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Sentiment analysis using machine learning #854
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👋 Thank you for opening this pull request! We're excited to review your contribution. Please give us a moment, and we'll get back to you shortly! Feel free to join our community on Discord to discuss more! |
@UTSAVS26 @ruhi47 @shaansuraj please let me know if I need to make any changes |
@Ananya-vastare move the project in the dedicated folder and remove |
@UTSAVS26 I have done the changes please let me know if anythiing else has to be done |
@UTSAVS26 any updates please |
@Ananya-vastare raise new PR as in this one there is no file. |
Pull Request for PyVerse 💡
Requesting to submit a pull request to the PyVerse repository.
Issue Title
Related Issue:
#452 Sentiment analysis
Info about the Related Issue
What's the goal of the project?
To automatically identify and classify human emotions expressed in text.
Aim of the project:
Your Information
Name:
Ananya Ravikiran Vastare
GitHub ID:
@Ananya-vastare
Email ID:
[email protected]
Program:
GSSOC extd, Hacktoberfest
Issue Reference
Closes:
Closes: #452
Description of Changes
Add-ons or Modifications:
Implemented a sentiment analysis model to classify text data by identifying emotions. Added real-time processing for immediate insights and designed a visual dashboard to display sentiment trends. Enhancements include:
These changes aim to create a more responsive, accurate, and visually engaging sentiment analysis tool tailored to user needs.
Type of Change
Select the type of change:
Testing Information
Testing Process:
The changes were tested using a dataset with labeled emotions to evaluate model accuracy across different sentiment classes. Real-time analysis was validated with live input to ensure responsiveness. The dashboard was tested for usability and clarity through user feedback sessions.
Checklist
Please confirm the following: