The problem of finding a continuous piecewise linear function approximating a regression function is considered. This problem is formulated as a nonconvex nonsmooth optimization problem where the objective function is represented as a difference of convex (DC) functions. Subdifferentials of DC components are computed and an algorithm is designed based on these subdifferentials to find piecewise linear functions. The algorithm is tested using some synthetic and real world data sets and compared with other regression algorithms
The methods discussed are based on local piecewise-linear secant approximations to continuous conve...
Abstract We consider the problem of fitting a continuous piecewise linear function to a finite set o...
Clusterwise linear regression consists of finding a number of linear regression functions each appro...
Piecewise linear (Formula presented.) -regression problem is formulated as an unconstrained differen...
We present a new piecewise linear regression methodology that utilizes fitting a difference of con...
The problem of the estimation of a regression function by continuous piecewise linear functions is f...
International audienceThis paper deals with switched linear system identification and more particula...
International audienceWe investigate a nonconvex, nonsmooth optimization approach based on DC (Diffe...
International audienceWe aim at generalizing formulations for non-convex piecewise-linear problems t...
Optimization is a branch of mathematics dealing with the selection of the best element(s) (based on ...
The clusterwise linear regression problem is formulated as a nonsmooth nonconvex optimization proble...
A quadratically convergent line-search algorithm for piecewise smooth convex optimization based on a...
The objective function in the nonsmooth optimization model of the clusterwise linear regression (CLR...
The Boosted Difference of Convex functions Algorithm (BDCA) was recently proposed for minimizing smo...
A method, called an augmented subgradient method, is developed to solve unconstrained nonsmooth diff...
The methods discussed are based on local piecewise-linear secant approximations to continuous conve...
Abstract We consider the problem of fitting a continuous piecewise linear function to a finite set o...
Clusterwise linear regression consists of finding a number of linear regression functions each appro...
Piecewise linear (Formula presented.) -regression problem is formulated as an unconstrained differen...
We present a new piecewise linear regression methodology that utilizes fitting a difference of con...
The problem of the estimation of a regression function by continuous piecewise linear functions is f...
International audienceThis paper deals with switched linear system identification and more particula...
International audienceWe investigate a nonconvex, nonsmooth optimization approach based on DC (Diffe...
International audienceWe aim at generalizing formulations for non-convex piecewise-linear problems t...
Optimization is a branch of mathematics dealing with the selection of the best element(s) (based on ...
The clusterwise linear regression problem is formulated as a nonsmooth nonconvex optimization proble...
A quadratically convergent line-search algorithm for piecewise smooth convex optimization based on a...
The objective function in the nonsmooth optimization model of the clusterwise linear regression (CLR...
The Boosted Difference of Convex functions Algorithm (BDCA) was recently proposed for minimizing smo...
A method, called an augmented subgradient method, is developed to solve unconstrained nonsmooth diff...
The methods discussed are based on local piecewise-linear secant approximations to continuous conve...
Abstract We consider the problem of fitting a continuous piecewise linear function to a finite set o...
Clusterwise linear regression consists of finding a number of linear regression functions each appro...