GLADS: A global-local attention data selection model for multimodal multitask encrypted traffic classification of IoT.

Jianbang Dai,Xiaolong Xu,Fu Xiao

Comput. Networks(2023)

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摘要
With the rapid development of the Internet of Things (IoT), numerous of IoT devices and different characteristics in IoT traffic patterns need traffic classification to enable many important applications. Deep-learning-based (DL -based) traffic methods have gained increasing attention due to their high accuracy and because manual feature extraction is not needed. Furthermore, seek a lightweight, multitask methods that supports a "performance -speed" trade-off. Thus, we proposed the 0.11 M global-local attention data selection (GLADS) model. The core of the GLADS model includes an "indicator" mechanism and a "local + global" framework. The "indicator" mechanism is a completely different method for handling multimodal input that allows the model to efficiently extract features from multimodal input with a single-modal-like approach. The "local + global" framework for the "performance-speed" trade-off includes a "local" part to obtain the features of each patch in the model input and a Global-Local Attention mechanism in the "global" part outputs the classification results under all possible lengths. Tests on the ISCX-VPN-2016, ISCX-Tor-2016, USTC-TFC-2016, and TON_IoT datasets show that GLADS achieves better performance than several state-of-the-art baselines, ranging from 2.42% to 7.76%. Furthermore, we also propose the "indicator," which allows the model to simply cope with multimodal input. Based on global -local attention, we analyze the relation of the input section and model performance in detail.
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关键词
traffic classification,iot,multimodal multitask,global-local
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