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SOFT COMPUTING-BASED APPROACH FOR NATURAL LANGUAGE CALL ROUTING SYSTEMS

机译:基于软计算的自然语言呼叫路由系统方法

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Call routing based on Natural Language Understanding remains a complex and challenging research area in machine intelligence and language understanding. This is despite the apparent limited success of a few commercial natural language call routing systems. This challenge is due to the limitations imposed by the speech recognition engine, the language model, and the natural language parser. In this paper, we propose a system to enhance the performance of automated call routing applications based on knowledge-based networks. The main focus of this paper is on the enhancement of the performance at the Natural Language Understanding level. We investigate soft computing techniques such as Learning Vector Quantization and the Genetic Algorithm. We find that the Genetic Algorithm outperforms Learning Vector Quantization. We achieve an accuracy rate of 84.12% using the Genetic Algorithm vs. 73% for Learning Vector Quantization.
机译:基于自然语言理解的呼叫路由仍然是机器智能和语言理解的复杂和具有挑战性的研究领域。尽管少数商业自然语言呼叫路由系统,但这是众所周滞的有限成功。这一挑战是由于语音识别引擎,语言模型和自然语言解析器所施加的限制。在本文中,我们提出了一种基于基于知识的网络的自动呼叫路由应用程序的性能。本文的主要重点是在自然语言理解水平上提高性能。我们研究了诸如学习矢量量化和遗传算法之类的软计算技术。我们发现遗传算法优于学习矢量量化。我们使用遗传算法与73%的学习矢量量化实现了84.12%的精度率。

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