Anomaly detection research using Isolation Forest in Machine Learning

A. S. Kechedzhiev, O. L. Tsvetkova
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Abstract

Objective. The study is devoted to assessing the applicability of the Isolation Forest method in the task of detecting anomalies in network traffic data characterized by insufficient markup. The main purpose of the work is to evaluate the effectiveness of Isolation Forest with limited data markup and its potential in critical areas such as cybersecurity and financial analytics.Method. The study includes data preprocessing, training the model on the training set, and evaluating the model's performance on the test set using accuracy metrics, error matrix, and classification report. To implement this research, the Python programming language and the scikit-learn library were chosen to implement the Isolation Forest, as well as Pandas for working with data.Result. Evaluating the applicability of the Isolation Forest method on unstructured data revealed its potential for identifying anomalous patterns without the need for extensive labeling. This confirms the effectiveness of Isolation Forest in environments where access to labeled data is limited or absent.Conclusion. The results demonstrate high anomaly detection recall despite relatively low overall accuracy, indicating the importance of contextual interpretation of metrics in the task of detecting rare events in data.
利用机器学习中的隔离林进行异常检测研究
研究目的本研究致力于评估 Isolation Forest 方法在检测标记不足的网络流量数据中的异常情况时的适用性。这项工作的主要目的是评估 Isolation Forest 在数据标记有限的情况下的有效性及其在网络安全和金融分析等关键领域的潜力。研究包括数据预处理、在训练集上训练模型,以及使用准确度指标、误差矩阵和分类报告评估模型在测试集上的性能。为了实现这项研究,我们选择了 Python 编程语言和 scikit-learn 库来实现隔离林,并使用 Pandas 来处理数据。通过评估 Isolation Forest 方法在非结构化数据上的适用性,我们发现该方法具有识别异常模式的潜力,而无需进行大量标记。这证实了 Isolation Forest 在获取标记数据有限或缺乏标记数据的环境中的有效性。结果表明,尽管总体准确率相对较低,但异常检测召回率却很高,这说明在检测数据中的罕见事件时,根据上下文解释指标非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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