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Bias-tailored quantum LDPC codes

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arxiv 2202.01702 v3 pith:TNFTKOBT submitted 2022-02-03 quant-ph

Bias-tailored quantum LDPC codes

classification quant-ph
keywords codesbias-tailorednoisecodequantumbias-tailoringerrorlifted
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Bias-tailoring allows quantum error correction codes to exploit qubit noise asymmetry. Recently, it was shown that a modified form of the surface code, the XZZX code, exhibits considerably improved performance under biased noise. In this work, we demonstrate that quantum low density parity check codes can be similarly bias-tailored. We introduce a bias-tailored lifted product code construction that provides the framework to expand bias-tailoring methods beyond the family of 2D topological codes. We present examples of bias-tailored lifted product codes based on classical quasi-cyclic codes and numerically assess their performance using a belief propagation plus ordered statistics decoder. Our Monte Carlo simulations, performed under asymmetric noise, show that bias-tailored codes achieve several orders of magnitude improvement in their error suppression relative to depolarising noise.

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