Position Paper: Towards Transparent Machine Learning

Authors: Dustin Juliano

Abstract: Transparent machine learning is introduced as an alternative form of machine learning, where both the model and the learning system are represented in source code form. The goal of this project is to enable direct human understanding of machine learning models, giving us the ability to learn, verify, and refine them as programs. If solved, this technology could represent a best-case scenario for the safety and security of AI systems going forward.

Submitted to arXiv on 12 Nov. 2019

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