STUDENT INFORMATION AI CHATBOT

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Shubhanshu Jha
, Shashwat Bagaria,C Lakshmi Karthikey, Utkarsh Satsangi and Surekha Thota

Abstract

-Automatic conversation system is an intelligent human machine interaction using natural language. Main goal of it is to allow the user and machine to make a natural harmonious conversation. Thus enabling the machine to recognize human motivation and to respond accurately, is not only an important manifestation of advanced intelligence, but also a very challenging work in harmonious human interaction field [1]. A conversation system consists of speech recognition, speech synthesis, and dialogue management and conversation generation. In this research, we focus on automatic generation of conversation between a computer and a human being with little knowledge of the computer.In this paper, we influenced a PC to end up a preparation to accomplice of a man who isn't great at discussion, to wind up a band together with a man. Therefore, in this research, we are focusing specifically on “chat" by developing an interactive AI which converse mainly by using machine learning. We perform a word unit prediction by using “Hill Climbing†algorithm and based on relevancy ranking, the relevant conversation is made.Our main focus, is to build a Student chat bot which helps the colleges to have 24*7 automated query resolution. This helps the students to have the right information from the trusted source. Also the administrationof information is made easy for the institutions.

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References

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