We present an effective method for supervised feature construction. The main goal of the approach is to construct a feature representation for which a set of linear hypotheses is of sufficient capacity -- large enough to contain a satisfactory solution to the considered problem and small enough to allow good generalization from a small number of training examples. We achieve this goal with a greedy procedure that constructs features by empirically fitting squared error residuals. The proposed constructive procedure is consistent and can output a rich set of features. The effectiveness of the approach is evaluated empirically by fitting a linear ridge regression model in the constructed feature space and our empirical results indicate a supe...
We introduce a framework for feature selection based on dependence maximization between the selected...
Automated feature discovery is a fundamental problem in machine learning. Although classical feature...
This thesis proposes an evolutionary scheme for automatic design of feature extraction methods, tail...
We present an effective method for supervised feature construction. The main goal of the approach is...
Feature engineering is a crucial step in the process of predictive modeling. It involves the transfo...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
In many classification tasks training data have missing feature values that can be acquired at a cos...
We present a method for learning higher-order polynomial functions from examples using linear regres...
This paper tackles the problem that methods for proposition-alization and feature construction in fi...
A key challenge in machine learning is to automatically extract relevant feature representations of ...
This paper describes a machine learning method, called Regression by Selecthtg Best P~’ttllll’es (RS...
In many important real world applications the initial representation of the data is inconvenient, or...
The automatic discovery of a significant low-dimensional feature representation from a given data se...
This paper describes a machine learning method, called Regression by Selecting Best Feature Projecti...
This paper describes a machine learning method, called Regression on Feature Projections (RFP), for ...
We introduce a framework for feature selection based on dependence maximization between the selected...
Automated feature discovery is a fundamental problem in machine learning. Although classical feature...
This thesis proposes an evolutionary scheme for automatic design of feature extraction methods, tail...
We present an effective method for supervised feature construction. The main goal of the approach is...
Feature engineering is a crucial step in the process of predictive modeling. It involves the transfo...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
In many classification tasks training data have missing feature values that can be acquired at a cos...
We present a method for learning higher-order polynomial functions from examples using linear regres...
This paper tackles the problem that methods for proposition-alization and feature construction in fi...
A key challenge in machine learning is to automatically extract relevant feature representations of ...
This paper describes a machine learning method, called Regression by Selecthtg Best P~’ttllll’es (RS...
In many important real world applications the initial representation of the data is inconvenient, or...
The automatic discovery of a significant low-dimensional feature representation from a given data se...
This paper describes a machine learning method, called Regression by Selecting Best Feature Projecti...
This paper describes a machine learning method, called Regression on Feature Projections (RFP), for ...
We introduce a framework for feature selection based on dependence maximization between the selected...
Automated feature discovery is a fundamental problem in machine learning. Although classical feature...
This thesis proposes an evolutionary scheme for automatic design of feature extraction methods, tail...