Enterprise AI Analysis
A Preliminary Agentic Framework for Matrix Deflation
Can a small team of agents peel a matrix apart, one rank-1 slice at a time? We propose an agentic approach to matrix deflation in which a solver Large Language Model (LLM) generates rank-1 Singular Value Decomposition (SVD) updates and a Vision Language Model (VLM) accepts or rejects each update and decides when to stop, eliminating fixed norm thresholds. Solver stability is improved through in-context learning (ICL) and types of row/column permutations that expose visually coherent structure. We evaluate on DIGITS (8×8), CIFAR-10 (32×32 grayscale), and synthetic (16×16) matrices with and without Gaussian noise. In the synthetic noisy case, where the true construction rank k is known, numerical deflation provides the noise target and our best agentic configuration differs by only 1.75 RMSE of the target. For DIGITS and CIFAR-10, targets are defined by deflating until the Frobenius norm reaches 10% of the original. Across all settings, our agent achieves competitive results, suggesting that fully agentic, threshold-free deflation is a viable alternative to classical numerical algorithms.
Authored by Paimon Goulart and Evangelos E. Papalexakis, University of California, Riverside
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Our agentic framework offers a novel, threshold-free approach to matrix deflation, promising significant operational efficiencies and deeper insights from complex datasets. By automating and optimizing matrix decomposition, enterprises can expect faster data processing, reduced manual intervention, and more accurate models.
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Enterprise Process Flow
| Dataset | Permutation | ICL | Diff to NumPy RMSE | Deflation Steps |
|---|---|---|---|---|
| Synthetic (Noisy) | GROUPNTEACH-BLOCK | 1 | 7.96 | 10.52 |
| Synthetic (Noisy) | None | 2 | 1.75 | 13.76 |
| Synthetic (Noisy) | Sort | 4 | 4.69 | 13.54 |
| Digits | GROUPNTEACH-BLOCK | 5 | 21.09 | 3.25 |
| Digits | None | 5 | 26.25 | 3.23 |
| Digits | Sort | 5 | 16.43 | 3.75 |
| CIFAR-10 | GROUPNTEACH-BLOCK | 5 | 50.59 | 1.39 |
| CIFAR-10 | Sort | 5 | 31.54 | 2.39 |
Note: RMSE difference to numerical baseline residuals (NumPy). 'None' permutation for CIFAR-10/Digits repeatedly led to rejected rank-1 proposals, hence omitted from the table, as noted in the paper.
For synthetic noisy data, the agentic framework's best configuration (no permutation, ICL=2) achieved a remarkably low RMSE difference of just 1.75 above the numerical baseline. This highlights the framework's ability to maintain high accuracy while offering a flexible, threshold-free approach to matrix deflation.
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