一种面向有向突变的Web使用挖掘AIS算法

B. Helmi, Adel T. Rahmani
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引用次数: 5

摘要

提出了一种基于人工免疫系统的Web使用数据挖掘模型。该模型的一个新特征是定向突变,它避免了突变的随机性使系统不确定,并且该模型提供了一种新的方法来学习新的不可见抗原,而不是使用计算成本高的超突变。在提出的算法中,抗原中的每个基因都有自己的强度,因此强的基因被更有效地识别。实验结果表明,通过对Web日志数据等有噪声数据进行定向突变并考虑项目权重,可以提高提取抗体的质量,并利用新方法学习新抗原,可以将异常值渗透到抗体集合中。与自然免疫系统一样,基于免疫的学习的最大优势是它易于适应动态环境。通过引入这些新特征,提出了一种比同类模型更具有鲁棒性、更能适应Web等动态环境的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An AIS algorithm for Web usage mining with directed mutation
This paper presents a model based on artificial immune system for mining Web usage data. One of the new features of the proposed model is directed mutation that is designed to avoid the random nature of mutation that make the system nondeterministic, besides that the model presents a new method for learning new unseen antigens instead of using the hypermutation which its computational cost is high. In the proposed algorithm each gene in the antigen has its own strength so strong genes are recognized more powerfully. Experimental results show that by exerting the directed mutation and considering item weights in noisy data like Web log data the quality of extracted antibodies are improved and by using the new method for learning new antigens, outliers canpsilat penetrate to set of antibodies. Like the natural immune system, the strongest advantage of immune based learning is its ease of adaptation to the dynamic environment. By introducing the new features, a model which is shown to be more robust and better able to adapt to the dynamic environments such as Web than the similar models is proposed.
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