This paper investigates the generation of neural networks through the induction of binary trees of threshold logic units (TLUs). Initially, we describe the framework for our tree construction algorithm and show how it helps to bridge the gap between pure connectionist (neural network) and symbolic (decision tree) paradigms. We also show how the trees of threshold units that we induce can be transformed into an isomorphic neural network topology. Several methods for learning the linear discriminant functions at each node of the tree structure are examined and shown to produce accuracy results that are comparable to classical information theoretic methods for constructing decision trees (which use single feature tests at each node), but produ...
Many tasks can be reduced to the problem of pattern recognition and the vast majority of application...
In this paper we present a methodology for extracting decision trees from input data generated from ...
A new family of neural network architectures is presented. This family of architectures solves the p...
Abstract. We investigate the generation of neural networks through the induction of binary trees of ...
One of the problems encountered in neural network applications is the choice of a suitable initial n...
This paper investigates an algorithm for the construction of decisions trees comprised of linear thr...
Existing approaches to the inductive learning problem include Symbolic and Connectionist algorithms....
I li.i DISTRIBUIYTON AVAILABILITY STATE MEK 1ýc. DISTRIBUTION COOL Approved for public release; Dist...
A general method for building and training multilayer perceptrons composed of linear threshold units...
This thesis explores the relationship between two classification models: decision trees and multilay...
This paper describes a method of constructing one-hidden layer feedforward linear threshold networks...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Recent work on neuro-symbolic inductive logic programming has led to promising approaches that can l...
Abstract: We consider a 2-layer, 3-node, n-input neural network whose nodes compute linear threshold...
Classification is one of the data mining problems receiving great attention recently in the database...
Many tasks can be reduced to the problem of pattern recognition and the vast majority of application...
In this paper we present a methodology for extracting decision trees from input data generated from ...
A new family of neural network architectures is presented. This family of architectures solves the p...
Abstract. We investigate the generation of neural networks through the induction of binary trees of ...
One of the problems encountered in neural network applications is the choice of a suitable initial n...
This paper investigates an algorithm for the construction of decisions trees comprised of linear thr...
Existing approaches to the inductive learning problem include Symbolic and Connectionist algorithms....
I li.i DISTRIBUIYTON AVAILABILITY STATE MEK 1ýc. DISTRIBUTION COOL Approved for public release; Dist...
A general method for building and training multilayer perceptrons composed of linear threshold units...
This thesis explores the relationship between two classification models: decision trees and multilay...
This paper describes a method of constructing one-hidden layer feedforward linear threshold networks...
A general method for building and training multilayer perceptrons composed of linear threshold units...
Recent work on neuro-symbolic inductive logic programming has led to promising approaches that can l...
Abstract: We consider a 2-layer, 3-node, n-input neural network whose nodes compute linear threshold...
Classification is one of the data mining problems receiving great attention recently in the database...
Many tasks can be reduced to the problem of pattern recognition and the vast majority of application...
In this paper we present a methodology for extracting decision trees from input data generated from ...
A new family of neural network architectures is presented. This family of architectures solves the p...