English

Learning with Known Operators reduces Maximum Training Error Bounds

Machine Learning 2020-12-29 v1 Computer Vision and Pattern Recognition Medical Physics Machine Learning

Abstract

We describe an approach for incorporating prior knowledge into machine learning algorithms. We aim at applications in physics and signal processing in which we know that certain operations must be embedded into the algorithm. Any operation that allows computation of a gradient or sub-gradient towards its inputs is suited for our framework. We derive a maximal error bound for deep nets that demonstrates that inclusion of prior knowledge results in its reduction. Furthermore, we also show experimentally that known operators reduce the number of free parameters. We apply this approach to various tasks ranging from CT image reconstruction over vessel segmentation to the derivation of previously unknown imaging algorithms. As such the concept is widely applicable for many researchers in physics, imaging, and signal processing. We assume that our analysis will support further investigation of known operators in other fields of physics, imaging, and signal processing.

Keywords

Cite

@article{arxiv.1907.01992,
  title  = {Learning with Known Operators reduces Maximum Training Error Bounds},
  author = {Andreas K. Maier and Christopher Syben and Bernhard Stimpel and Tobias Würfl and Mathis Hoffmann and Frank Schebesch and Weilin Fu and Leonid Mill and Lasse Kling and Silke Christiansen},
  journal= {arXiv preprint arXiv:1907.01992},
  year   = {2020}
}

Comments

Paper conditionally accepted in Nature Machine Intelligence

R2 v1 2026-06-23T10:11:23.009Z