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Parameter Setting for Deep Neural Networks Using Swarm Intelligence on Phishing Websites Classification

机译:使用群智能对网络钓鱼网站分类的深神经网络参数设置

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摘要

Over the past years, the application of deep neural networks in a wide range of areas is noticeably increasing. While many state-of-the-art deep neural networks are providing the performance comparable or in some cases even superior to humans, major challenges such as parameter settings for learning deep neural networks and construction of deep learning architectures still exist. The implications of those challenges have a significant impact on how a deep neural network is going to perform on a specific task. With the proposed method, presented in this paper, we are addressing the problem of parameter setting for a deep neural network utilizing swarm intelligence algorithms. In our experiments, we applied the proposed method variants to the classification task for distinguishing between phishing and legitimate websites. The performance of the proposed method is evaluated and compared against four different phishing datasets, two of which we prepared on our own. The results, obtained from the conducted empirical experiments, have proven the proposed approach to be very promising. By utilizing the proposed swarm intelligence based methods, we were able to statistically significantly improve the predictive performance when compared to the manually tuned deep neural network. In general, the improvement of classification accuracy ranges from 2.5% to 3.8%, while the improvement of F1-score reached even 24% on one of the datasets.
机译:在过去几年中,深度神经网络在广泛的区域中的应用明显增加。虽然许多最先进的深度神经网络正在提供性能可比或者在某些情况下甚至优于人类,但仍然存在学习深度神经网络的参数设置等主要挑战仍然存在。这些挑战对这些挑战的影响对深度神经网络如何在特定任务上进行了重大影响。利用本文提出的提出方法,我们正在解决利用群智能算法的深神经网络参数设置的问题。在我们的实验中,我们将所提出的方法变体应用于区分网络钓鱼和合法网站的分类任务。评估所提出的方法的性能,并比较四个不同的网络钓鱼数据集,其中两种我们自己准备了两种。从所进行的经验实验中获得的结果证明了提出的方法非常有前途。通过利用所提出的基于智能的方法,与手动调谐的深神经网络相比,我们能够统计显着提高预测性能。一般而言,分类精度的提高范围从2.5%到3.8%,而F1分数的改善甚至在其中一个数据集中达到了24%。

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