LPBoost seemingly should have better generalization capability than AdaBoost according to the margin theory (Schapire, 1999) because LPBoost optimizes the minimum margin directly. Thus far, however, there is no empirical comparison and theoretical explanation of LPBoost against AdaBoost. We have conducted an experimental evaluation on the classification performance of LPBoost and AdaBoost in this paper. Our results show that the LPBoost performs worse than AdaBoost in most cases. By considering the margin distribution, we present an explanation. Also, our finding indicates that besides the minimum margin, which is directly and globally optimized in LPBoost, the margin distribution plays a more important role in terms of the learned strong c...
Abstract—Boosting is of great interest recently in the machine learning community because of the imp...
AdaBoost produces a linear combination of base hypotheses and predicts with the sign of this linear ...
The goal of boosting algorithm is to maximize the minimum margin on sample set. Based on minimax the...
LPBoost seemingly should have better generalization ca- pability than AdaBoost according to the marg...
Much attention has been paid to the theoretical explanation of the empirical success of AdaBoost. Th...
Editor: Much attention has been paid to the theoretical explanation of the empirical success of AdaB...
Margin theory provides one of the most popular explanations to the success of AdaBoost, where the ce...
Much attention has been paid to the theoretical explanation of the empirical success of AdaBoost. Th...
Much attention has been paid to the theo-retical explanation of the empirical success of AdaBoost. T...
Much attention has been paid to the theoretical explanation of the empirical success of AdaBoost. Th...
The “minimum margin ” of an ensemble classifier on a given training set is, roughly speaking, the sm...
The goal of boosting algorithm is to maximize the minimum margin on sample set. Based on minimax the...
Many researchers have worked on the explanation of AdaBoost’s good experimental results in theory. S...
As a machine learning method, AdaBoost is widely applied to data classification and object detection...
AdaBoost produces a linear combination of base hypotheses and predicts with the sign of this linear ...
Abstract—Boosting is of great interest recently in the machine learning community because of the imp...
AdaBoost produces a linear combination of base hypotheses and predicts with the sign of this linear ...
The goal of boosting algorithm is to maximize the minimum margin on sample set. Based on minimax the...
LPBoost seemingly should have better generalization ca- pability than AdaBoost according to the marg...
Much attention has been paid to the theoretical explanation of the empirical success of AdaBoost. Th...
Editor: Much attention has been paid to the theoretical explanation of the empirical success of AdaB...
Margin theory provides one of the most popular explanations to the success of AdaBoost, where the ce...
Much attention has been paid to the theoretical explanation of the empirical success of AdaBoost. Th...
Much attention has been paid to the theo-retical explanation of the empirical success of AdaBoost. T...
Much attention has been paid to the theoretical explanation of the empirical success of AdaBoost. Th...
The “minimum margin ” of an ensemble classifier on a given training set is, roughly speaking, the sm...
The goal of boosting algorithm is to maximize the minimum margin on sample set. Based on minimax the...
Many researchers have worked on the explanation of AdaBoost’s good experimental results in theory. S...
As a machine learning method, AdaBoost is widely applied to data classification and object detection...
AdaBoost produces a linear combination of base hypotheses and predicts with the sign of this linear ...
Abstract—Boosting is of great interest recently in the machine learning community because of the imp...
AdaBoost produces a linear combination of base hypotheses and predicts with the sign of this linear ...
The goal of boosting algorithm is to maximize the minimum margin on sample set. Based on minimax the...