The Effect of Hyperparameter Optimization on the Estimation of Performance Metrics in Network Traffic Prediction using the Gradient Boosting Machine Model

被引:2
作者
Mwita, Machoke [1 ]
Mbelwa, Jimmy [2 ]
Agbinya, Johnson [3 ]
Sam, Anael Elikana [4 ]
机构
[1] Nelson Mandela African Inst Sci & Technol, Dept Informat Technol Dev & Management ITDM, Sch Computat & Commun Sci & Engn, Arusha, Tanzania
[2] Univ Dar Es Salaam, Dar Es Salaam, Tanzania
[3] Melbourne Inst Technol, Sch Informat Technol & Engn, Melbourne, Australia
[4] Nelson Mandela African Inst Sci & Technol, Dept Commun Sci & Engn CoSE, Sch Computat & Commun Sci & Engn CoCSE, Arusha, Tanzania
关键词
network traffic; machine learning; big data; data loggers; feature selection; gradient boosting machine prediction; ALGORITHMS;
D O I
10.48084/etasr.5548
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Information and Communication Technology (ICT) has changed the way we communicate and access information, resulting in the high generation of heterogeneous data. The amount of network traffic generated constantly increases in velocity, veracity, and volume as we enter the era of big data. Network traffic classification and intrusion detection are very important for the early detection and identification of unnecessary network traffic. The Machine Learning (ML) approach has recently entered the center stage in network traffic accurate classification. However, in most cases, it does not apply model hyperparameter optimization. In this study, gradient boosting machine prediction was used with different hyperparameter optimization configurations, such as interaction depth, tree number, learning rate, and sampling. Data were collected through an experimental setup by using the Sophos firewall and Cisco router data loggers. Data analysis was conducted with R software version 4.2.0 with Rstudio Integrated Development Environment. The dataset was split into two partitions, where 70% was used for training the model and 30% for testing. At a learning rate of 0.1, interaction depth of 14, and tree number of 2500, the model estimated the highest performance metrics with an accuracy of 0.93 and R of 0.87 compared to 0.90 and 0.85 before model optimization. The same configuration attained the minimum classification error of 0.07 than 0.10 before model optimization. After model tweaking, a method was developed for achieving improved accuracy, R square, mean decrease in Gini coefficients for more than 8 features, lower classification error, root mean square error, logarithmic loss, and mean square error in the model.
引用
收藏
页码:10714 / 10720
页数:7
相关论文
共 40 条
  • [1] Ageev S., 2020, E3S WEB C, V157, DOI [10.1051/e3sconf/202015704027, DOI 10.1051/E3SCONF/202015704027]
  • [2] Two-Factor Authentication Scheme for Mobile Money: A Review of Threat Models and Countermeasures
    Ali, Guma
    Ally Dida, Mussa
    Elikana Sam, Anael
    [J]. FUTURE INTERNET, 2020, 12 (10): : 1 - 27
  • [3] Allaire J. J., 2011, J Wildl Manage, V75
  • [4] A Genetic-Based Extreme Gradient Boosting Model for Detecting Intrusions in Wireless Sensor Networks
    Alqahtani, Mnahi
    Gumaei, Abdu
    Mathkour, Hassan
    Ben Ismail, Mohamed Maher
    [J]. SENSORS, 2019, 19 (20)
  • [5] Alzahrani SS, 2022, ENG TECHNOL APPL SCI, V12, P9364
  • [6] Andersson R., 2017, CLASSIFICATION VIDEO
  • [7] What is Machine Learning? A Primer for the Epidemiologist
    Bi, Qifang
    Goodman, Katherine E.
    Kaminsky, Joshua
    Lessler, Justin
    [J]. AMERICAN JOURNAL OF EPIDEMIOLOGY, 2019, 188 (12) : 2222 - 2239
  • [8] Chang L.-H., 2020, Adv. Technol. Innov, V5, P216
  • [9] On using eXtreme Gradient Boosting (XGBoost) Machine Learning algorithm for Home Network Traffic Classification
    Cherif, Iyad Lahsen
    Kortebi, Abdesselem
    [J]. 2019 WIRELESS DAYS (WD), 2019,
  • [10] Cook D., 2016, PRACTICAL MACHINE LE