Logistic Model Trees have been shown to be very accurate and compact classifiers [8]. Their greatest disadvantage is the computational complexity of inducing the logistic regression models in the tree. We address this issue by using the AIC criterion [1] instead of cross-validation to prevent overfitting these models. In addition, a weight trimming heuristic is used which produces a significant speedup. We compare the training time and accuracy of the new induction process with the original one on various datasets and show that the training time often decreases while the classification accuracy diminishes only slightly
This paper proposes a new classification model called logistic circuits. On MNIST and Fashion datase...
The existence of massive datasets raises the need for algorithms that make efficient use of resource...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Logistic Model Trees have been shown to be very accurate and compact classifiers [8]. Their greatest...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
Expert and intelligent systems understand the underlying information behind the data by relying on a...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
In statistics, logistic regression is a regression model to predict a binomially distributed respons...
Recently, improved classification performance has been achieved by encouraging independent contribut...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
This paper proposes a new classification model called logistic circuits. On MNIST and Fashion datase...
The existence of massive datasets raises the need for algorithms that make efficient use of resource...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Logistic Model Trees have been shown to be very accurate and compact classifiers [8]. Their greatest...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
Abstract. Tree induction methods and linear models are popular techniques for supervised learning ta...
Expert and intelligent systems understand the underlying information behind the data by relying on a...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
In statistics, logistic regression is a regression model to predict a binomially distributed respons...
Recently, improved classification performance has been achieved by encouraging independent contribut...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
Binary classification is a core data mining task. For large datasets or real-time applications, desi...
This paper proposes a new classification model called logistic circuits. On MNIST and Fashion datase...
The existence of massive datasets raises the need for algorithms that make efficient use of resource...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...