Learning from imbalanced data sets is one of the challenging problems in machine learning, which means the number of negative examples is far more than that of positive examples. The main problems of existing methods are: (1) The degree of re-sampling, a key factor greatly affecting performance, needs to be pre-fixed, which is difficult to make the optimal choice; (2) Many useful negative samples are discarded in under-sampling; (3) The effectiveness of algorithm-level methods are limited because they just use the original training data for single classifier. To address the above issues, a novel approach of adaptive sampling with optimal cost is proposed for class-imbalance learning in this paper. The novelty of the proposed approach mainly...
Automatic concept learning from large scale imbalanced data sets is a key issue in video semantic an...
In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbal...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
Learning from imbalanced data sets is one of the challenging problems in machine learning, which mea...
This paper presents two adaptive ensemble sampling approaches for imbalanced learning: one is the un...
One popular approach for imbalance learning is weighting samples in rare classes with high cost and ...
Abstract—Under-sampling is a popular method in deal-ing with class-imbalance problems, which uses on...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
Abstract. In this paper, a novel inverse random under sampling (IRUS) method is proposed for class i...
In this report, I presented my results to the tasks of 2008 UC San Diego Data Mining Contest. This c...
There are several aspects that might influence the performance achieved by existing learning systems...
In this thesis several sampling methods for Statistical Learning with imbalanced data have been impl...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
Undersampling has been widely used in the class-imbalance learning area. The main deficiency of most...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Automatic concept learning from large scale imbalanced data sets is a key issue in video semantic an...
In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbal...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
Learning from imbalanced data sets is one of the challenging problems in machine learning, which mea...
This paper presents two adaptive ensemble sampling approaches for imbalanced learning: one is the un...
One popular approach for imbalance learning is weighting samples in rare classes with high cost and ...
Abstract—Under-sampling is a popular method in deal-ing with class-imbalance problems, which uses on...
Multi-class imbalanced data classification in supervised learning is one of the most challenging res...
Abstract. In this paper, a novel inverse random under sampling (IRUS) method is proposed for class i...
In this report, I presented my results to the tasks of 2008 UC San Diego Data Mining Contest. This c...
There are several aspects that might influence the performance achieved by existing learning systems...
In this thesis several sampling methods for Statistical Learning with imbalanced data have been impl...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
Undersampling has been widely used in the class-imbalance learning area. The main deficiency of most...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Automatic concept learning from large scale imbalanced data sets is a key issue in video semantic an...
In this work, we developed a Selective Dynamic Sampling Approach (SDSA) to deal with the class imbal...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...