Due to copyright restrictions, the access to the full text of this article is only available via subscription.Most neurons in the central nervous system exhibit all-or-none firing behavior. This makes Boolean Functions (BFs) tractable candidates for representing computations performed by neurons, especially at finer time scales, even though BFs may fail to capture some of the richness of neuronal computations such as temporal dynamics. One biologically plausible way to realize BFs is to compute a weighted sum of products of inputs and pass it through a heaviside step function. This representation is called a Higher Order Neuron (HON). A HON can trivially represent any n-variable BF with 2n product terms. There have been several algorithm...
Artificial Neural Networks (ANNs) have been developed in an attempt to emulate the information proce...
The signal transformations that take place in high-level sensory regions of the brain remain enigmat...
<p>(A) Number of computable representative positive Boolean functions depending on the number of inp...
We present alternative algorithms that avoid the combinatorial explosion problem, and that emerge ro...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
This paper describes and evaluates sevaral new methods for the construction of high order perceptron...
This paper deals with the representation of Boolean functions using artificial neural networks and p...
This report surveys some connections between Boolean functions and artificial neural networks. The f...
This paper presents a new type of neuron, called Boolean neuron. We suggest algorithms for decomposi...
Constructive learning algorithms are important because they address two practical difficulties of le...
This report surveys some connections between Boolean functions and artificial neural networks. The f...
A new algorithm for learning representations in Boolean neural networks, where the inputs and output...
The nervous system encodes information about external stimuli through sophisticated computations per...
Artificial Neural Networks have been widely probed by worldwide researchers to cope with the problem...
The integration of excitatory inputs in dendrites is non-linear: multiple excita-tory inputs can pro...
Artificial Neural Networks (ANNs) have been developed in an attempt to emulate the information proce...
The signal transformations that take place in high-level sensory regions of the brain remain enigmat...
<p>(A) Number of computable representative positive Boolean functions depending on the number of inp...
We present alternative algorithms that avoid the combinatorial explosion problem, and that emerge ro...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
This paper describes and evaluates sevaral new methods for the construction of high order perceptron...
This paper deals with the representation of Boolean functions using artificial neural networks and p...
This report surveys some connections between Boolean functions and artificial neural networks. The f...
This paper presents a new type of neuron, called Boolean neuron. We suggest algorithms for decomposi...
Constructive learning algorithms are important because they address two practical difficulties of le...
This report surveys some connections between Boolean functions and artificial neural networks. The f...
A new algorithm for learning representations in Boolean neural networks, where the inputs and output...
The nervous system encodes information about external stimuli through sophisticated computations per...
Artificial Neural Networks have been widely probed by worldwide researchers to cope with the problem...
The integration of excitatory inputs in dendrites is non-linear: multiple excita-tory inputs can pro...
Artificial Neural Networks (ANNs) have been developed in an attempt to emulate the information proce...
The signal transformations that take place in high-level sensory regions of the brain remain enigmat...
<p>(A) Number of computable representative positive Boolean functions depending on the number of inp...