Artificial Intelligence and Data Science, Parul University, Vadodara, 391760, India.
International Journal of Science and Research Archive, 2025, 15(01), 602-611
Article DOI: 10.30574/ijsra.2025.15.1.1041
Received on 23 February 2025; revised on 08 April 2025; accepted on 11 April 2025
This paper digs into the deep-rooted reproducibility mess in deep learning vulnerability detection. It all starts with the fact that studies keep giving off mixed signals—findings just don’t match up as you’d expect. There isn’t just a handful of ”success stories;” we need datasets that capture every angle, including those less-than-perfect moments, along with all the nitty-gritty details of experiments and how results are measured. In most cases, differences in data quality, the way models are put together, and which evaluation methods are used all add to these unpredictable outcomes. It seems that a lack of a one-size-fits-all approach is what’s really throwing a wrench in the works, especially when it comes to healthcare—where spotting vulnerabilities isn’t just academic but vital for patient safety and keeping data secure. Generally speaking, if reproducibility were on firmer ground, diagnostic systems powered by machine learning would earn more trust, leading to smarter, better decisions. By pushing for an open science style that values clarity and the free sharing of methods, this study hopes to spark more real-world collaboration and fresh ideas, paving the way for deep learning to work more reliably in our healthcare systems. Overall, settling on common evaluation practices might just be the key to smoothing out these reproducibility bumps and boosting the overall credibility and usefulness of these tech solutions in critical healthcare settings.
Reproducibility; Deep Learning; Vulnerability Detection; Open Science; AI Transparency; Cybersecurity; Benchmark Datasets; Experimental Standardization; Machine Learning Reliability; Model Validation
Preview Article PDF
Sanjay Agal, Nikunj Bhavsar, Krishna M Raulji and Kiran Macwan. Reproducibility crisis in deep learning vulnerability detection: An open science perspective. International Journal of Science and Research Archive, 2025, 15(01), 602-611. Article DOI: https://doi.org/10.30574/ijsra.2025.15.1.1041.
Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0







