A hybrid model-based and learning-based approach for classification using limited number of training samples
Alireza Nooraiepour, Waheed U. Bajwa, Narayan B. Mandayam

TL;DR
This paper introduces HyPhyLearn, a hybrid classification approach that combines physics-based models and learning techniques to improve classification accuracy with limited training data by generating synthetic data and domain-adversarial training.
Contribution
The paper proposes a novel hybrid classification method that fuses physics-based models with learning-based classifiers to address limited data challenges.
Findings
Effective integration of synthetic data improves classification accuracy.
Hybrid approach reduces mismatch issues between models and data.
Demonstrates robustness with small training datasets.
Abstract
The fundamental task of classification given a limited number of training data samples is considered for physical systems with known parametric statistical models. The standalone learning-based and statistical model-based classifiers face major challenges towards the fulfillment of the classification task using a small training set. Specifically, classifiers that solely rely on the physics-based statistical models usually suffer from their inability to properly tune the underlying unobservable parameters, which leads to a mismatched representation of the system's behaviors. Learning-based classifiers, on the other hand, typically rely on a large number of training data from the underlying physical process, which might not be feasible in most practical scenarios. In this paper, a hybrid classification method -- termed HyPhyLearn -- is proposed that exploits both the physics-based…
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