The ultimate goal of any sparse coding method is to accurately recover from a few noisy linear measurements, an unknown sparse vector. Unfortunately, this estimation problem is NP-hard in general, and it is therefore always approached with an approximation method, such as lasso or orthogonal matching pursuit, thus trading off accuracy for less computational complexity. In this paper, we develop a quantum-inspired algorithm for sparse coding, with the premise that the emergence of quantum computers and Ising machines can potentially lead to more accurate estimations compared to classical approximation methods. To this end, we formulate the most general sparse coding problem as a quadratic unconstrained binary optimization (QUBO) task, which can be efficiently minimized using quantum technology. To derive at a QUBO model that is also efficient in terms of the number of spins (space complexity), we separate our analysis into three different scenarios. These are defined by the number of bits required to express the underlying sparse vector: binary, 2-bit, and a general fixed-point representation. We conduct numerical experiments with simulated data on LightSolver's quantum-inspired digital platform to verify the correctness of our QUBO formulation and to demonstrate its advantage over baseline methods.
翻译:任何稀有的编码方法的最终目的是从少数噪音的线性测量中准确恢复, 一种未知的稀释矢量。 不幸的是, 这个估计问题一般是NP硬的, 因此总是用近似方法来处理, 比如 lasso 或正对匹配, 从而将精度转换为计算复杂性较低。 在本文中, 我们为稀释编码开发量子驱动算法, 前提是量子计算机和Ising 机器的出现可能会导致比传统近似方法更准确的估计。 为此, 我们将最普遍稀释的编码问题编成一个二次方形的不受限制的双向优化( QUBO) (QUBO) 任务, 使用量子技术可以有效最小化。 要从QUBO 模型中得出一个在旋转( 空间复杂性) 数量上也是有效的, 我们的分析分为三种不同的假设。 这些假设由表达原始矢量矢量的矢量( binary, 2bit) 和一般的定点表示法来定义。 我们用模拟的数据进行数字实验, 模拟 LightS- SQ- 校准数字平台, 以校验Uver's- bal- bastical pal plaved plaved plation plation plation plated plad plated plated.