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Semi-supervised machine learning approach for unknown malicious software detection

机译:半监督机器学习方法,用于未知恶意软件检测

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摘要

Inductive bias represents an important factor in learning theory, as it can shape the generalization properties of a learning machine. This paper shows that biased regularization can be used as inductive bias to effectively tackle the semi-supervised classification problem. Thus, semi-supervised learning is formalized as a supervised learning problem biased by an unsupervised reference solution. The proposed framework has been tested on a malware-detection problem. Experimental results confirmed the effectiveness of the semi-supervised methodology presented in this paper.
机译:归纳偏差是学习理论中的重要因素,因为它可以影响学习机的泛化特性。本文表明,有偏正则化可以用作归纳偏见,以有效解决半监督分类问题。因此,将半监督学习形式化为无监督参考解决方案所偏向的监督学习问题。所提出的框架已针对恶意软件检测问题进行了测试。实验结果证实了本文提出的半监督方法的有效性。

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