There has been much recent progress in forecasting the next observation of a linear dynamical system (LDS), which is known as the improper learning, as well as in the estimation of its system matrices, which is known as the proper learning of LDS. We present an approach to proper learning of LDS, which in spite of the non-convexity of the problem, guarantees global convergence of numerical solutions to a least-squares estimator. We present promising computational results.
翻译:最近,在预测下一次观测线性动态系统(称为不适当学习)以及估计其系统矩阵(称为适当学习LDS)方面取得了很大进展,我们提出了适当学习LDS的方法,尽管问题不协调,但保证数字解决办法与最小估计数字的全球趋同,我们提出了有希望的计算结果。