Implementing a Chatbot Solution for Learning Management System
- URL: http://arxiv.org/abs/2206.13187v2
- Date: Thu, 30 Jun 2022 15:58:40 GMT
- Title: Implementing a Chatbot Solution for Learning Management System
- Authors: Dimitrios Chaskopoulos, Jonas Eilertsen H{\ae}gdahl, Petter Sagvold,
Claire Trinquet, Maryam Edalati
- Abstract summary: One of the main problem that chatbots face today is to mimic human language.
Extreme programming methodology was chosen to use integrate ChatterBot, Pyside2, web scraping and Tampermonkey into Blackboard.
We showed the plausibility of integrating an AI bot in an educational setting.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Innovation is a key component in trying new solutions for the students to
learn efficiently and in ways that correspond to their own experience, where
chatbots are one of these new solutions. One of the main problem that chatbots
face today is to mimic human language, where they try to find the best answer
to an input, which is not how a human conversation usually works, rather taking
into account the previous messages and building onto them. Extreme programming
methodology was chosen to use integrate ChatterBot, Pyside2, web scraping and
Tampermonkey into Blackboard as a test case. Problems occurred with the bot and
more training was needed for the bot to work perfectly, but the integration and
web scraping worked, giving us a chatbot that was able to talk with. We showed
the plausibility of integrating an AI bot in an educational setting.
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