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Verifiable Deep Quantitative Group Testing

Published: December 8, 2025 | arXiv ID: 2512.07279v1

By: Shreyas Jayant Grampurohit, Satish Mulleti, Ajit Rajwade

Potential Business Impact:

Finds broken parts using fewer tests.

Business Areas:
A/B Testing Data and Analytics

We present a neural network-based framework for solving the quantitative group testing (QGT) problem that achieves both high decoding accuracy and structural verifiability. In QGT, the objective is to identify a small subset of defective items among $N$ candidates using only $M \ll N$ pooled tests, each reporting the number of defectives in the tested subset. We train a multi-layer perceptron to map noisy measurement vectors to binary defect indicators, achieving accurate and robust recovery even under sparse, bounded perturbations. Beyond accuracy, we show that the trained network implicitly learns the underlying pooling structure that links items to tests, allowing this structure to be recovered directly from the network's Jacobian. This indicates that the model does not merely memorize training patterns but internalizes the true combinatorial relationships governing QGT. Our findings reveal that standard feedforward architectures can learn verifiable inverse mappings in structured combinatorial recovery problems.

Country of Origin
🇮🇳 India

Page Count
11 pages

Category
Electrical Engineering and Systems Science:
Signal Processing