Interpretability has always been a major concern for fuzzy rule-based classifiers. The usage of human-readable models allows them to explain the reasoning behind their predictions and decisions. However, when it comes to Big Data classification problems, fuzzy rule based classifiers have not been able to maintain the good tradeoff between accuracy and interpretability that has characterized these techniques in non-Big-Data environments. The most accurate methods build models composed of a large number of rules and fuzzy sets that are too complex, while those approaches focusing on interpretability do not provide state-of-the-art discrimination capabilities. In this paper, we propose a new distributed learning algorithm named CFM-BD to const...
Fuzzy rule-based classifiers (FRBCs) have been widely exploited in several engineering applications,...
The significance of addressing Big Data applications is beyond all doubt. The current ability of ext...
The Era of Big Data has forced researchers to explore new distributed solutions for building fuzzy c...
Classical data mining algorithms are considered inadequate to manage the volume, variety, velocity, ...
In the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to gen...
AbstractNowadays, a huge amount of data are generated, often in very short time intervals and in var...
Nowadays, a huge amount of data are generated, often in very short time intervals and in various for...
Classical data mining algorithms are considered inadequate to manage the volume, variety, velocity, ...
In the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to gen...
In the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to gen...
One of the most appealing features of fuzzy rule-based classifiers is the capability of explaining h...
One of the most appealing features of fuzzy rule-based classifiers is the capability of explaining h...
Abstract — Big data has become one of the emergent topics when learning from data is involved. The n...
Fuzzy decision trees (FDTs) have shown to be an effective solution in the framework of fuzzy classif...
Fuzzy decision trees (FDTs) have shown to be an effective solution in the framework of fuzzy classif...
Fuzzy rule-based classifiers (FRBCs) have been widely exploited in several engineering applications,...
The significance of addressing Big Data applications is beyond all doubt. The current ability of ext...
The Era of Big Data has forced researchers to explore new distributed solutions for building fuzzy c...
Classical data mining algorithms are considered inadequate to manage the volume, variety, velocity, ...
In the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to gen...
AbstractNowadays, a huge amount of data are generated, often in very short time intervals and in var...
Nowadays, a huge amount of data are generated, often in very short time intervals and in various for...
Classical data mining algorithms are considered inadequate to manage the volume, variety, velocity, ...
In the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to gen...
In the last years, multi-objective evolutionary algorithms (MOEAs) have been extensively used to gen...
One of the most appealing features of fuzzy rule-based classifiers is the capability of explaining h...
One of the most appealing features of fuzzy rule-based classifiers is the capability of explaining h...
Abstract — Big data has become one of the emergent topics when learning from data is involved. The n...
Fuzzy decision trees (FDTs) have shown to be an effective solution in the framework of fuzzy classif...
Fuzzy decision trees (FDTs) have shown to be an effective solution in the framework of fuzzy classif...
Fuzzy rule-based classifiers (FRBCs) have been widely exploited in several engineering applications,...
The significance of addressing Big Data applications is beyond all doubt. The current ability of ext...
The Era of Big Data has forced researchers to explore new distributed solutions for building fuzzy c...