Comprehensive pKa Data Augmentation from Limited Real Data through an Engineered Models-Quantum Framework
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Physics > Chemical Physics
Title:Comprehensive pKa Data Augmentation from Limited Real Data through an Engineered Models-Quantum Framework
Abstract:Proton dissociation constants (pKa) are critical for functional molecule discovery and molecular modeling. Building on iBonD, the largest experimental pKa database established, we and other researchers have developed several methods including machine-learning-based empirical prediction and high-accuracy energy calculations. Despite this foundation, the rapid augmentation of high-quality pKa data remains fundamentally constrained. As part of this work, we performed large-scale regression-based pKa prediction on unlabeled molecular datasets using a collection of extensively optimized machine-learning models. The results indicate that, since the feature distributions of unlabeled molecular datasets, the pKa data distribution approximates normality, with extreme scarcity of tail-region samples. Although such augmentation is highly valuable for improving overall data availability and predictive modeling, it remains insufficient for efficiently discovering molecules with broad-spectrum pKa properties. To address this, we explore the targeted generation of molecules with sparse pKa properties from the vast chemical space. Given that traditional continuous latent space VAE-RNN methods for molecular generation suffer from insufficient stability and fail to demonstrate clear advantages in complementing sparse data, we design and implement a quantum-assisted sparse-pKa molecular generation. Feasibility is validated on a simulated quantum annealer, and superior extreme-value sampling is further achieved on physical coherent Ising machines (CIMs). (to be continued)
| Subjects: | Chemical Physics (physics.chem-ph); Artificial Intelligence (cs.AI); Machine Learning (cs.LG) |
| MSC classes: | 68T05, 81P68, 92E10 |
| ACM classes: | I.2.6; J.2 |
| Cite as: | arXiv:2606.17077 [physics.chem-ph] |
| (or arXiv:2606.17077v1 [physics.chem-ph] for this version) | |
| https://doi.org/10.48550/arXiv.2606.17077
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