Clusterwise linear regression (CLR) is a well-known technique for approximating a data using more than one linear function. It is based on the combination of clustering and multiple linear regression methods. This article provides a comprehensive survey and comparative assessments of CLR including model formulations, description of algorithms, and their performance on small to large-scale synthetic and real-world datasets. Some applications of the CLR algorithms and possible future research directions are also discussed. © 2023 Association for Computing Machinery
In the behavioral sciences, many research questions pertain to the relationship between one or more ...
The traditional regression analysis is usually applied to homogeneous observations. However, there a...
International audienceA cluster analysis method on massive multiple linear regression models was pro...
Clusterwise linear regression (CLR) is a well-known technique for approximating a data using more th...
Clustered linear regression (CLR) is a new machine learning algorithm that improves the accuracy of ...
We propose an algorithm based on an incremental approach and smoothing techniques to solve clusterwi...
In clusterwise linear regression (CLR), the aim is to simultaneously partition data into a given num...
Data heterogeneity, within a (linear) regression framework, often suggests the use of a Clusterwise ...
Data mining is about solving problems by analyzing data that present in databases. Supervised and un...
IXth Conference of the International Federation of Classification SocietiesPartial Least Squares app...
A clusterwise linear regression problem consists of finding a number of linear functions each approx...
In the behavioral sciences, many research questions pertain to a regression problem in that one want...
This paper presents a conditional mixture, maximum likelihood methodology for performing clusterwise...
We consider a collection of prediction experiments, which are clustered in the sense that groups of ...
In the behavioral sciences, many research questions pertain to a regression problem in that one wa...
In the behavioral sciences, many research questions pertain to the relationship between one or more ...
The traditional regression analysis is usually applied to homogeneous observations. However, there a...
International audienceA cluster analysis method on massive multiple linear regression models was pro...
Clusterwise linear regression (CLR) is a well-known technique for approximating a data using more th...
Clustered linear regression (CLR) is a new machine learning algorithm that improves the accuracy of ...
We propose an algorithm based on an incremental approach and smoothing techniques to solve clusterwi...
In clusterwise linear regression (CLR), the aim is to simultaneously partition data into a given num...
Data heterogeneity, within a (linear) regression framework, often suggests the use of a Clusterwise ...
Data mining is about solving problems by analyzing data that present in databases. Supervised and un...
IXth Conference of the International Federation of Classification SocietiesPartial Least Squares app...
A clusterwise linear regression problem consists of finding a number of linear functions each approx...
In the behavioral sciences, many research questions pertain to a regression problem in that one want...
This paper presents a conditional mixture, maximum likelihood methodology for performing clusterwise...
We consider a collection of prediction experiments, which are clustered in the sense that groups of ...
In the behavioral sciences, many research questions pertain to a regression problem in that one wa...
In the behavioral sciences, many research questions pertain to the relationship between one or more ...
The traditional regression analysis is usually applied to homogeneous observations. However, there a...
International audienceA cluster analysis method on massive multiple linear regression models was pro...