforms its implementation in traditional environment with regard to the execution time. Comparison between the proposed system using Hadoop based SDN and Hadoop only is performed. Results show that random forest using Hadoop based SDN has less execution time than when using Hadoop only. Furthermore, experiments reveal that the performance of implemented system achieved more efficiency regarding execution time, accuracy and reliability.</span>

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