Agent Based Arabic Language Understanding

Arabic language understanding (ALU) computing is considered an Al-hard task In this paper, we propose an agent model for ALU problem. This agent is detailed in this paper. An ALU system is developed for 'voice activated drawing interface'. Our experiment shows that agent-based ALU can be very robust and reliable in comparison to text analysis by using rules of Arabic language, parts of speech and structure of sentence.

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