Spelling suggestions: "subject:"adaboost algorithm"" "subject:"gadaboost algorithm""
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Investigation of Variability in Cognitive State Assessment based on Electroencephalogram-derived FeaturesCrossen, Samantha Lokelani 14 September 2011 (has links)
No description available.
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Machine Learning for Malware Detection in Network TrafficOmopintemi, A.H., Ghafir, Ibrahim, Eltanani, S., Kabir, Sohag, Lefoane, Moemedi 19 December 2023 (has links)
No / Developing advanced and efficient malware detection systems is
becoming significant in light of the growing threat landscape in cybersecurity. This work aims to tackle the enduring problem of identifying malware and protecting digital assets from cyber-attacks.
Conventional methods frequently prove ineffective in adjusting
to the ever-evolving field of harmful activity. As such, novel approaches that improve precision while simultaneously taking into
account the ever-changing landscape of modern cybersecurity problems are needed. To address this problem this research focuses on
the detection of malware in network traffic. This work proposes
a machine-learning-based approach for malware detection, with
particular attention to the Random Forest (RF), Support Vector Machine (SVM), and Adaboost algorithms. In this paper, the model’s
performance was evaluated using an assessment matrix. Included
the Accuracy (AC) for overall performance, Precision (PC) for positive predicted values, Recall Score (RS) for genuine positives, and
the F1 Score (SC) for a balanced viewpoint. A performance comparison has been performed and the results reveal that the built model
utilizing Adaboost has the best performance. The TPR for the three
classifiers performs over 97% and the FPR performs < 4% for each of
the classifiers. The created model in this paper has the potential to
help organizations or experts anticipate and handle malware. The
proposed model can be used to make forecasts and provide management solutions in the network’s everyday operational activities.
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Improve Nano-Cube Detection Performance Using A Method of Separate Training of Sample SubsetsNagavelli, Sai Krishnanand January 2016 (has links)
No description available.
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Automatické detekce obličeje a jeho jednotlivých částí / Automatic face and facial feature detectionKrolikowski, Martin January 2008 (has links)
The master thesis presents an overview of face detection task in color, static images. Face detection term is posed in the context of various branches. Main concepts of face detection and also their relationships are described. Individual approaches are divided into groups and then define in turn. In the thesis is in detail described algorithm AdaBoost, which is selected on the basis of its properties. Especially speed of computation and good detection results are key features. In the scope of this work Viola-Jones detector was implemented. This detector was trained with face pictures from public accessible database. Combination of Viola-Jones detector with simple color detector is described. In the thesis is also presented experiment approach to facial features detection.
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