Semi-supervised machine learning approach for unknown malicious software detection

F. Bisio, P. Gastaldo, R. Zunino, S. Decherchi
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引用次数: 7

Abstract

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.
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未知恶意软件检测的半监督机器学习方法
归纳偏差是学习理论中的一个重要因素,因为它可以塑造学习机器的泛化特性。本文证明了偏置正则化可以作为归纳偏置来有效地解决半监督分类问题。因此,半监督学习被形式化为一个受无监督参考解影响的监督学习问题。该框架已在一个恶意软件检测问题上进行了测试。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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