This paper presents a new boosting algorithm called NormalBoost which is capable of classifying a multi-dimensional binary class dataset. It adaptively combines several weak classifiers to form a strong classifier. Unlike many boosting algorithms which have high computation and memory complexities, NormalBoost is capable of classification with low complexity. Since NormalBoost assumes the dataset to be continuous, it is also noise resistant because it only deals with the means and standard deviations of each dimension. Experiments conducted to evaluate its performance shows that NormalBoost performs almost the same as AdaBoost in the classification rate. However, NormalBoost performs 189 times faster than AdaBoost and employs a very little ...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
Boosting is a general approach for improving classifier performances. In this research we investigat...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
This paper presents a new boosting algorithm called NormalBoost which is capable of classifying a mu...
NormalBoost is a new boosting algorithm which is capable of classifying a multi-dimensional binary c...
AdaBoost [3] minimizes an upper error bound which is an exponential function of the margin on the tr...
AdaBoost [3] minimizes an upper error bound which is an exponential function of the margin on the t...
AdaBoost has proved to be an effective method to improve the performance of base classifiers both th...
AdaBoost.M2 is a boosting algorithm designed for multiclass problems with weak base classifiers. The...
This thesis introduces new approaches, namely the DataBoost and DataBoost-IM algorithms, to extend B...
In this paper we apply multi-armed ban-dits (MABs) to improve the computational complexity of AdaBoo...
Boosting is a technique of combining a set weak classifiers to form one high-performance prediction ...
Boosting is a general approach for improving classifier performances. In this research we investigat...
AbstractBoosting algorithms are procedures that “boost” low-accuracy weak learning algorithms to ach...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
Boosting is a general approach for improving classifier performances. In this research we investigat...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
This paper presents a new boosting algorithm called NormalBoost which is capable of classifying a mu...
NormalBoost is a new boosting algorithm which is capable of classifying a multi-dimensional binary c...
AdaBoost [3] minimizes an upper error bound which is an exponential function of the margin on the tr...
AdaBoost [3] minimizes an upper error bound which is an exponential function of the margin on the t...
AdaBoost has proved to be an effective method to improve the performance of base classifiers both th...
AdaBoost.M2 is a boosting algorithm designed for multiclass problems with weak base classifiers. The...
This thesis introduces new approaches, namely the DataBoost and DataBoost-IM algorithms, to extend B...
In this paper we apply multi-armed ban-dits (MABs) to improve the computational complexity of AdaBoo...
Boosting is a technique of combining a set weak classifiers to form one high-performance prediction ...
Boosting is a general approach for improving classifier performances. In this research we investigat...
AbstractBoosting algorithms are procedures that “boost” low-accuracy weak learning algorithms to ach...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
Boosting is a general approach for improving classifier performances. In this research we investigat...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...