首页> 外文会议>International Conference on Natural Computation, Fuzzy Systems and Knowledge Discovery >Analyst intuition inspired high velocity big data analysis using PCA ranked fuzzy k-means clustering with multi-layer perceptron (MLP) to obviate cyber security risk
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Analyst intuition inspired high velocity big data analysis using PCA ranked fuzzy k-means clustering with multi-layer perceptron (MLP) to obviate cyber security risk

机译:分析师的直觉启发了使用PCA排序的模糊k均值聚类和多层感知器(MLP)进行高速大数据分析,从而消除了网络安全风险

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The growing prevalence of cyber threats in the world are affecting every network user. Numerous security monitoring systems are being employed to protect computer networks and resources from falling victim to cyber-attacks. There is a pressing need to have an efficient security monitoring system to monitor the large network datasets generated in this process. A large network datasets representing Malware attacks have been used in this work to establish an expert system. The characteristics of attacker's IP addresses can be extracted from our integrated datasets to generate statistical data. The cyber security expert provides to the weight of each attribute and forms a scoring system by annotating the log history. We adopted a special semi supervise method to classify cyber security log into attack, unsure and no attack by first breaking the data into 3 cluster using Fuzzy K mean (FKM), then manually label a small data (Analyst Intuition) and finally train the neural network classifier multilayer perceptron (MLP) base on the manually labelled data. By doing so, our results is very encouraging as compare to finding anomaly in a cyber security log, which generally results in creating huge amount of false detection. The method of including Artificial Intelligence (AI) and Analyst Intuition (AI) is also known as AI2. The classification results are encouraging in segregating the types of attacks.
机译:全球网络威胁的日益流行正在影响每个网络用户。人们采用了许多安全监视系统来保护计算机网络和资源,使其免受网络攻击的侵害。迫切需要有一个高效的安全监视系统来监视在此过程中生成的大型网络数据集。代表恶意软件攻击的大型网络数据集已用于此项工作中,以建立专家系统。可以从我们的集成数据集中提取攻击者IP地址的特征,以生成统计数据。网络安全专家会提供每个属性的权重,并通过注释日志历史记录来形成评分系统。我们采用一种特殊的半监督方法,首先通过使用模糊K均值(FKM)将数据分为3个簇,然后手动标记一小块数据(分析师直觉),最后对神经网络进行训练,从而将网络安全日志分为攻击,不确定和无攻击。网络分类器多层感知器(MLP)基于手动标记的数据。通过这样做,与在网络安全日志中发现异常相比,我们的结果令人鼓舞,该异常通常会导致产生大量的错误检测。包含人工智能(AI)和分析者直觉(AI)的方法也称为AI2。分类结果在区分攻击类型方面令人鼓舞。

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