Publications in Trustworthy Machine Learning and Cybersecurity
My research examines how probabilistic models, generative systems, uncertainty, reproducible experimentation, and downstream evaluation can support dependable cybersecurity and scientific-computing applications.
Published Peer-Reviewed Work
Research that has completed peer review and is available through established scholarly publishers.
Towards Reliable and Interference-Aware CSI Feedback with Bayesian Neural Network
Proceedings of the International Symposium on Intelligent Computing and Networking 2025 · Lecture Notes in Networks and Systems, Volume 1698 · Springer
Presents a Bayesian neural-network framework for reliable channel-state-information feedback. The framework combines CSI compression and reconstruction with uncertainty estimation to detect interference and improve feedback reliability under non-ideal transmission conditions.
Masked Autoencoder for Data Recovery in Polymer Research: Mitigating Data Integrity Threats
2024 Cyber Awareness and Research Symposium · IEEE
Introduces an autoencoder-based recovery method that uses random masks to reconstruct missing or corrupted polymer-research data. The approach was evaluated on cloud-point-temperature datasets and demonstrated stronger recovery performance than conventional statistical-imputation methods.
Submitted Research
Completed scholarly work formally submitted for peer review. Submission does not imply acceptance or publication.
GenCyberSynth: A Unified Comparative Benchmark for Synthetic Malware Images
Submitted to the 2026 IEEE Global Communications Conference, Communication and Information Systems Security Symposium
Presents GenCyberSynth as a unified and reproducible benchmark for comparing synthetic malware-image generators under controlled conditions. The framework standardizes data preparation, train–synth–evaluate workflows, random seeds, synthetic budgets, leakage-safe testing, real-only baselines, downstream utility metrics, and structured result aggregation.
Completed Manuscripts Ready for Submission
Completed research manuscripts in the GenCyberSynth publication series. These works are ready for submission but are not presented as submitted, accepted, or published.
Conditional Generation Done Right: External Conditioning Audits for Synthetic Malware Images
Completed manuscript · Preparing for submission
Introduces an external conditioning audit for class-conditional malware-image generators. Requested generation labels are compared against predictions from independent real-only classifiers to measure conditioning accuracy, label leakage, confusion patterns, and predicted-class collapse.
When Does Synthetic Data Help Malware Classification? Utility, Class Imbalance, and Failure Modes Across Augmentation Regimes
Completed manuscript · Preparing for submission
Studies when GAN-, VAE-, and diffusion-generated malware images improve downstream classification and when they harm it. The paper compares balanced all-class augmentation with a controlled minority-heavy regime across multiple budgets and random seeds.
Selective Synthetic Data Policies for Malware Classification: Allocation, Filtering, and Acceptance Rules Under Utility Constraints
Completed manuscript · Preparing for submission
Investigates which generated malware samples should be retained, filtered, ranked, or allocated before downstream classifier training. The work compares fixed budgets, keep-all augmentation, strict-confidence filtering, Top-k selection, and adaptive class-repair allocation.
GenCyberSynth Research Progression
The four-paper sequence moves from benchmark construction to conditional reliability, downstream utility, and policy-controlled synthetic-data selection.
Unified Benchmark
Establishes the reproducible evaluation framework, controlled baselines, generator comparison, and utility-first protocol.
Conditioning Audits
Tests whether class-conditioned samples are externally recognized as the malware classes they were requested to represent.
Utility and Failure Modes
Determines when synthetic augmentation helps, when it hurts, and how results change across budgets and class-imbalance regimes.
Selective Policies
Evaluates filtering, ranking, acceptance, and allocation policies for using synthetic samples under practical utility constraints.
Research Built Around Defensible Evidence
My publication work connects probabilistic modeling, synthetic cybersecurity data, uncertainty, reproducibility, downstream utility, failure analysis, and the engineering infrastructure required to produce trustworthy scientific conclusions.