Recurrent neural networks have recently been shown to have the ability to learn finite state automata (FSA’s) from examples. In this paper it is shown, based on empirical analyses, that second-order networks which are trained to learn FSA’s tend to form discrete clusters as the state representation in the hidden unit activation space. This observation is used to define ‘self-clustering’ networks which automatically extract discrete state machines from the learned network. However, the problem of instability on long test strings is a factor in the generalization performance of recurrent networks - in essence, because of the analog nature of the state representation, the network gradually “forgets” where the individual state regions are. To a...
One of the issues in any learning model is how it scales with problem size. Neural networks have no...
There has been a lot of interest in the use of discrete-time recurrent neu-ral nets (DTRNN) to learn...
There has been a lot of interest in the use of discrete-time recurrent neural nets (DTRNN) to learn ...
Recurrent neural networks have recently been shown to have the ability to learn finite state automat...
Abstract—Deterministic behavior can be modeled conveniently in the framework of finite automata. We ...
The extraction of symbolic knowledge from trained neural networks and the direct encoding of (partia...
Recurrent neural networks that are trained to behave like deterministic finite-state automata (DFAs)...
this paper, clustering of hidden unit activations, or recurrent network state space, provides incomp...
We investigate the learning of deterministic finite-state automata (DFA's) with recurrent netwo...
Several recurrent networks have been proposed as representations for the task of formal language le...
A number of researchers have used discrete-time recurrent neural nets (DTRNN) to learn finite-state ...
We present two approaches to the analysis of the relationship between a recurrent neural network (RN...
Although recurrent neural nets have been moderately successful in learning to emulate finite-state m...
We describe a novel neural architecture for learning deterministic context-free grammars, or equival...
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
One of the issues in any learning model is how it scales with problem size. Neural networks have no...
There has been a lot of interest in the use of discrete-time recurrent neu-ral nets (DTRNN) to learn...
There has been a lot of interest in the use of discrete-time recurrent neural nets (DTRNN) to learn ...
Recurrent neural networks have recently been shown to have the ability to learn finite state automat...
Abstract—Deterministic behavior can be modeled conveniently in the framework of finite automata. We ...
The extraction of symbolic knowledge from trained neural networks and the direct encoding of (partia...
Recurrent neural networks that are trained to behave like deterministic finite-state automata (DFAs)...
this paper, clustering of hidden unit activations, or recurrent network state space, provides incomp...
We investigate the learning of deterministic finite-state automata (DFA's) with recurrent netwo...
Several recurrent networks have been proposed as representations for the task of formal language le...
A number of researchers have used discrete-time recurrent neural nets (DTRNN) to learn finite-state ...
We present two approaches to the analysis of the relationship between a recurrent neural network (RN...
Although recurrent neural nets have been moderately successful in learning to emulate finite-state m...
We describe a novel neural architecture for learning deterministic context-free grammars, or equival...
We explore a network architecture introduced by Elman (1988) for predicting successive elements of a...
One of the issues in any learning model is how it scales with problem size. Neural networks have no...
There has been a lot of interest in the use of discrete-time recurrent neu-ral nets (DTRNN) to learn...
There has been a lot of interest in the use of discrete-time recurrent neural nets (DTRNN) to learn ...