首页|New Machine Learning Findings from University of Leon Described (Transfer and Online Learning for Ip Maliciousness Prediction In a Concept Drift Scenario)

New Machine Learning Findings from University of Leon Described (Transfer and Online Learning for Ip Maliciousness Prediction In a Concept Drift Scenario)

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Current study results on Machine Learning have been published. According to news reporting from Leon, Spain, by NewsRx journalists, research stated, “Determining the maliciousness of a cybersecurity incident is essential to establish effective measures against it. To process large volumes of data in an automated way, machine learning techniques are commonly applied to the problem.” The news correspondents obtained a quote from the research from the University of Leon, “One of the main obstacles to apply machine learning effectively is that the data distribution is not stationary, so a model trained on old data tends to degrade as new data with a different distribution is processed. This change in the distribution of data over time is known as concept drift and affects the reports of new events, which may compromise model performance. To tackle this problem this paper evaluates the effectiveness of transfer learning techniques in reducing the impact of concept drift on the performance of models for assigning maliciousness to IPs. We compare this approach with the application of online-updated models, which are another common approach to adapt to concept drift in the data.”

LeonSpainEuropeCybersecurityCyborgsEmerging TechnologiesMachine LearningUniversity of Leon

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.26)
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