The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into representing compositional structure. Although an adequate model when dealing with limited data, the capacity of RAAM to scale-up to real-world tasks has been frequently questioned. RAAM networks are difficult to train (due to the moving target effect) and as such training times can be lengthy. Investigations into RAAM have produced many variants in an attempt to overcome such limitations. We outline how one such model ((S)RAAM) is able to quickly produce context-sensitive representations that may be used to aid a deterministic parsing process. By substituting a symbolic stack in an existing hybrid parser, we show that (S)RAAM is more than ca...
We examine two connectionist networks—a fractal learning neural network (FLNN) and a Sim-ple Recurre...
Fodor and Pylyshyn argued that connectionist models could not be used to exhibit and explain a pheno...
Abstract: "Many recent connectionist models can be categorized as associative memories or pattern cl...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
Representation poses important challenges to connectionism. The ability to structurally compose repr...
A technique is described that permits the on-line construction and dynamic modification of parse tre...
The traditional approach to complex problems in science and engineering is to break down each proble...
Artificial intelligence is a broad research area and there are many different reasons why it is inte...
The emphasis in the connectionist sentence-processing literature on distributed representation and e...
A long-standing difficulty for connectionist modeling has been how to represent variable-sized recur...
A long-standing difficulty for connectionist modeling has been how to represent variable-sized recur...
This study empirically compares two distributed connectionist learning models trained to represent a...
Connectionist representations are mappings between elements in the problem domain and vectors of act...
A connectionist architecture is outlined which makes use of RAAM to generate representations for obj...
Recent advances in deep learning have provided fruitful applications for natural language processing...
We examine two connectionist networks—a fractal learning neural network (FLNN) and a Sim-ple Recurre...
Fodor and Pylyshyn argued that connectionist models could not be used to exhibit and explain a pheno...
Abstract: "Many recent connectionist models can be categorized as associative memories or pattern cl...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
Representation poses important challenges to connectionism. The ability to structurally compose repr...
A technique is described that permits the on-line construction and dynamic modification of parse tre...
The traditional approach to complex problems in science and engineering is to break down each proble...
Artificial intelligence is a broad research area and there are many different reasons why it is inte...
The emphasis in the connectionist sentence-processing literature on distributed representation and e...
A long-standing difficulty for connectionist modeling has been how to represent variable-sized recur...
A long-standing difficulty for connectionist modeling has been how to represent variable-sized recur...
This study empirically compares two distributed connectionist learning models trained to represent a...
Connectionist representations are mappings between elements in the problem domain and vectors of act...
A connectionist architecture is outlined which makes use of RAAM to generate representations for obj...
Recent advances in deep learning have provided fruitful applications for natural language processing...
We examine two connectionist networks—a fractal learning neural network (FLNN) and a Sim-ple Recurre...
Fodor and Pylyshyn argued that connectionist models could not be used to exhibit and explain a pheno...
Abstract: "Many recent connectionist models can be categorized as associative memories or pattern cl...