面向分布式计算和网络的大层次元分类器的自动生成

J. Abawajy, A. Kelarev, M. Chowdhury
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引用次数: 5

摘要

本文对一种新的分类器结构进行了实例研究。这些分类器被称为自动生成多级元分类器(AGMLMC)。该构造以一种新的方式组合了不同的元分类器来创建一个统一的系统。这种原始结构可以自动生成具有大级别的分类器。不同的元分类器被合并为顶层另一个元分类器的低级组成部分。它适用于分布式计算和网络。AGMLMC分类器是由许多可以并行操作的部分组成的统一分类器。这使得在分布式应用程序中采用它们变得很容易。本文介绍了一种新的分类器结构,并对其性能进行了实验研究。我们将在检测和过滤网络钓鱼电子邮件的特殊情况下对其有效性进行案例研究。对于这样的大型分布式分类系统,这可能是一个重要的应用领域。在网络钓鱼邮件检测和过滤的案例研究中,我们的实验研究了将多个元分类器组合成一个AGMLMC分类器的有效性。结果表明,与基本分类器和简单元分类器相比,具有大层次的新分类器取得了更好的性能。这表明,如果在系统中包含不同的元分类器,则可以应用新技术来提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Generation of Meta Classifiers with Large Levels for Distributed Computing and Networking
This paper is devoted to a case study of a new construction of classifiers. These classifiers are called automatically generated multi-level meta classifiers, AGMLMC. The construction combines diverse meta classifiers in a new way to create a unified system. This original construction can be generated automatically producing classifiers with large levels. Different meta classifiers are incorporated as low-level integral parts of another meta classifier at the top level. It is intended for the distributed computing and networking. The AGMLMC classifiers are unified classifiers with many parts that can operate in parallel. This make it easy to adopt them in distributed applications. This paper introduces new construction of classifiers and undertakes an experimental study of their performance. We look at a case study of their effectiveness in the special case of the detection and filtering of phishing emails. This is a possible important application area for such large and distributed classification systems. Our experiments investigate the effectiveness of combining diverse meta classifiers into one AGMLMC classifier in the case study of detection and filtering of phishing emails. The results show that new classifiers with large levels achieved better performance compared to the base classifiers and simple meta classifiers classifiers. This demonstrates that the new technique can be applied to increase the performance if diverse meta classifiers are included in the system.
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