Stacked regression with a generalization of the moore-penrose pseudoinverse

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Abstract

In practice, it often happens that there are a number of classification methods. We are not able to clearly determine which method is optimal. We propose a combined method that allows us to consolidate information from multiple sources in a better classifier. Stacked regression (SR) is a method for forming linear combinations of different classifiers to give improved classification accuracy. The Moore-Penrose (MP) pseudoinverse is a general way to find the solution to a system of linear equations. This paper presents the use of a generalization of the MP pseudoinverse of a matrix in SR. However, for data sets with a greater number of features our exact method is computationally too slow to achieve good results: we propose a genetic approach to solve the problem. Experimental results on various real data sets demonstrate that the improvements are efficient and that this approach outperforms the classical SR method, providing a significant reduction in the mean classification error rate.

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Górecki, T., & Łuczak, M. (2017). Stacked regression with a generalization of the moore-penrose pseudoinverse. Statistics in Transition New Series, 18(3), 443–458. https://doi.org/10.21307/stattrans-2016-080

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