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3 months ago

Parametric Matrix Models

Patrick Cook Danny Jammooa Morten Hjorth-Jensen Daniel D. Lee Dean Lee

Parametric Matrix Models

Abstract

We present a general class of machine learning algorithms called parametric matrix models. In contrast with most existing machine learning models that imitate the biology of neurons, parametric matrix models use matrix equations that emulate physical systems. Similar to how physics problems are usually solved, parametric matrix models learn the governing equations that lead to the desired outputs. Parametric matrix models can be efficiently trained from empirical data, and the equations may use algebraic, differential, or integral relations. While originally designed for scientific computing, we prove that parametric matrix models are universal function approximators that can be applied to general machine learning problems. After introducing the underlying theory, we apply parametric matrix models to a series of different challenges that show their performance for a wide range of problems. For all the challenges tested here, parametric matrix models produce accurate results within an efficient and interpretable computational framework that allows for input feature extrapolation.

Benchmarks

BenchmarkMethodologyMetrics
image-classification-on-emnist-balancedConvolutional PMM (Parametric Matrix Model)
Accuracy: 85.95
Trainable Parameters: 349172
image-classification-on-emnist-balancedPMM (Parametric Matrix Model)
Accuracy: 81.57
Trainable Parameters: 13792
image-classification-on-fashion-mnistPMM (Parametric Matrix Model)
Accuracy: 88.58
Percentage error: 11.42
Trainable Parameters: 16744
image-classification-on-fashion-mnistConvolutional PMM (Parametric Matrix Model)
Accuracy: 90.89
Percentage error: 9.11
Trainable Parameters: 278280
image-classification-on-mnistPMM (Parametric Matrix Model)
Accuracy: 97.38
Percentage error: 2.62
Trainable Parameters: 4990
image-classification-on-mnistConvolutional PMM (Parametric Matrix Model)
Accuracy: 98.99
Percentage error: 1.01
Trainable Parameters: 129416

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