Student Feedback Analysis System Using Machine Learning

1,500.00

Student Feedback Analysis System is a Machine Learning project that analyses student feedback using NLP techniques. The system processes feedback responses in CSV format and uses the Naive Bayes algorithm to classify feedback as Positive, Neutral, or Negative

Add to Wishlist
Add to Wishlist

Description

Student Feedback Analysis System Using Machine Learning

The Automated Student Feedback Analysis System is a Machine Learning based project that helps educational institutions analyse large volumes of student feedback automatically. The system processes feedback responses stored in CSV format and uses Natural Language Processing (NLP) techniques to understand the sentiment behind each response.

This project uses the NLTK library along with the Naive Bayes Machine Learning algorithm to classify feedback into three categories:

  • Positive
  • Neutral
  • Negative

The main goal of this project is to help educational institutions understand student opinions and improve the overall quality of teaching and learning materials.

Project Features

  • Upload feedback dataset in CSV format
  • Automatic text preprocessing using NLP
  • Sentiment analysis using Naive Bayes classifier
  • Classification into Positive, Neutral and Negative feedback
  • Efficient handling of large feedback datasets
  • Helps institutions analyse student satisfaction
  • Improves decision making based on feedback insights

Technology Stack

Component Technology
Programming Language Python
NLP Library NLTK
Machine Learning Algorithm Naive Bayes
Dataset Format CSV

System Requirements

  • Python 3.x
  • NLTK Library
  • Pandas Library
  • Basic Machine Learning knowledge

How the Project Works

  1. User uploads student feedback dataset in CSV format.
  2. The system extracts and processes textual feedback.
  3. NLTK performs tokenization and text preprocessing.
  4. Naive Bayes algorithm performs sentiment classification.
  5. Each feedback is categorized as Positive, Neutral, or Negative.

Why This Project Is Useful

This project is ideal for BCA, MCA, B.Tech, and Data Science students who want to understand real-world applications of Machine Learning and Natural Language Processing.

Students can learn how sentiment analysis works and how machine learning algorithms can be applied to analyse real-world textual datasets.

  • Complete Python Source Code
  • Project Documentation / Report
  • PPT Presentation
  • Dataset Included
  • Installation Guide
  • Ready to Run Project

Complete Project : More Details

Watch Project Demo : Decodeit2 YouTube Channel

Reviews

There are no reviews yet.

Be the first to review “Student Feedback Analysis System Using Machine Learning”

Your email address will not be published. Required fields are marked *

Shopping cart

0
image/svg+xml

No products in the cart.

💬 Chat Now