On the two mutually independent factors that determine the convergence of least-squares projection method
This work provides a theoretical framework for understanding convergence in least-squares projection methods, which is relevant for researchers working on regularization of ill-posed problems.
The paper identifies two independent factors—kernel approximability and offset angle—that determine the convergence of the least-squares projection method for bounded linear operators, providing necessary conditions and geometric interpretations of convergence rates.
This paper investigates the least-squares projection method for bounded linear operators, which provides a natural regularization scheme by projection for many ill-posed problems. Yet, without additional assumptions, the convergence of this approximation scheme cannot be guaranteed. We reveal that the convergence of least-squares projection method is determined by two independent factors -- the kernel approximability and the offset angle. The kernel approximability is a necessary condition of convergence described with kernel $N(T)$ and its subspaces $N(T){\cap}X_n$, and we give several equivalent characterizations for it (Theorem 1). The offset angle of $X_n$ is defined as the largest canonical angle between space $T^*T(X_n)$ and $T^{\dagger}T(X_n)$ (which are subspaces of $N(T)^\bot$), and it geometrically reflects the rate of convergence (Theorem 2). The paper also presents new observations for the unconvergence examples of Seidman [10, Example 3.1] and Du [2, Example 2.10] under the notions of kernel approximability and offset angle.