A New Centralized Detection-Based Process for Evaluating Anomalies and Analyzing the First Causes Using Machine Learning and Web Semantic

A. Lasbahani, Rachid Tahri, A. Jarrar, Y. Balouki
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Abstract

In the last decades, many works have been done to enhance data performances in the computer field. Data performance consists to describe all improvements which can be added to data traffic. More precisely, we are talking about techniques allowing improving the evaluation of big data using machine learning. Data evaluation is composed of several variables such as security, quality of service, data synchronization, scalability, and data structuring. In this work, we complete our proceedings done to supervise the continuity of technological evolution in terms of big data and safety. In other words, we aim to add brick to our previous processes to take into consideration the enhancement of the analysis of the causes generating frauds and intrusions preventing data traffic. To achieve this end, we increase current machine learning techniques with prior knowledge based on data thresholds set by experts in the first place. We also aim to integrate knowledge facilitating the interpretation of the causes causing all kinds of anomalies in the second place. Finally, our process will be endowed with the requirements to improve the rate of detection of anomalies and reduce human involvement operation.
基于机器学习和Web语义的一种新的基于集中检测的异常评估和第一原因分析过程
在过去的几十年里,计算机领域为提高数据性能做了许多工作。数据性能包括描述可以添加到数据流量中的所有改进。更准确地说,我们谈论的是使用机器学习改进大数据评估的技术。数据评估由多个变量组成,如安全性、服务质量、数据同步、可伸缩性和数据结构。在这项工作中,我们完成了在大数据和安全方面监督技术发展连续性的程序。换句话说,我们的目标是在之前的过程中添加砖块,以考虑增强对产生欺诈和入侵的原因的分析,从而防止数据流量。为了实现这一目标,我们首先使用基于专家设置的数据阈值的先验知识来增加当前的机器学习技术。我们还旨在整合知识,以便在第二方面解释导致各种异常的原因。最后,我们的流程将被赋予提高异常检出率和减少人为操作的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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