Towards a More Intuitive Sinhala Chatbot: Leveraging NLU for Enhanced Intent Identification and Entity Extraction

Pasan Avishka, Nirubikaa Ravikumar, K. Banujan, Hansi Gunasinghe
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Abstract

In the fast-paced and ever-changing world of conversational AI, chatbots have become essential interfaces for user interactions in various domains, especially when supporting different languages. This study delves into the development of chatbots and their ability to understand language, explicitly focusing on the Sinhala language. The effectiveness of two platforms, Rasa NLU and Microsoft LUIS, were compared in identifying and extracting intents. Both platforms showed proficiency, but Rasa stood out for its flexibility, cost-effectiveness and accurate intent recognition. A case study in the restaurant domain was conducted to demonstrate the system’s capabilities. An architecture was created that can interpret Sinhala expressions and analyze intents using the NLU engine. The study defined four intents: Food Ordering, Get In Touch, About Restaurant and None. The findings highlight how this architecture has the potential to accurately interpret intents during chatbot development regardless of the conversational language used. This research aims to contribute insights to developers, linguists and AI enthusiasts involved in language-specific chatbot development by emphasizing its promises and challenges.
实现更直观的僧伽罗语聊天机器人:利用 NLU 增强意图识别和实体提取
在快节奏和不断变化的对话式人工智能世界中,聊天机器人已成为各领域用户交互的重要界面,尤其是在支持不同语言的情况下。本研究深入探讨了聊天机器人的发展及其理解语言的能力,并明确将重点放在僧伽罗语上。研究比较了 Rasa NLU 和 Microsoft LUIS 这两个平台在识别和提取意图方面的效果。两个平台都表现出了良好的性能,但 Rasa 因其灵活性、成本效益和准确的意图识别而脱颖而出。为了展示该系统的能力,我们在餐厅领域进行了一项案例研究。创建的架构可以解释僧伽罗语表达,并使用 NLU 引擎分析意图。研究定义了四种意图:订餐、取得联系、关于餐厅和无。研究结果凸显了该架构在聊天机器人开发过程中准确解读意图的潜力,无论使用的是哪种会话语言。这项研究旨在通过强调其前景和挑战,为参与特定语言聊天机器人开发的开发人员、语言学家和人工智能爱好者提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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