Ensembles of classifiers are among the best performing classifiers available in many data mining applications, including the mining of data streams. Rather than training one classifier, multiple classifiers are trained, and their predictions are combined according to a given voting schedule. An important prerequisite for ensembles to be successful is that the individual models are diverse. One way to vastly increase the diversity among the models is to build an heterogeneous ensemble, comprised of fundamentally different model types. However, most ensembles developed specifically for the dynamic data stream setting rely on only one type of base-level classifier, most often Hoeffding Trees. We study the use of heterogeneous ensembles for dat...
Most information sources in the current technological world are generating data sequentially and rap...
Bagging, boosting and Random Forests are classical ensemble methods used to improve the performance ...
Web-based learning technologies of educational institutions store a massive amount of interaction da...
Ensembles of classifiers are among the best performing classifiers available in many data mining app...
Ensembles of classifiers are among the best performing classifiers available in many data mining app...
Ensembles of classifiers are among the best performing classifiers available in many data mining app...
Ensemble learning has been widely applied to both batch data classification and streaming data class...
Numerous information system applications produce a huge amount of non-stationary streaming data that...
This dissertation documents a study of the performance characteristics of algorithms designed to mit...
Data Stream mining is an important emerging topic in the data mining and machine learning domain. In...
In many applications of information systems learning algorithms have to act in dynamic environments ...
In recent years, the prevalence of technological advances has led to an enormous and ever-increasing...
A priori determining the ideal number of component classifiers of an ensemble is an important proble...
Learning in non-stationary environments is a challenging task which requires the updating of predict...
Most information sources in the current technological world are generating data sequentially and rap...
Bagging, boosting and Random Forests are classical ensemble methods used to improve the performance ...
Web-based learning technologies of educational institutions store a massive amount of interaction da...
Ensembles of classifiers are among the best performing classifiers available in many data mining app...
Ensembles of classifiers are among the best performing classifiers available in many data mining app...
Ensembles of classifiers are among the best performing classifiers available in many data mining app...
Ensemble learning has been widely applied to both batch data classification and streaming data class...
Numerous information system applications produce a huge amount of non-stationary streaming data that...
This dissertation documents a study of the performance characteristics of algorithms designed to mit...
Data Stream mining is an important emerging topic in the data mining and machine learning domain. In...
In many applications of information systems learning algorithms have to act in dynamic environments ...
In recent years, the prevalence of technological advances has led to an enormous and ever-increasing...
A priori determining the ideal number of component classifiers of an ensemble is an important proble...
Learning in non-stationary environments is a challenging task which requires the updating of predict...
Most information sources in the current technological world are generating data sequentially and rap...
Bagging, boosting and Random Forests are classical ensemble methods used to improve the performance ...
Web-based learning technologies of educational institutions store a massive amount of interaction da...