Data mining and machine learning algorithms are trained on large datasets to find useful hidden patterns. These patterns can help to gain new insights and make accurate predictions. Usually, the training data is structured in a tabular format, where the rows represent the training instances and the columns represent the features of these instances. The feature values are usually real numbers and/or categories. As very large volumes of digital data are becoming available in many domains, the data is often summarized into manageable sizes for efficient handling. To aggregate data into histograms is one means to reduce the size of the data. However, traditional machine learning algorithms have a limited ability to learn from such data, and thi...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
International audienceThis book offers an application-oriented guide to random forests: a statistica...
(A) Decision trees use tree representations to solve problems, in which leaves represent class label...
Data mining and machine learning algorithms are trained on large datasets to find useful hidden patt...
A large volume of data has become commonplace in many domains these days. Machine learning algorithm...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
When applying learning algorithms to histogram data, bins of such variables are normally treated as ...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The paper examines the potential of a novel data mining method, the random forest classifier, to sup...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
Ensemble methods have gained attention over the past few decades and are effective tools in data min...
A gas turbine trip is an unplanned shutdown, of which the most relevant consequences are business in...
The extraction and exploitation of existing knowledge assets for supporting decision making and incr...
The plot shows the predictive performances for the different methods when normalized data were class...
Data analysis and machine learning have become an integrative part of the modern scientific methodol...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
International audienceThis book offers an application-oriented guide to random forests: a statistica...
(A) Decision trees use tree representations to solve problems, in which leaves represent class label...
Data mining and machine learning algorithms are trained on large datasets to find useful hidden patt...
A large volume of data has become commonplace in many domains these days. Machine learning algorithm...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
When applying learning algorithms to histogram data, bins of such variables are normally treated as ...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The paper examines the potential of a novel data mining method, the random forest classifier, to sup...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
Ensemble methods have gained attention over the past few decades and are effective tools in data min...
A gas turbine trip is an unplanned shutdown, of which the most relevant consequences are business in...
The extraction and exploitation of existing knowledge assets for supporting decision making and incr...
The plot shows the predictive performances for the different methods when normalized data were class...
Data analysis and machine learning have become an integrative part of the modern scientific methodol...
The Probabilistic random forest is a classification model which chooses a subset of features for eac...
International audienceThis book offers an application-oriented guide to random forests: a statistica...
(A) Decision trees use tree representations to solve problems, in which leaves represent class label...