RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algorithms (MSAs), discusses how they relate to each other, and identifies factors that explain their relative performances. At the heart of MSA performance is the trade-off between Type I and Type II errors. Some relevant variables will be mistakenly excluded, and some irrelevant variables will be retained by chance. A successful MSA will find the optimal trade-off between the two types of errors for a given data environment. Whether a given MSA will be successful in a given environment depends on the relative costs of these two types of errors. We use Monte Carlo experimentation to illustrate these issues. We confirm that no MSA does best in all...
The selection of a descriptor, X, is crucial for improving the interpretation and prediction accurac...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Model averaging is widely used in empirical work, and proposed as a solution to model uncertainty. T...
This review surveys a number of common model selection algorithms (MSAs), discusses how they relate ...
This review surveys a number of common model selection algorithms (MSAs), discusses how they relate ...
Abstract. This review surveys a number of common model selection algorithms (MSAs), discusses how th...
This paper reviews and compares twenty-one different model selection algorithms (MSAs) representing ...
Model selection strategies for machine learning algorithms typically involve the numerical optimisat...
After reviewing the simulation performance of general-to-specific automatic regression model selecti...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
This paper develops new model selection criteria for regression with heteroskedastic and autocorrela...
Model selection strategies for machine learning algorithms typically involve the numerical opti-misa...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We review recent research on model selection in econometric modelling, forecasting, and policy analy...
The selection of a descriptor, X, is crucial for improving the interpretation and prediction accurac...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Model averaging is widely used in empirical work, and proposed as a solution to model uncertainty. T...
This review surveys a number of common model selection algorithms (MSAs), discusses how they relate ...
This review surveys a number of common model selection algorithms (MSAs), discusses how they relate ...
Abstract. This review surveys a number of common model selection algorithms (MSAs), discusses how th...
This paper reviews and compares twenty-one different model selection algorithms (MSAs) representing ...
Model selection strategies for machine learning algorithms typically involve the numerical optimisat...
After reviewing the simulation performance of general-to-specific automatic regression model selecti...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
This paper develops new model selection criteria for regression with heteroskedastic and autocorrela...
Model selection strategies for machine learning algorithms typically involve the numerical opti-misa...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We review recent research on model selection in econometric modelling, forecasting, and policy analy...
The selection of a descriptor, X, is crucial for improving the interpretation and prediction accurac...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Model averaging is widely used in empirical work, and proposed as a solution to model uncertainty. T...