基于自适应神经模糊的网络钓鱼智能检测参数优化

P. Barraclough, G. Sexton, M. A. Hossain, N. Aslam
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引用次数: 1

摘要

网络钓鱼攻击在过去几年中迅速增长。因此,提出了若干办法来解决这个问题。尽管通过机器学习技术提出了各种方法,如基于特征和基于黑名单的方法,但仍然缺乏准确性和实时性的解决方案。大多数应用机器学习技术的方法都需要调整参数来解决问题,但是参数很难调整到理想的输出。本研究提出一种参数整定架构,利用具有综合资料的自适应神经元-模糊推理系统,使系统效能最大化。进行了大量的实验。在十次交叉验证中,将数据分成训练对和测试对,并根据期望输出设置参数,准确率达到98.74%。与该领域的其他结果相比,我们的结果显示出更高的性能。本文提供了新的综合数据,新的参数整定方法,并在新的领域中应用了新的算法。由此可见,采用有效的数据和适当的参数整定可以提高自适应神经模糊系统的性能。结果将提供该领域的新知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter optimization for intelligent phishing detection using Adaptive Neuro-Fuzzy
Phishing attacks has been growing rapidly in the past few years. As a result, a number of approaches have been proposed to address the problem. Despite various approaches proposed such as feature-based and blacklist-based via machine learning techniques, there is still a lack of accuracy and real-time solution. Most approaches applying machine learning techniques requires that parameters are tuned to solve a problem, but parameters are difficult to tune to a desirable output. This study presents a parameter tuning framework, using adaptive Neuron-fuzzy inference system with comprehensive data to maximize systems performance. Extensive experiment was conducted. During ten-fold cross-validation, the data is split into training and testing pairs and parameters are set according to desirable output and have achieved 98.74% accuracy. Our results demonstrated higher performance compared to other results in the field. This paper contributes new comprehensive data, novel parameter tuning method and applied a new algorithm in a new field. The implication is that adaptive neuron-fuzzy system with effective data and proper parameter tuning can enhance system performance. The outcome will provide a new knowledge in the field.
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