Hybrid Neural Symbolic Agent Architectures for Multimedia
Proceedings of the IEE Colloquium on Neural Network in Interactive Multimedia Systems,
doi: 10.1049/ic:19980713
- Oct 1998
Recently there has been a lot of interest in adaptive symbolic and neural agents for different
tasks, for instance speech/language integration and image/text integration in various multimedia
applications [l, 7, 11, 10, 14, 2, 8, 41. Hybrid neural symbolic methods have been shown to
be able to reach a level where they can actually be further developed in real-world scenarios.
-4 combination of symbolic and neural agents is possible in various neural symbolic processing
architectures, which contain both symbolic and neural agents appropriate for to a specific task,
e.g. integrating speech, text and images for multimedia.
In this paper we concentrate on general principles of neural and hybrid architectures for multimedia in general. From the perspective of knowledge engineering, hybrid symbolic/neural agents
are advantageous since different mutually complementary properties can be combined. Symbolic
representations have advantages with respect to easy interpretation, explicit control, fast initial
coding, dynamic variable binding and knowledge abstraction. On the other hand, neural agents
show advantages for gradual analog plausibility, learning, robust fault-tolerant processing, and
generalization to similar input. Since these advantages are mutually complementary, a hybrid
symbolic neural architecture can be useful if different processing strategies have to be supported.
@InProceedings{Wer98a, author = {Wermter, Stefan}, title = {Hybrid Neural Symbolic Agent Architectures for Multimedia}, booktitle = {Proceedings of the IEE Colloquium on Neural Network in Interactive Multimedia Systems}, editors = {}, number = {}, volume = {}, pages = {}, year = {1998}, month = {Oct}, publisher = {}, doi = {10.1049/ic:19980713}, }