Robust piecewise linear L1-regression via nonsmooth optimization in data sets with outliers




Adil M. Bagirov, Sona Taheri, Napsu Karmitsa, Nargiz Sultanova, Soodabeh Asadi

PublisherTaylor & Francis

2022

Optimization Methods and Software

37

4

1289

1309

21

1055-6788

1029-4937

DOIhttps://doi.org/10.1080/10556788.2020.1855171

https://doi.org/10.1080/10556788.2020.1855171



Piecewise linear L1-regression problem is formulated as an unconstrained difference of convex (DC) optimization problem and an algorithm for solving this problem is developed. Auxiliary problems are introduced to design an adaptive approach to generate a suitable piecewise linear regression model and starting points for solving the underlying DC optimization problems. The performance of the proposed algorithm as both approximation and prediction tool is evaluated using synthetic and real-world data sets containing outliers. It is also compared with mainstream machine learning regression algorithms using various performance measures. Results demonstrate that the new algorithm is robust to outliers and in general, provides better predictions than the other alternative regression algorithms for most data sets used in the numerical experiments.



Last updated on 2024-26-11 at 13:49