Big Data applications are emerging during the last years, and researchers from many disciplines are aware of the high advantages related to the knowledge extraction from this type of problem. However, traditional learning approaches cannot be directly applied due to scalability issues. To overcome this issue, the MapReduce framework has arisen as a “de facto” solution. Basically, it carries out a “divide-and-conquer” distributed procedure in a fault-tolerant way to adapt for commodity hardware. Being still a recent discipline, few research has been conducted on imbalanced classification for Big Data. The reasons behind this are mainly the difficulties in adapting standard techniques to the MapReduce programming style. Additionally, inner pr...
Recently, data that generated from variety of sources with massive volumes, high rates, and differen...
Nowadays we all are surrounded by Big data. The term ‘Big Data’ itself indicates huge volume, high v...
The classification of datasets with a skewed class distribution is an important problem in data mini...
Big Data applications are emerging during the last years, and researchers from many disciplines are ...
Abstract—The “big data ” term has caught the attention of experts in the context of learning from da...
Addressing the huge amount of data continuously generated is an important challenge in the Machine L...
Learning from imbalanced data is among the most challenging areas in contemporary machine learning. ...
The class imbalance problem, one of the common data irregularities, causes the development of under-...
Classification of imbalanced data has been reported to require modification of standard classificati...
The problem of classification of imbalanced datasets is a critical one. With an increase in the numb...
The volume of data in today’s applications has meant a change in the way Machine Learning issues are...
The enormous volume of data from different sources, really varied in its typology, generated and pro...
Classification techniques in the big data scenario are in high demand in a wide variety of applicati...
This work was supported by the Research Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-6858 and P...
Abstract — Classification techniques in the big data scenario are in high demand in a wide variety o...
Recently, data that generated from variety of sources with massive volumes, high rates, and differen...
Nowadays we all are surrounded by Big data. The term ‘Big Data’ itself indicates huge volume, high v...
The classification of datasets with a skewed class distribution is an important problem in data mini...
Big Data applications are emerging during the last years, and researchers from many disciplines are ...
Abstract—The “big data ” term has caught the attention of experts in the context of learning from da...
Addressing the huge amount of data continuously generated is an important challenge in the Machine L...
Learning from imbalanced data is among the most challenging areas in contemporary machine learning. ...
The class imbalance problem, one of the common data irregularities, causes the development of under-...
Classification of imbalanced data has been reported to require modification of standard classificati...
The problem of classification of imbalanced datasets is a critical one. With an increase in the numb...
The volume of data in today’s applications has meant a change in the way Machine Learning issues are...
The enormous volume of data from different sources, really varied in its typology, generated and pro...
Classification techniques in the big data scenario are in high demand in a wide variety of applicati...
This work was supported by the Research Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-6858 and P...
Abstract — Classification techniques in the big data scenario are in high demand in a wide variety o...
Recently, data that generated from variety of sources with massive volumes, high rates, and differen...
Nowadays we all are surrounded by Big data. The term ‘Big Data’ itself indicates huge volume, high v...
The classification of datasets with a skewed class distribution is an important problem in data mini...