用机器学习和深度学习方法检测网络流量异常的大数据分析

V. Narayan, D. Shanmugapriya
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引用次数: 1

摘要

信息对于任何组织通过任何网络进行通信都是至关重要的。随着互联网使用率和网民数量的增加,网络威胁也随之增加。网络中的网络攻击改变了各个系统的流量。针对不同类型的网络攻击或异常策略,已经开发了异常检测技术。传统的ADS保护通过网络传输的信息或网络攻击者。将机器对异常的稳定预防和深度学习算法应用于网络安全。大数据解决方案可以在短时间内处理大量数据。大数据管理是对海量结构化数据、半结构化数据和非结构化数据的组织和操作,但在训练过程中没有处理数据不平衡问题。基于大数据的机器和深度学习异常检测算法涉及到正常交通流和异常交通流之间决策边界的分类。不同的算法有效地提高了异常检测的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Data Analytics With Machine Learning and Deep Learning Methods for Detection of Anomalies in Network Traffic
Information is vital for any organization to communicate through any network. The growth of internet utilization and the web users increased the cyber threats. Cyber-attacks in the network change the traffic flow of each system. Anomaly detection techniques have been developed for different types of cyber-attack or anomaly strategies. Conventional ADS protect information transferred through the network or cyber attackers. The stable prevention of anomalies by machine and deep-learning algorithms are applied for cyber-security. Big data solutions handle voluminous data in a short span of time. Big data management is the organization and manipulation of huge volumes of structured data, semi-structured data and unstructured data, but it does not handle a data imbalance problem during the training process. Big data-based machine and deep-learning algorithms for anomaly detection involve the classification of decision boundary between normal traffic flow and anomaly traffic flow. The performance of anomaly detection is efficiently increased by different algorithms.
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