QARIMA: A Quantum Approach To Classical Time Series Analysis
Nishikanta Mohanty, Bikash K. Behera, Badshah Mukherjee, Pravat Dash

TL;DR
This paper introduces a quantum-inspired ARIMA methodology that leverages quantum techniques for lag discovery and parameter estimation, improving classical time series analysis with reduced meta-optimization overhead.
Contribution
It presents a novel quantum-assisted approach integrating swap-test-driven autocorrelation, variational quantum circuits, and weak-lag refinement for classical ARIMA modeling.
Findings
Outperforms classical ARIMA in out-of-sample error metrics.
Reduces meta-optimization overhead through quantum-inspired techniques.
Demonstrates effectiveness across environmental and industrial datasets.
Abstract
We present a quantum-inspired ARIMA methodology that integrates quantum-assisted lag discovery with fixed-configuration variational quantum circuits (VQCs) for parameter estimation and weak-lag refinement. Differencing and candidate lags are identified via swap-test-driven quantum autocorrelation (QACF) and quantum partial autocorrelation (QPACF), with a delayed-matrix construction that aligns quantum projections to time-domain regressors, followed by standard information-criterion parsimony. Given the screened orders (p,d,q), we retain a fixed VQC ansatz, optimizer, and training budget, preventing hyperparameter leakage, and deploy the circuit in two estimation roles: VQC-AR for autoregressive coefficients and VQC-MA for moving-average coefficients. Between screening and estimation, a lightweight VQC weak-lag refinement re-weights or prunes screened AR lags without altering (p,d,q).…
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