ArXiv TLDR

A Multi-Level Integrity Evaluation Framework for Quantum Circuits under Controlled Anomaly Injection

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2604.26430

Ejaz Ahmed, Boshuai Ye, Syed Hamza Shah, Muhammad Azeem Akbar, Arif Ali Khan

quant-phcs.CR

TLDR

This paper introduces a multi-level integrity framework (SIS, OIS, IGS) for quantum circuits, showing single metrics are insufficient for validation.

Key contributions

  • Addresses incomplete assessment of quantum circuit correctness in the NISQ era.
  • Proposes a three-layer metric framework: Structural, Operational, and Interaction Graph Semantic-Logical Scores.
  • SIS captures structural properties, OIS behavioral divergence, and IGS models interaction patterns.
  • Reveals structural blind-spots where OIS (93.85%) and IGS (72.58%) detect anomalies missed by structural analysis.

Why it matters

In the NISQ era, ensuring quantum circuit integrity is crucial but challenging. This framework offers a more comprehensive validation approach by combining structural, behavioral, and interaction-level analyses, overcoming limitations of single-aspect methods. This leads to more reliable quantum computation.

Original Abstract

Ensuring the integrity of quantum circuits is a significant challenge in the Noisy Intermediate-Scale Quantum (NISQ) era, where circuits are subject to compilation transformations, hardware constraints, and potential adversarial modifications. Existing validation approaches typically rely on either structural analysis or behavioral evaluation, leading to incomplete assessment of circuit correctness. In this work, we investigate the relationship between structural, interaction-level, and behavioral perspectives of circuit integrity, demonstrating that a single aspect of integrity is insufficient to guarantee circuit integrity; structural similarity alone does not ensure behavioral equivalence. To address this problem, we use a three-layer metric framework that combines the Structural Integrity Score (SIS), the Operational Integrity Score (OIS), and the Interaction Graph Semantic-Logical Score (IGS). SIS captures global structural properties, OIS quantifies behavioral divergence using Jensen-Shannon distance, and IGS models interaction patterns and dependencies in a pre-execution setting. Through controlled anomaly injection on benchmark quantum circuits, we demonstrate that each metric captures a different aspect of circuit deviation. In particular, structural blind-spot cases (SIS >= 0.95) reveal a clear limitation of structural analysis, where OIS detects anomalies in 93.85% of instances, while IGS detects 72.58%. These results highlight that the metrics provide complementary insights and that a single metric is insufficient for reliable circuit validation.

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