K. Choi
12 Papers
K. Choi is an academic researcher. The author has contributed to research in topics: Computer science & QRS complex. The author has an hindex of 1, co-authored 1 publications.
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Papers
A Study on High-Speed Outlier Detection Method of Network Abnormal Behavior Data Using Heterogeneous Multiple Classifiers
TL;DR: A high-speed outlier detection method for a network dataset to customize the dataset in real-time for a continuously changing network environment and shows the same level of accuracy as a detection model using a large training dataset is proposed.
Zero Day Threat Detection Using Metric Learning Autoencoders
Dhruv Nandakumar,Robert Schiller,Christopher Samuel Redino,K. Choi,A. S. M Mus qur Rahman,E. Bowen,Marc Vucovich,Joe Nehila,M. Weeks,Aaron Shaha +9 more
- 01 Nov 2022
TL;DR: In this paper , the authors demonstrate an improvement upon a previously introduced methodology, which used a dual-autoencoder approach to identify zero-day threats (ZDTs) in network flow telemetry.
3
Lateral Movement Detection Using User Behavioral Analysis
Deepak Baijusharan Kushwaha,Dhruv Nandakumar,Akshay Kakkar,Sanvi Gupta,K. Choi,Christopher Samuel Redino,A. S. M Mus qur Rahman,Sabthagiri Saravanan Chandramohan,E. Bowen,M. Weeks,Aaron Shaha,Joe Nehila +11 more
TL;DR: A computationally efficient approach to near real-time Lateral Movement detection that is interpretable and robust to enterprise-scale data volumes and class imbalance is provided.
1
Foundational Models for Malware Embeddings Using Spatio-Temporal Parallel Convolutional Networks
Dhruv Nandakumar,Christopher Samuel Redino,K. Choi,Abdul Rahman,E. Bowen +4 more
TL;DR: In this article , the authors introduce a novel method that combines convolutional neural networks, standard graph embedding techniques, and a metric learning objective to extract meaningful information from network flow data and create strong embeddings characterizing malware behavior.
MIA-BAD: An Approach for Enhancing Membership Inference Attack and its Mitigation with Federated Learning
Sandip Roy,Sayyed Farid Ahamed,Devin Quinn,Marc Vucovich,Dhruv Nandakumar,K. Choi,Abdul Rahman,E. Bowen,Sachin Shetty +8 more
TL;DR: It is investigated that the MIA is more accurate when the attack dataset is generated batch-wise, and how the threat introduced with the proposed MIA-BAD approach can be mitigated with FL approaches.
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