This paper aims to explore the implementation of part of speech tagger (POS) for Arabic Language using neural computing. The Arabic Language is one of the most important languages in the world. More than 422 million people use the Arabic Language as the primary media for writing and speaking. The part of speech is one crucial stage for most natural languages processing. Many factors affect the performance of POS including the type of language, the corpus size, the tag-set, the computation model. The artificial neural network (ANN) is modern paradigms that simulate the human behavior to learn, test and generalize the solutions. It maps the non-linear function into a simple linear model. Several researchers implemented the POS using ANN. This work proves that the using of ANN in utilizing the POS is achieving very well results. The performance has based the rate of accuracy, which most of the proposed models were obtained high accuracy between 90% and 99%. Besides, the using of neural models required less number of tag-sets for training and testing of the model. Most of NLP applications required accurate and fast POS, which is offered by the neural model.
This paper aims to explore the implementation of part of speech tagger (POS) for Arabic Language using neural computing. The Arabic Language is one of the most important languages in the world. More than 422 million people use the Arabic Language as the primary media for writing and speaking. The pa...
مادة فرعية