Statistical Signal Processing for Quantum Error Mitigation
By: Kausthubh Chandramouli , Kelly Mae Allen , Christopher Mori and more
Potential Business Impact:
Makes quantum computers give correct answers.
In the noisy intermediate-scale quantum (NISQ) era, quantum error mitigation (QEM) is essential for producing reliable outputs from quantum circuits. We present a statistical signal processing approach to QEM that estimates the most likely noiseless outputs from noisy quantum measurements. Our model assumes that circuit depth is sufficient for depolarizing noise, producing corrupted observations that resemble a uniform distribution alongside classical bit-flip errors from readout. Our method consists of two steps: a filtering stage that discards uninformative depolarizing noise and an expectation-maximization (EM) algorithm that computes a maximum likelihood (ML) estimate over the remaining data. We demonstrate the effectiveness of this approach on small-qubit systems using IBM circuit simulations in Qiskit and compare its performance to contemporary statistical QEM techniques. We also show that our method scales to larger qubit counts using synthetically generated data consistent with our noise model. These results suggest that principled statistical methods can offer scalable and interpretable solutions for quantum error mitigation in realistic NISQ settings.
Similar Papers
Scalable Quantum Error Mitigation with Neighbor-Informed Learning
Quantum Physics
Fixes quantum computer mistakes using smart learning.
On the Importance of Error Mitigation for Quantum Computation
Quantum Physics
Fixes errors in quantum computers for faster results.
Sample-efficient quantum error mitigation via classical learning surrogates
Quantum Physics
Makes noisy quantum computers work better.