Biblio
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Deep Learning Based Identification of DDoS Attacks in Industrial Application. 2020 Fourth World Conference on Smart Trends in Systems, Security and Sustainability (WorldS4). :190–196.
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2020. Denial of Service (DoS) attacks are very common type of computer attack in the world of internet today. Automatically detecting such type of DDoS attack packets & dropping them before passing through is the best prevention method. Conventional solution only monitors and provide the feedforward solution instead of the feedback machine-based learning. A Design of Deep neural network has been suggested in this paper. In this approach, high level features are extracted for representation and inference of the dataset. Experiment has been conducted based on the ISCX dataset for year 2017, 2018 and CICDDoS2019 and program has been developed in Matlab R17b using Wireshark.
XAI-Driven Explainable Multi-view Game Cheating Detection. 2020 IEEE Conference on Games (CoG). :144–151.
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2020. Online gaming is one of the most successful applications having a large number of players interacting in an online persistent virtual world through the Internet. However, some cheating players gain improper advantages over normal players by using illegal automated plugins which has brought huge harm to game health and player enjoyment. Game industries have been devoting much efforts on cheating detection with multiview data sources and achieved great accuracy improvements by applying artificial intelligence (AI) techniques. However, generating explanations for cheating detection from multiple views still remains a challenging task. To respond to the different purposes of explainability in AI models from different audience profiles, we propose the EMGCD, the first explainable multi-view game cheating detection framework driven by explainable AI (XAI). It combines cheating explainers to cheating classifiers from different views to generate individual, local and global explanations which contributes to the evidence generation, reason generation, model debugging and model compression. The EMGCD has been implemented and deployed in multiple game productions in NetEase Games, achieving remarkable and trustworthy performance. Our framework can also easily generalize to other types of related tasks in online games, such as explainable recommender systems, explainable churn prediction, etc.
Securing the Industrial Internet of Things for Critical Infrastructure (IIoT-CI). 2019 IEEE 5th World Forum on Internet of Things (WF-IoT). :70–75.
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2019. The Industrial Internet of Things (IIoT) is a term applied to the industrial application of M2M devices. The security of IIoT devices is a difficult problem and where the automation of critical infrastructure is intended, risks may be unacceptable. Remote attacks are a significant threat and solutions are sought which are secure by default. The problem space may be analyzed using threat modelling methods. Software Defined Networks (SDN) provide mitigation for remote attacks which exploit local area networks. Similar concepts applied to the WAN may improve availability and performance and provide granular data on link characteristics. Schemes such as the Software Defined Perimeter allow IIoT devices to communicate on the Internet, mitigating avenues of remote attack. Finally, separation of duties at the IIoT device may prevent attacks on the integrity of the device or the confidentiality and integrity of its communications. Work remains to be done on the mitigation of DDoS.