Approaches combining methods based on decision trees and neural networks are an important examples of hybrid strategies. The problem of classification of the table-based data is considered. There is a number of studies sharing the idea of unifying neural network and decision tree models. Besides the most common idea of straightforward using the ensemble of these two algorithms, there are Deep Neural Decision Trees (DNDF) – a notion for a neural decision trees with the split functions realised as a randomized multilayer perceptrons. In the applications where the trees approach is feasible, forest of such trees also can be applied as a generalization. There are many approaches in constructing a forest of trees and different methods using...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Neural networks (NNs) and decision trees (DTs) are both popular models of machine learning, yet comi...
Pattern recognition problems involve two main issues: feature formulation and classifier design. Thi...
We present Deep Neural Decision Forests - a novel approach that unifies classification trees with th...
In this paper we present comparative study of two frequently used methods for prediction and classif...
This paper investigates the connections between two state of the art classifiers: decision forests (...
This paper presents an empirical comparison of three classification methods: neural networks, decisi...
A multiple classifier system can only improve the performance when the members in the system are div...
There is a lot of approaches for data classification problems resolving. The most significant data c...
Given an ensemble of randomized regression trees, it is possible to restructure them as a collection...
Twenty two decision tree, nine statistical, and two neural network classifiers are compared on thirt...
This thesis explores the relationship between two classification models: decision trees and multilay...
The article concerns the problem of classification based on independent data sets—local decision tab...
In this work we present Neural Decision Forests, a novel approach to jointly tackle data representat...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Neural networks (NNs) and decision trees (DTs) are both popular models of machine learning, yet comi...
Pattern recognition problems involve two main issues: feature formulation and classifier design. Thi...
We present Deep Neural Decision Forests - a novel approach that unifies classification trees with th...
In this paper we present comparative study of two frequently used methods for prediction and classif...
This paper investigates the connections between two state of the art classifiers: decision forests (...
This paper presents an empirical comparison of three classification methods: neural networks, decisi...
A multiple classifier system can only improve the performance when the members in the system are div...
There is a lot of approaches for data classification problems resolving. The most significant data c...
Given an ensemble of randomized regression trees, it is possible to restructure them as a collection...
Twenty two decision tree, nine statistical, and two neural network classifiers are compared on thirt...
This thesis explores the relationship between two classification models: decision trees and multilay...
The article concerns the problem of classification based on independent data sets—local decision tab...
In this work we present Neural Decision Forests, a novel approach to jointly tackle data representat...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Neural networks (NNs) and decision trees (DTs) are both popular models of machine learning, yet comi...
Pattern recognition problems involve two main issues: feature formulation and classifier design. Thi...