In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a strong classifier in a stepwise fashion by selecting simple base classifiers and using their weighted "vote" to determine the final classification. We model this stepwise base classifier selection as a sequential decision problem, and optimize it with MABs. Each arm represent a subset of the base classifier set. The MAB gradually learns the "utility" of the subsets, and selects one of the subsets in each iteration. ADABOOST then searches only this subset instead of optimizing the base classifier over the whole space. The reward is defined as a function of the accuracy of the base classifier. We investigate how the MAB algorithms (UCB, UCT) can be applied ...
Boosting is a technique of combining a set weak classifiers to form one high-performance prediction ...
AdaBoost is a highly popular ensemble classification method for which many variants have been publis...
This paper introduces a robust variant of AdaBoost, cw-AdaBoost, that uses weight perturbation to r...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
http://www.machinelearning.orgInternational audienceIn this paper we apply multi-armed bandits (MABs...
This paper explores how multi-armed bandits (MABs) can be applied to accelerate AdaBoost. Ad-aBoost ...
This paper studies boosting algorithms that make a single pass over a set of base classifiers. We fi...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
Classical Boosting algorithms, such as AdaBoost, build a strong classifier without concern for the c...
This paper presents a strategy to improve the AdaBoost algorithm with a quadratic combination of bas...
AdaBoost.M2 is a boosting algorithm designed for multiclass problems with weak base classifiers. The...
This mini-dissertation seeks to provide the reader with an understanding of one of the most popular ...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
Boosting is a technique of combining a set weak classifiers to form one high-performance prediction ...
AdaBoost is a highly popular ensemble classification method for which many variants have been publis...
This paper introduces a robust variant of AdaBoost, cw-AdaBoost, that uses weight perturbation to r...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
http://www.machinelearning.orgInternational audienceIn this paper we apply multi-armed bandits (MABs...
This paper explores how multi-armed bandits (MABs) can be applied to accelerate AdaBoost. Ad-aBoost ...
This paper studies boosting algorithms that make a single pass over a set of base classifiers. We fi...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
Abstract. In an earlier paper, we introduced a new “boosting” algorithm called AdaBoost which, theor...
This work presents a modified Boosting algorithm capable of avoiding training sample overfitting dur...
Classical Boosting algorithms, such as AdaBoost, build a strong classifier without concern for the c...
This paper presents a strategy to improve the AdaBoost algorithm with a quadratic combination of bas...
AdaBoost.M2 is a boosting algorithm designed for multiclass problems with weak base classifiers. The...
This mini-dissertation seeks to provide the reader with an understanding of one of the most popular ...
International audienceWe present a new multiclass boosting algorithm called Adaboost.BG. Like the or...
Boosting is a technique of combining a set weak classifiers to form one high-performance prediction ...
AdaBoost is a highly popular ensemble classification method for which many variants have been publis...
This paper introduces a robust variant of AdaBoost, cw-AdaBoost, that uses weight perturbation to r...