Enhancing Conversational AI Model Performance and Explainability for Sinhala-English Bilingual Speakers

I. Dissanayake, Shamikh Hameed, Akalanka Sakalasooriya, Dinushi Jayasinghe, Lakmini Abeywardhana, D. Wijendra
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Abstract

Natural language processing has become essential to modern conversational tools and dialogue engines, including Chatbots. However, applying natural language processing to low-resource languages is challenging due to their lack of digital presence. Sinhala is the native language of approximately nineteen million people in Sri Lanka and is one of many low-resource languages. Moreover, the increase in using code-switching: alternating two or more languages within the same conversation, and code-mixing: the practice of representing words of a language using characters of another language, has become another major issue when processing natural languages. Apart from natural language processing, the explainability of opaque machine learning models utilized in chatbots has become another prominent concern. None of the existing modern chatbot development platforms supports explainability and relies on a performance score such as accuracy or f1-score. This paper proposes a no-code chatbot development platform with a series of built-in novel natural language processing, model evaluation, and explainability tools to tackle the problems of processing Sinhala-English code-switching and code-mixing natural language data and model evaluation in modern chatbot development platforms.
为僧伽罗语-英语双语者增强会话AI模型的性能和可解释性
自然语言处理已经成为现代会话工具和对话引擎(包括聊天机器人)的关键。然而,将自然语言处理应用于低资源语言是具有挑战性的,因为它们缺乏数字存在。僧伽罗语是斯里兰卡大约1900万人的母语,是许多资源匮乏的语言之一。此外,代码转换(在同一对话中交替使用两种或两种以上的语言)和代码混合(用另一种语言的字符表示一种语言的单词)的使用增加已成为处理自然语言时的另一个主要问题。除了自然语言处理,聊天机器人中使用的不透明机器学习模型的可解释性已成为另一个突出问题。现有的现代聊天机器人开发平台都不支持可解释性,并且依赖于诸如准确性或f1-score之类的性能分数。本文提出了一个无代码聊天机器人开发平台,该平台内置了一系列新颖的自然语言处理、模型评估和可解释性工具,以解决现代聊天机器人开发平台中僧伽罗语-英语代码切换和代码混合自然语言数据的处理和模型评估问题。
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