qc-kmeans: A Quantum Compressive K-Means Algorithm for NISQ Devices
By: Pedro Chumpitaz-Flores , My Duong , Ying Mao and more
Potential Business Impact:
Helps computers group data using fewer quantum bits.
Clustering on NISQ hardware is constrained by data loading and limited qubits. We present \textbf{qc-kmeans}, a hybrid compressive $k$-means that summarizes a dataset with a constant-size Fourier-feature sketch and selects centroids by solving small per-group QUBOs with shallow QAOA circuits. The QFF sketch estimator is unbiased with mean-squared error $O(\varepsilon^2)$ for $B,S=Θ(\varepsilon^{-2})$, and the peak-qubit requirement $q_{\text{peak}}=\max\{D,\lceil \log_2 B\rceil + 1\}$ does not scale with the number of samples. A refinement step with elitist retention ensures non-increasing surrogate cost. In Qiskit Aer simulations (depth $p{=}1$), the method ran with $\le 9$ qubits on low-dimensional synthetic benchmarks and achieved competitive sum-of-squared errors relative to quantum baselines; runtimes are not directly comparable. On nine real datasets (up to $4.3\times 10^5$ points), the pipeline maintained constant peak-qubit usage in simulation. Under IBM noise models, accuracy was similar to the idealized setting. Overall, qc-kmeans offers a NISQ-oriented formulation with shallow, bounded-width circuits and competitive clustering quality in simulation.
Similar Papers
qc-kmeans: A Quantum Compressive K-Means Algorithm for NISQ Devices
Quantum Physics
Helps computers group data using fewer qubits.
Provably faster randomized and quantum algorithms for $k$-means clustering via uniform sampling
Quantum Physics
Speeds up sorting big data into groups.
HARLI CQUINN: Higher Adjusted Randomness with Linear In Complexity QUantum INspired Networks for K-Means
Quantum Physics
Makes computers sort data faster and better.