论文标题
基于机器学习算法的云环境中的特征选择和入侵检测
Feature Selection and Intrusion Detection in Cloud Environment based on Machine Learning Algorithms
论文作者
论文摘要
计算机网络上攻击和渗透器的特征和行为方式通常非常困难,还需要专家;计算机网络的进步,攻击和渗透的数量也在增加。实际上,来自专家的知识会随着时间的流逝而失去其价值,必须更新并提供给系统,这使得专家一直感到需要。在机器学习技术中,从数据本身中提取知识,从而降低了专家的作用。用于检测入侵的各种方法,例如统计模型,安全系统方法,神经网络等,都削弱了它使用网络中旋转的信息数据包的所有特征进行入侵检测。同样,大量信息和不可想象的状态空间也是检测入侵的重要问题。因此,与以前相比,需要自动识别新的可疑模式,以尝试使用更有效的方法入侵更低的成本和更高的性能。这项研究的目的是提供一种基于入侵检测系统及其各种体系结构的新方法,旨在提高云计算中入侵检测的准确性。关键字:入侵检测,特征选择,分类算法,机器学习,神经网络。
Characteristics and way of behavior of attacks and infiltrators on computer networks are usually very difficult and need an expert In addition; the advancement of computer networks, the number of attacks and infiltrations are also increasing. In fact, the knowledge coming from an expert will lose its value over time and must be updated and made available to the system and this makes the need for the expert person always felt. In machine learning techniques, knowledge is extracted from the data itself which has diminished the role of the expert. Various methods used to detect intrusions, such as statistical models, safe system approach, neural networks, etc., all weaken the fact that it uses all the features of an information packet rotating in the network for intrusion detection. Also, the huge volume of information and the unthinkable state space is also an important issue in the detection of intrusion. Therefore, the need for automatic identification of new and suspicious patterns in an attempt for intrusion with the use of more efficient methods Lower cost and higher performance is needed more than before. The purpose of this study is to provide a new method based on intrusion detection systems and its various architectures aimed at increasing the accuracy of intrusion detection in cloud computing. Keywords : intrusion detection, feature Selection, classification Algorithm, machine learning, neural network.