模型检测是基于深度信念网络的serangan和sh - brute - force

Constantin menteng, A. Setyanto, H. Fatta
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引用次数: 0

摘要

深度信念网络是利用受限玻尔兹曼机(RBM)堆栈或自动编码器的深度学习模型。自编码器是一种具有相同输入输出的神经网络模型。自动编码器学习输入数据并尝试重构输入数据。本研究的解决方案可以为DBN提供多个测试,如检测召回率和更好的分类精度。通过使用这个算法,希望我们作为用户能够克服经常发生的问题,比如我们的账户和公司内部的暴力攻击。结果表明,DBN实验的准确率为90.27%,查全率为90.27%,进动率为91.67%,F1-score为90.51%。研究结果表明,使用深度信念网络的深度模型,用于暴力攻击检测的准确率、召回率、岁差和f1-score数据值是相当有效的。
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MODEL DETEKSI SERANGAN SSH-BRUTE FORCE BERDASARKAN DEEP BELIEF NETWORK
Deep Belief Networks are deep learning models that utilize stacks of Restricted Boltzmann Machines (RBM) or sometimes Autoencoders. Autoencoder is a neural network model that has the same input and output. The autoencoder learns the input data and attempts to reconstruct the input data. The solution in this study can provide several tests on DBN such as detecting recall accuracy and better classification precision. By using this algorithm, it is hoped that we as users can overcome problems that occur quite often such as brute force attacks in our accounts and within the company. And the results obtained from this DBN experiment are with an accuracy value of 90.27%, recall 90.27%, precession 91.67%, F1-score 90.51%. The results of this study are the data values of accuracy, recall, precession, and f1-score data used to detect brute force attacks are quite efficient using the deep model of the deep belief network.  
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PERANCANGAN APLIKASI BIMBINGAN BELAJAR ONLINE KOMPARASI ALGORITMA NAIVE BAYES DAN K-NEAREST NEIGHBOR PADA ANALISIS SENTIMEN TERHADAP ULASAN PENGGUNA APLIKASI TOKOPEDIA RANCANG BANGUN SISTEM DETEKSI KEMATANGAN BUAH KELAPA SAWIT BERDASARKAN DETEKSI WARNA MENGGUNAKAN ALGORITMA K-NN SMARTBOX PENERIMA PAKET BELANJA ONLINE PERANCANGAN APLIKASI KAMUS DIGITAL BAHASA LAWANGAN – BAHASA INDONESIA
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