This paper considers the problem of online piecewise linear regression for big data applications. We introduce an algorithm, which sequentially achieves the performance of the best piecewise linear (affine) model with optimal partition of the space of the regressor vectors in an individual sequence manner. To this end, our algorithm constructs a class of 2 D sequential piecewise linear models over a set of partitions of the regressor space and efficiently combines them in the mixture-of-experts setting. We show that the algorithm is highly efficient with computational complexity of only O(mD2) , where m is the dimension of the regressor vectors. This efficient computational complexity is achieved by efficiently representing all of the 2 D m...
If there are extraordinarily large data, too large to fit into a single computer or too expensive to...
In this paper, we study the binary classification problem in machine learning and introduce a novel ...
The desired output in many machine learning tasks is a structured object, such as tree, clustering, ...
We introduce a highly efficient online nonlinear regression algorithm. We process the data in a trul...
In this paper, we investigate adaptive nonlinear regression and introduce tree based piecewise linea...
We introduce highly efficient online nonlinear regression algorithms that are suitable for real life...
We investigate the problem of adaptive nonlinear regression and introduce tree based piecewise linea...
We investigate the problem of sequential piecewise linear regression from a competitive framework. F...
We study sequential nonlinear regression and introduce an online algorithm that elegantly mitigates,...
Cataloged from PDF version of article.Thesis (M.S.): Bilkent University, Department of Electrical a...
In this paper, we offer and examine a new algorithm for sequential nonlinear regression problem. In ...
In nonlinear regression choosing an adequate model structure is often a challenging problem. While s...
This paper introduces a new data analysis method for big data using a newly defined regression model...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
In data mining, regression analysis is a computational tool that predicts continuous output variable...
If there are extraordinarily large data, too large to fit into a single computer or too expensive to...
In this paper, we study the binary classification problem in machine learning and introduce a novel ...
The desired output in many machine learning tasks is a structured object, such as tree, clustering, ...
We introduce a highly efficient online nonlinear regression algorithm. We process the data in a trul...
In this paper, we investigate adaptive nonlinear regression and introduce tree based piecewise linea...
We introduce highly efficient online nonlinear regression algorithms that are suitable for real life...
We investigate the problem of adaptive nonlinear regression and introduce tree based piecewise linea...
We investigate the problem of sequential piecewise linear regression from a competitive framework. F...
We study sequential nonlinear regression and introduce an online algorithm that elegantly mitigates,...
Cataloged from PDF version of article.Thesis (M.S.): Bilkent University, Department of Electrical a...
In this paper, we offer and examine a new algorithm for sequential nonlinear regression problem. In ...
In nonlinear regression choosing an adequate model structure is often a challenging problem. While s...
This paper introduces a new data analysis method for big data using a newly defined regression model...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
In data mining, regression analysis is a computational tool that predicts continuous output variable...
If there are extraordinarily large data, too large to fit into a single computer or too expensive to...
In this paper, we study the binary classification problem in machine learning and introduce a novel ...
The desired output in many machine learning tasks is a structured object, such as tree, clustering, ...