2022
DOI: 10.1155/2022/8515836
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A SYN Flood Attack Detection Method Based on Hierarchical Multihead Self-Attention Mechanism

Abstract: Existing SYN flood attack detection methods have obvious problems such as poor feature selectivity, weak generalization ability, easy overfitting, and low accuracy during training. In the paper, we present a SYN flood attack detection method based on the Hierarchical Multihad Self-Attention (HMHSA) mechanism. First, we use one-hot encoding and normalization to preprocess traffic data. Then the preprocessed traffic data is transmitted to the Feature-based Multihead Self-Attention (FBMHA) layer for feature selec… Show more

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Cited by 5 publications
(2 citation statements)
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“…The study did not conduct a thorough analysis of the MSA unit as it has already been extensively studied in the current literature (e.g., Zhou et al, 2022 ). The study conducted by Guo and Gao ( 2022 ) employed a unit comprised of H ′ heads to evaluate the similarity between a query and its corresponding keys, taking into account the allocated weight for each value. In addition, the layer normalization module is utilized to compute the mean and variance necessary for normalizing the inputs to the neurones within a layer during a single training instance (Ba et al, 2016 ).…”
Section: Methodsmentioning
confidence: 99%
“…The study did not conduct a thorough analysis of the MSA unit as it has already been extensively studied in the current literature (e.g., Zhou et al, 2022 ). The study conducted by Guo and Gao ( 2022 ) employed a unit comprised of H ′ heads to evaluate the similarity between a query and its corresponding keys, taking into account the allocated weight for each value. In addition, the layer normalization module is utilized to compute the mean and variance necessary for normalizing the inputs to the neurones within a layer during a single training instance (Ba et al, 2016 ).…”
Section: Methodsmentioning
confidence: 99%
“…Three-way handshaking establishes connection reliability in TCP communication approach between client and server [10] that used three types of packets. Once the sender needs to create a connection with the receiver, syn request will be transmitted to the receiver side.…”
Section: Introductionmentioning
confidence: 99%