Concepedia

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A HYBRID APPROACH FOR ARABIC LITERAL AMOUNTS RECOGNITION

32

Citations

11

References

2004

Year

Abstract

The challenge of hybrid learning systems is to use the information provided by one source of information to compensate information missing from the other source. The neuro–symbolic combination represents a promising research way. The synergy between the symbolic (theoretical) and neural (empirical) approaches makes their combination more effective than each of them used alone. In this article, we describe an Arabic literal amount recognition system that uses a neuro-symbolic classifier. For this purpose, we first extract structural features from the words contained in the amounts vocabulary. Then, we build a symbolic knowledge base that reflects a classification of words according to their features. In a third step, we use a translation algorithm (from rules to neural network) to determine the neural network architecture and to initialize its connections with specific values rather than random values, as is the case in classical neural networks. This

References

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