Many problems encountered in practice involve the prediction of a continuous attribute associated with an example. This problem, known as regression, requires that samples of past experience with known continuous answers are examined and generalized in a regression model to be used in predicting future examples. Regression algorithms deeply investigated in statistics, machine learning and data mining usually lack measures to give an indication of how "good" the predictions are. Tolerance regions, i.e.. a range of possible predictive values, can provide a measure of reliability for every bare prediction. In this paper, we focus on tree-based prediction models, i.e., model trees, and resort to the inductive inference to output tolerance regio...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
We present and investigate ensembles of randomized model trees as a novel regression method. Such en...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
Many problems encountered in practice involve the prediction of a continuous attribute associated wi...
Abstract. Model trees are tree-based models that associate leaves with multiple linear models and ar...
Regression trees are tree-based models used to solve those prediction problems in which the response...
In many data mining tools that support regression tasks, training data are stored in a single table ...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Abstract. Tight coupling of data mining and database systems is a key issue in inductive databases. ...
Model trees are an extension of regression trees that associate leaves with multiple regression mode...
Abstract—Online predictive modeling of streaming data is a key task for big data analytics. In this ...
Model trees are an extension of regression trees that associate leaves with multiple regression mode...
Model trees, which are a type of decision tree with linear regression functions at the leaves, form ...
Model trees, which are a type of decision tree with linear regression functions at the leaves, form ...
This paper is concerned with the construction of regression and classification trees that are more a...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
We present and investigate ensembles of randomized model trees as a novel regression method. Such en...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
Many problems encountered in practice involve the prediction of a continuous attribute associated wi...
Abstract. Model trees are tree-based models that associate leaves with multiple linear models and ar...
Regression trees are tree-based models used to solve those prediction problems in which the response...
In many data mining tools that support regression tasks, training data are stored in a single table ...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Abstract. Tight coupling of data mining and database systems is a key issue in inductive databases. ...
Model trees are an extension of regression trees that associate leaves with multiple regression mode...
Abstract—Online predictive modeling of streaming data is a key task for big data analytics. In this ...
Model trees are an extension of regression trees that associate leaves with multiple regression mode...
Model trees, which are a type of decision tree with linear regression functions at the leaves, form ...
Model trees, which are a type of decision tree with linear regression functions at the leaves, form ...
This paper is concerned with the construction of regression and classification trees that are more a...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
We present and investigate ensembles of randomized model trees as a novel regression method. Such en...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...