Matrix Operations for the Simulation and Immediate Reverse-Engineering of Time Series Data

M. Idowu, J. Bown
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引用次数: 3

Abstract

We present a new method for constructing and decomposing square matrices. This method, based on the computed parameterisation of their implied determinants and minors, operates on the product of factors of a new form of matrix decomposition. This method may be employed to build new matrices with fixed determinant(s). We demonstrate that this new approach is fundamentally well-connected to the Cholesky decomposition if applied on symmetric matrices. We also demonstrate that it is related to the LU decomposition method via a diagonal matrix multiplier. Also through this new method a direct relation between Cholesky decomposition and LU factorisation is shown. This method, presented for the first time, is useful for (re)constructing matrices with a predefined determinant and simulating inverse problems. The inference method introduced here also is based on new matrix manipulation techniques that we have developed for the identification of systems from reproducible time series data.
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时间序列数据模拟与即时逆向工程的矩阵运算
提出了一种构造和分解方阵的新方法。这种方法,基于隐含行列式和小式的计算参数化,对一种新的矩阵分解形式的因子乘积进行操作。该方法可用于构造具有固定行列式的新矩阵。我们证明,如果应用于对称矩阵,这种新方法基本上与Cholesky分解有很好的联系。我们还通过对角矩阵乘法器证明了它与LU分解方法的关系。并通过该方法证明了Cholesky分解与LU分解之间的直接关系。该方法首次被提出,用于(重新)构造具有预定义行列式的矩阵和模拟逆问题。这里介绍的推理方法也是基于新的矩阵操作技术,我们已经开发了从可重复的时间序列数据中识别系统。
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