Shinde Umesh Uttamrao, Bandaru Ravikumar
Department of Mathematics, School of Advanced Sciences, VIT-AP University, Besides AP Secretariate, Amaravati, Andhra Pradesh, 522237, India.
Sci Rep. 2025 Jan 29;15(1):3615. doi: 10.1038/s41598-025-87782-2.
Heavy hexagonal coding is a type of quantum error-correcting coding in which the edges and vertices of a low-degree graph are assigned auxiliary and physical qubits. While many topological code decoders have been presented, it is still difficult to construct the optimal decoder due to leakage errors and qubit collision. Therefore, this research proposes a Re-locative Guided Search optimized self-sparse attention-enabled convolutional Neural Network with Long Short-Term Memory (RlGS2-DCNTM) for performing effective error correction in quantum codes. The integration of the self-sparse attention mechanism in the proposed model increases the feature learning ability of the model to selectively focus on informative regions of the input codes. In addition, the use of statistical features computes the statistical properties of the input, thus aiding the model to perform complex tasks effectively. For model tuning, this research utilizes the RIGS nature-inspired algorithm that mimics the re-locative, foraging, and hunting strategies, which avoids local optima problems and improves the convergence speed of the RlGS2-DCNTM for Quantum error correction. When compared with other methods, the proposed RlGS2-DCNTM algorithm offers superior efficacy with a Minimum Mean Squared Error (MSE) of 4.26, Root Mean Squared Error of 2.06, Mean Absolute Error of 1.14 and a maximum correlation and [Formula: see text] of 0.96 and 0.92 respectively, which shows that the proposed model is highly suitable for real-time error decoding tasks.
重六边形编码是一种量子纠错编码,其中低度图的边和顶点被分配辅助量子比特和物理量子比特。虽然已经提出了许多拓扑码解码器,但由于泄漏错误和量子比特碰撞,仍然难以构建最优解码器。因此,本研究提出了一种具有长短期记忆的重新定位引导搜索优化的自稀疏注意力卷积神经网络(RlGS2-DCNTM),用于在量子码中进行有效的纠错。在所提出的模型中集成自稀疏注意力机制提高了模型的特征学习能力,使其能够有选择地关注输入码的信息区域。此外,使用统计特征来计算输入的统计特性,从而帮助模型有效地执行复杂任务。为了进行模型调优,本研究利用了受RIGS启发的算法,该算法模仿重新定位、觅食和狩猎策略,避免了局部最优问题,提高了RlGS2-DCNTM用于量子纠错的收敛速度。与其他方法相比,所提出的RlGS2-DCNTM算法具有卓越的功效,最小均方误差(MSE)为4.26,均方根误差为2.06,平均绝对误差为1.14,最大相关性分别为0.96和0.92,这表明所提出的模型非常适合实时错误解码任务。