Build-a-Bot: Teaching Conversational AI Using a Transformer-Based Intent
Recognition and Question Answering Architecture
- URL: http://arxiv.org/abs/2212.07542v1
- Date: Wed, 14 Dec 2022 22:57:44 GMT
- Title: Build-a-Bot: Teaching Conversational AI Using a Transformer-Based Intent
Recognition and Question Answering Architecture
- Authors: Kate Pearce, Sharifa Alghowinem, Cynthia Breazeal
- Abstract summary: This paper proposes an interface for students to learn the principles of artificial intelligence by using a natural language pipeline to train a customized model to answer questions based on their own school curriculums.
The pipeline teaches students data collection, data augmentation, intent recognition, and question answering by having them work through each of these processes while creating their AI agent.
- Score: 15.19996462016215
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As artificial intelligence (AI) becomes a prominent part of modern life, AI
literacy is becoming important for all citizens, not just those in technology
careers. Previous research in AI education materials has largely focused on the
introduction of terminology as well as AI use cases and ethics, but few allow
students to learn by creating their own machine learning models. Therefore,
there is a need for enriching AI educational tools with more adaptable and
flexible platforms for interested educators with any level of technical
experience to utilize within their teaching material. As such, we propose the
development of an open-source tool (Build-a-Bot) for students and teachers to
not only create their own transformer-based chatbots based on their own course
material, but also learn the fundamentals of AI through the model creation
process. The primary concern of this paper is the creation of an interface for
students to learn the principles of artificial intelligence by using a natural
language pipeline to train a customized model to answer questions based on
their own school curriculums. The model uses contexts given by their
instructor, such as chapters of a textbook, to answer questions and is deployed
on an interactive chatbot/voice agent. The pipeline teaches students data
collection, data augmentation, intent recognition, and question answering by
having them work through each of these processes while creating their AI agent,
diverging from previous chatbot work where students and teachers use the bots
as black-boxes with no abilities for customization or the bots lack AI
capabilities, with the majority of dialogue scripts being rule-based. In
addition, our tool is designed to make each step of this pipeline intuitive for
students at a middle-school level. Further work primarily lies in providing our
tool to schools and seeking student and teacher evaluations.
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