Impact Factor (2025): 6.9
DOI Prefix: 10.47001/IRJIET
Identifying
and preventing botnet attacks has become increasingly difficult due to the
explosive growth of IoT devices. This research suggests a useful method for
detecting IoT botnet attacks that uses a Random Forest classifier to examine
network traffic data and spot suspicious activity. EDA is used to analyze the
dataset's structure, identify missing values, and evaluate the distribution of
classes. Categorical features are encoded with labels to make them compatible
with machine learning algorithms. A Random Forest classifier is selected to its
capacity to effectively handle skewed distributions and dimensional data,
taking into account the dataset's intrinsic class imbalance. Using the
classifier's integrated ranking mechanism, feature importance analysis is
carried out, choosing only the most pertinent features to improve mode ln
performance. The data is then classified into training and testing sets, with
the most important features being used to train the model. Accuracy,
classification reports, and F1-score are used to assess the system, showing
that the Random Forest classifier accurately and efficiently detects IoT botnet
attacks. This study emphasizes how important feature selection, data
pretreatment, and machine learning models are to bolstering IoT network
cybersecurity defenses.
Country : India
IRJIET, Volume 9, Special Issue of INSPIRE’25 April 2025 pp. 185-191