The aim of this paper is to develop an algorithm for solving the clusterwise linear least absolute deviations regression problem. This problem is formulated as a nonsmooth nonconvex optimization problem, and the objective function is represented as a difference of convex functions. Optimality conditions are derived by using this representation. An algorithm is designed based on the difference of convex representation and an incremental approach. The proposed algorithm is tested using small to large artificial and real-world data sets. © 2017, Operations Research Society of China, Periodicals Agency of Shanghai University, Science Press, and Springer-Verlag Berlin Heidelberg
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Clustering is one of the most important tasks in data mining. Recent developments in computer hardwa...
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The objective function in the nonsmooth optimization model of the clusterwise linear regression (CLR...
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Clusterwise regression consists of finding a number of regression functions each approximating a sub...
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A clusterwise linear regression problem consists of finding a number of linear functions each approx...
We propose an algorithm based on an incremental approach and smoothing techniques to solve clusterwi...
This paper introduces an algorithm for solving the minimum sum-of-squares clustering problems using ...
Exact global optimization of the clusterwise regression problem is challenging and there are current...
The problem of finding a continuous piecewise linear function approximating a regression function is...
In clusterwise linear regression (CLR), the aim is to simultaneously partition data into a given num...
International audienceWe study a challenging problem in machine learning that is the reduced-rank mu...
Clustering is one of the most important tasks in data mining. Recent developments in computer hardwa...
Clusterwise linear regression (CLR) aims to simultaneously partition a data into a given number of c...
The clusterwise linear regression problem is formulated as a nonsmooth nonconvex optimization proble...
The objective function in the nonsmooth optimization model of the clusterwise linear regression (CLR...
Clusterwise linear regression consists of finding a number of linear regression functions each appro...
Clusterwise regression consists of finding a number of regression functions each approximating a sub...
Data mining is about solving problems by analyzing data that present in databases. Supervised and un...
Piecewise linear (Formula presented.) -regression problem is formulated as an unconstrained differen...
A clusterwise linear regression problem consists of finding a number of linear functions each approx...
We propose an algorithm based on an incremental approach and smoothing techniques to solve clusterwi...
This paper introduces an algorithm for solving the minimum sum-of-squares clustering problems using ...
Exact global optimization of the clusterwise regression problem is challenging and there are current...
The problem of finding a continuous piecewise linear function approximating a regression function is...
In clusterwise linear regression (CLR), the aim is to simultaneously partition data into a given num...
International audienceWe study a challenging problem in machine learning that is the reduced-rank mu...
Clustering is one of the most important tasks in data mining. Recent developments in computer hardwa...
Clusterwise linear regression (CLR) aims to simultaneously partition a data into a given number of c...