Nonlinear dimensionality reduction (NLDR) methods have become useful tools for practitioners who are faced with the analysis of high-dimensional data. Of course, not all NLDR methods are equally applicable to a particular dataset at hand. Thus it would be useful to come up with model selection criteria that help to choose among different NLDR algorithms. This paper explores various approaches to this problem and evaluates them on controlled data sets. Comprehensive experiments will show that model selection scores based on stability are not useful, while scores based on Gaussian processes are helpful for the NLDR problem
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Nonlinear dimensionality reduction (NLDR) methods have become useful tools for practitioners who are...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Dimensionality reduction techniques aim at representing high dimensional data in a meaningful and lo...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
Dimensionality reduction techniques are outlined; their strengths and limitations are discussed. The...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
We investigate the finite-sample performance of model selection criteria for local linear regression...
We investigate the finite-sample performance of model selection criteria for local linear regression...
Abstract. Nonlinear dimensionality reduction (NLDR) techniques offer powerful data visualization sch...
This paper bridges the gap between variable selection methods (e.g., Pearson coefficients, KS test) ...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Nonlinear dimensionality reduction (NLDR) methods have become useful tools for practitioners who are...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Dimensionality reduction techniques aim at representing high dimensional data in a meaningful and lo...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
Dimensionality reduction techniques are outlined; their strengths and limitations are discussed. The...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
We investigate the finite-sample performance of model selection criteria for local linear regression...
We investigate the finite-sample performance of model selection criteria for local linear regression...
Abstract. Nonlinear dimensionality reduction (NLDR) techniques offer powerful data visualization sch...
This paper bridges the gap between variable selection methods (e.g., Pearson coefficients, KS test) ...
High-throughput technologies nowadays are leading to massive availability of data to be explored. T...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...