A Hybrid and Connectionist Architecture for a SCANning Understanding
Proceedings of the 10th European Conference on Artificial Intelligence,
Editors: Neumann, B.,
pages 186--192,
- Aug 1992
This paper describes a general architecture SCAN for hybrid symbolic connectionist processing of natural language phrases. SCAN's architecture shows how learned connectionist
domain-dependent semantic representations can be combined with encoded symbolic syntactic representations. Within this general architecture we focus on a connectionist model for
semantic classication based on a scanning understanding of phrases. We specify strategies
at the top-most theory level and we show how these strategies are realized in a recurrent
connectionist plausibility network at the underlying representation level. In particular, this
model demonstrates that a recurrent connectionist network can learn a semantic memory
model for phrase classication based on a scanning understanding.
@InProceedings{W92,
author = {Wermter, Stefan},
title = {A Hybrid and Connectionist Architecture for a SCANning Understanding},
booktitle = {Proceedings of the 10th European Conference on Artificial Intelligence},
journal = {}
editors = {Neumann, B.},
number = {}
volume = {}
pages = {186--192},
year = {1992},
month = {Aug},
publisher = {}
doi = {}
}