A long-standing difficulty for connectionist modeling has been how to represent variable-sized recursive data structures, such as trees and lists, in fixed-width patterns. This paper presents a connectionist architecture which automatically develops compact distributed representations for such compositional structures, as well as efficient accessing mechanisms for them. Patterns which stand for the internal nodes of fixed-valence trees are devised through the recursive use of back-propagation on three-layer autoassociative encoder networks. The resulting representations are novel, in that they combine apparently immiscible aspects of features, pointers, and symbol structures. They form a bridge between the data structures necessary for high...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
Abstract. In this paper three problems for a connectionist account of language are considered: 1. Wh...
A structured organization of information is typically required by symbolic processing. On the other ...
A long-standing difficulty for connectionist modeling has been how to represent variable-sized recur...
Representation poses important challenges to connectionism. The ability to structurally compose repr...
I will describe my recent results on the automatic development of fixed-width recursive distributed ...
We present an approach to the structure unification problem using distributed representations of hie...
This study empirically compares two distributed connectionist learning models trained to represent a...
We present an approach to the structure unification problem using distributed representations of hie...
A naturally structured information is typical in symbolic processing. Nonetheless, learning in conne...
Recursive neural networks are a new connectionist model recently introduced for processing graphs. L...
Connectionist representations are mappings between elements in the problem domain and vectors of act...
Recursive neural networks are a powerful tool for processing structured data, thus filling the gap b...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
While neural networks are very successfully applied to the processing of fixed-length vectors and va...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
Abstract. In this paper three problems for a connectionist account of language are considered: 1. Wh...
A structured organization of information is typically required by symbolic processing. On the other ...
A long-standing difficulty for connectionist modeling has been how to represent variable-sized recur...
Representation poses important challenges to connectionism. The ability to structurally compose repr...
I will describe my recent results on the automatic development of fixed-width recursive distributed ...
We present an approach to the structure unification problem using distributed representations of hie...
This study empirically compares two distributed connectionist learning models trained to represent a...
We present an approach to the structure unification problem using distributed representations of hie...
A naturally structured information is typical in symbolic processing. Nonetheless, learning in conne...
Recursive neural networks are a new connectionist model recently introduced for processing graphs. L...
Connectionist representations are mappings between elements in the problem domain and vectors of act...
Recursive neural networks are a powerful tool for processing structured data, thus filling the gap b...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
While neural networks are very successfully applied to the processing of fixed-length vectors and va...
The Recursive Auto-Associative Memory (RAAM) has come to dominate connectionist investigations into ...
Abstract. In this paper three problems for a connectionist account of language are considered: 1. Wh...
A structured organization of information is typically required by symbolic processing. On the other ...