钓鱼网站分类器采用多项式神经网络中的遗传算法

S. Gayathri
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引用次数: 4

摘要

遗传算法是当今人工智能技术不断发展的一组计算科学数学模型。这些算法通过对特定问题的解进行编码,采用带有简单染色体重组算子的数据结构来保存关键信息。遗传算法是一种优化算法,应用于遗传算法的问题范围非常广泛。遗传算法的全局搜索包括选择、交叉和变异等基本原理。数据结构、算法和人类大脑的灵感被发现用于数据分类和使用神经网络工作的学习。人工智能(AI)是一个领域,很多任务都是由人类自然完成的。当人工智能的传统方法在计算机上使用时,它被证明是一项复杂的任务。应用神经网络技术将创建一个规则的内部结构,通过该结构,程序可以通过示例学习,对不同的输入进行分类,而不是挖掘技术。本文提出了一种基于遗传算法的改进多项式神经网络的钓鱼网站分类器。
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Phishing websites classifier using polynomial neural networks in genetic algorithm
Genetic Algorithms are group of mathematical models in computational science by exciting evolution in AI techniques nowadays. These algorithms preserve critical information by applying data structure with simple chromosome recombination operators by encoding solution to a specific problem. Genetic algorithms they are optimizer, in which range of problems applied to it are quite broad. Genetic Algorithms with its global search includes basic principles like selection, crossover and mutation. Data structures, algorithms and human brain inspiration are found for classification of data and for learning which works using Neural Networks. Artificial Intelligence (AI) it is a field, where so many tasks performed naturally by a human. When AI conventional methods are used in a computer it was proved as a complicated task. Applying Neural Networks techniques will create an internal structure of rules by which a program can learn by examples, to classify different inputs than mining techniques. This paper proposes a phishing websites classifier using improved polynomial neural networks in genetic algorithm.
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