SCREEN: Learning a Flat Syntactic and Semantic Spoken Language Analysis Using Artificial Neural Networks
Journal of Artificial Intelligence Research,
Volume 6,
Number 1,
pages 35--85,
- Jan 1997
Previous approaches of analyzing spontaneously spoken language often have been based
on encoding syntactic and semantic knowledge manually and symbolically. While there
has been some progress using statistical or connectionist language models, many current
spoken-language systems still use a relatively brittle, hand-coded symbolic grammar or
symbolic semantic component.
In contrast, we describe a so-called screening approach for learning robust processing
of spontaneously spoken language. A screening approach is a
at analysis which uses shallow sequences of category representations for analyzing an utterance at various syntactic,
semantic and dialog levels. Rather than using a deeply structured symbolic analysis, we
use a
at connectionist analysis. This screening approach aims at supporting speech and
language processing by using (1) data-driven learning and (2) robustness of connectionist
networks. In order to test this approach, we have developed the screen system which is
based on this new robust, learned and
at analysis.
In this paper, we focus on a detailed description of screen's architecture, the
at
syntactic and semantic analysis, the interaction with a speech recognizer, and a detailed
evaluation analysis of the robustness under the in
uence of noisy or incomplete input.
The main result of this paper is that
at representations allow more robust processing of
spontaneous spoken language than deeply structured representations. In particular, we
show how the fault-tolerance and learning capability of connectionist networks can support
a
at analysis for providing more robust spoken-language processing within an overall
hybrid symbolic/connectionist framework.
@Article{WW97, author = {Wermter, Stefan and Weber, Volker}, title = {SCREEN: Learning a Flat Syntactic and Semantic Spoken Language Analysis Using Artificial Neural Networks}, journal = {Journal of Artificial Intelligence Research}, number = {1}, volume = {6}, pages = {35--85}, year = {1997}, month = {Jan}, publisher = {Elsevier}, doi = {}, }