We consider the sample complexity of concept learning when we classify by using a fixed Boolean function of the outputs of a number of different classifiers. Here, we take into account the ‘margins’ of each of the constituent classifiers. A special case is that in which the constituent classifiers are linear threshold functions (or perceptrons) and the fixed Boolean function is the majority function. This corresponds to a ‘committee of perceptrons’, an artificial neural network (or circuit) consisting of a single layer of perceptrons (or linear threshold units) in which the output of the network is defined to be the majority output of the perceptrons. Recent work of Auer et al. studied the computational properties of such networks (where th...
In this paper we investigate multi-layer perceptron networks in the task domain of Boolean functions...
This paper characterizes a class of boolean functions, designated of hard-threshold type, in terms o...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
AbstractWe consider the generalization error of concept learning when using a fixed Boolean function...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
A boolean perceptron is a linear threshold function over the discrete boolean domain (0, 1)(n). That...
Abstract. We analyze the performance of the widely studied Perceptron andWinnow algorithms for learn...
Sample complexity results from computational learning theory, when applied to neural network learnin...
This paper aims to place neural networks in the context of boolean circuit complexity. We define app...
This report surveys some connections between Boolean functions and artificial neural networks. The f...
Recent theoretical results for pattern classification with thresholded real-valued functions (such a...
Perceptron-like learning rules are known to require exponentially many correction steps in order to ...
For classes of concepts defined by certain classes of analytic functions depending on n parameters,...
There are many types of activity which are commonly known as ‘learning’. Here, we shall discuss a ma...
A linearly separable Boolean function is learned by a diluted perceptron with optimal stability. A d...
In this paper we investigate multi-layer perceptron networks in the task domain of Boolean functions...
This paper characterizes a class of boolean functions, designated of hard-threshold type, in terms o...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
AbstractWe consider the generalization error of concept learning when using a fixed Boolean function...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
A boolean perceptron is a linear threshold function over the discrete boolean domain (0, 1)(n). That...
Abstract. We analyze the performance of the widely studied Perceptron andWinnow algorithms for learn...
Sample complexity results from computational learning theory, when applied to neural network learnin...
This paper aims to place neural networks in the context of boolean circuit complexity. We define app...
This report surveys some connections between Boolean functions and artificial neural networks. The f...
Recent theoretical results for pattern classification with thresholded real-valued functions (such a...
Perceptron-like learning rules are known to require exponentially many correction steps in order to ...
For classes of concepts defined by certain classes of analytic functions depending on n parameters,...
There are many types of activity which are commonly known as ‘learning’. Here, we shall discuss a ma...
A linearly separable Boolean function is learned by a diluted perceptron with optimal stability. A d...
In this paper we investigate multi-layer perceptron networks in the task domain of Boolean functions...
This paper characterizes a class of boolean functions, designated of hard-threshold type, in terms o...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...