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DRTHIS: Deep ransomware threat hunting and intelligence system at the fog layer

机译:DRTHIS:雾层的深度勒索软件威胁搜寻和情报系统

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Ransomware, a malware designed to encrypt data for ransom payments, is a potential threat to fog layer nodes as such nodes typically contain considerably amount of sensitive data. The capability to efficiently hunt abnormalities relating to ransomware activities is crucial in the timely detection of ransomware. In this paper, we present our Deep Ransomware Threat Hunting and Intelligence System (DRTHIS) to distinguish ransomware from goodware and identify their families. Specifically, DRTHIS utilizes Long Short-Term Memory (LSTM) and Convolutional Neural Network (CNN), two deep learning techniques, for classification using the softmax algorithm. We then use 220 Locky, 220 Cerber and 220 TeslaCrypt ransomware samples, and 219 goodware samples, to train DRTHIS. In our evaluations, DRTHIS achieves an F-measure of 99.6% with a true positive rate of 97.2% in the classification of ransomware instances. Additionally, we demonstrate that DRTHIS is capable of detecting previously unseen ransomware samples from new ransomware families in a timely and accurate manner using ransomware from the CryptoWall, Torrentlocker and Sage families. The findings show that 99% of CryptoWall samples, 75% of TorrentLocker samples and 92% of Sage samples are correctly classified. (C) 2018 Elsevier B.V. All rights reserved.
机译:勒索软件是一种旨在加密数据以勒索赎金的恶意软件,它可能对雾层节点构成潜在威胁,因为此类节点通常包含大量敏感数据。有效地发现与勒索软件活动有关的异常的能力对于及时检测勒索软件至关重要。在本文中,我们介绍了我们的深度勒索软件威胁搜寻和情报系统(DRTHIS),以区分勒索软件和好软件并确定其家族。具体来说,DRTHIS利用长短期记忆(LSTM)和卷积神经网络(CNN)这两种深度学习技术,使用softmax算法进行分类。然后,我们使用220个Locky,220个Cerber和220个TeslaCrypt勒索软件样本以及219个好软件样本来训练DRTHIS。在我们的评估中,DRTHIS在勒索软件实例的分类中实现了99.6%的F测度,真正的阳性率为97.2%。此外,我们证明DRTHIS能够使用CryptoWall,Torrentlocker和Sage系列勒索软件及时,准确地检测到来自新勒索系列的勒索软件样本。调查结果显示,正确分类了99%的CryptoWall样本,75%的TorrentLocker样本和92%的Sage样本。 (C)2018 Elsevier B.V.保留所有权利。

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