Developing FB Chatbot Based on Deep Learning Using RASA Framework for
University Enquiries
- URL: http://arxiv.org/abs/2009.12341v1
- Date: Fri, 25 Sep 2020 17:01:19 GMT
- Title: Developing FB Chatbot Based on Deep Learning Using RASA Framework for
University Enquiries
- Authors: Yurio Windiatmoko, Ahmad Fathan Hidayatullah, Ridho Rahmadi
- Abstract summary: This research is a first stage development within fairly sufficient simulate data.
The concept is not something new in today society which is developing with recent technology.
This uses the FB platform because of the FB users have already reached up to 60.8% of its entire population in Indonesia.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Smart systems for Universities powered by Artificial Intelligence have been
massively developed to help humans in various tasks. The chatbot concept is not
something new in today society which is developing with recent technology.
College students or candidates of college students often need actual
information like asking for something to customer service, especially during
this pandemic, when it is difficult to have an immediate face-to-face meeting.
Chatbots are functionally helping in several things such as curriculum
information, admission for new students, schedule info for any lecture courses,
students grade information, and some adding features for Muslim worships
schedule, also weather forecast information. This Chatbot is developed by Deep
Learning models, which was adopted by an artificial intelligence model that
replicates human intelligence with some specific training schemes. This kind of
Deep Learning is based on RNN which has some specific memory savings scheme for
the Deep Learning Model, specifically this chatbot using LSTM which already
integrates by RASA framework. LSTM is also known as Long Short Term Memory
which efficiently saves some required memory but will remove some memory that
is not needed. This Chatbot uses the FB platform because of the FB users have
already reached up to 60.8% of its entire population in Indonesia. Here's the
chatbot only focuses on case studies at campus of the Magister Informatics FTI
University of Islamic Indonesia. This research is a first stage development
within fairly sufficient simulate data.
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