Quantum Parity Representations: Learnable Basis Discovery, Encoders, and Shadow Deployment
Sang Hyub Kim, Oliver Knitter, Jonathan Mei, Claudio Girotto, Masako Yamada, Martin Roetteler, Chi Chen (IonQ Inc.)

TL;DR
This paper introduces quantum parity representations that enable classical evaluation of quantum features, using hybrid quantum-classical training to improve basis discovery and encoding for various tasks.
Contribution
It presents novel methods for basis discovery and encoding in quantum parity features, enhancing classical evaluation and robustness across multiple datasets.
Findings
Significant accuracy improvements on binary parity tasks (up to 41.7%).
Learned parity basis is key to performance gains, not quantum inference complexity.
Effective dimensionality reduction with learned encodings on text benchmarks.
Abstract
We study parity features as representations that can be evaluated entirely classically once the binary or quantized input representation and parity words are fixed, particularly when labels depend on higher-order feature interactions or when discrete inference interfaces support perturbation robustness. A parity feature is a signed product over selected bits of a binary input: once the participating bits are known, evaluation requires no quantum resources. Reaching a useful parity representation requires solving two challenges. When the input is parity-ready (a meaningful binary string), the challenge is basis discovery: selecting useful parity words from a combinatorial search space. Otherwise, the challenge is encoding: constructing a binary vector on which parity computation is meaningful. We use hybrid quantum-classical training pipelines to address these: learnable Pauli word…
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