Analizo

Analizo is a machine learning based solution that analyzes your reviews or comments on Facebook post of Quality Enhancement Cell (QEC) SBBU SBA and categorize them as positive or negative and then displays the summary of calculations. The users can see the summary to know about the overall sentiment

2025-06-28 16:25:06 - Adil Khan

Project Title

Analizo

Project Area of Specialization Computer ScienceProject Summary

Analizo is a machine learning based solution that analyzes your reviews or comments on Facebook post of Quality Enhancement Cell (QEC) SBBU SBA and categorize them as positive or negative and then displays the summary of calculations. The users can see the summary to know about the overall sentiment of peoples about that post. It will also help the people to know about the reviews of the people perspectives.

Project Objectives

ML-based android application that performs sentiment analysis on Facebook post of Quality Enhancement Cell (QEC) SBBU SBA and also to know a user or audience opinion on a target object by analyzing a vast amount of reviews or comments from QEC post.

It is to Implement an algorithm for automatic classification of text into positive, negative, or neutral. Sentiment Analysis to determine the attitude of the mass is positive, negative or neutral towards the subject of interest.

Project Implementation Method

We are going to use ML to analyze the sentiments of poeple on facebook post of QEC by using java and python programming languages that will work with data sets to analyze sentiments for poeples or post creators and on the otherhand also we are going to use Tenser Flow, TenserFlow Lite, Android Studio, Firebase (Real-time Database), Libraries, Data collection and preparation.

Sentiment Analysis is defined as the computational study of opinions, sentiments, subjectivity, evaluations, attitudes, appraisal, affects, views, emotions, etc., expressed in post. Early work focused mainly on the overall positive or negative classification of a post. While detecting the overall sentiment of a post or snippet has a wide range of real-world applications, analyzing unstructured text of that post only in terms of positive and negative opinions -irrespectively of the entities mentioned in context and their aspects- is not sufficient enough to provide meaningful insights and is therefore of limited use.

Some review sites (e.g., Amazon, TripAdvisor) provide such information in the form of multiple-aspect user ratings. However, taking into account the textual component of user reviews provides also evidence to understand the reason behind the rating and results in better general or personalized review score predictions than those derived from the numerical star ratings given by the users.In addition, user ratings are not available in Social Media data like Twitter or Facebook. In this context, research has moved towards fine-grained approaches like aspect-based (or feature-based) sentiment analysis.

Benefits of the Project Technical Details of Final Deliverable

Sentiment Analysis is defined as the computational study of opinions, sentiments, subjectivity, evaluations, attitudes, appraisal, affects, views, emotions, etc., expressed in post. Early work focused mainly on the overall positive or negative classification of a post. While detecting the overall sentiment of a post or snippet has a wide range of real-world applications, analyzing unstructured text of that post only in terms of positive and negative opinions -irrespectively of the entities mentioned in context and their aspects- is not sufficient enough to provide meaningful insights and is therefore of limited use.

Some review sites (e.g., Amazon, TripAdvisor) provide such information in the form of multiple-aspect user ratings. However, taking into account the textual component of user reviews provides also evidence to understand the reason behind the rating and results in better general or personalized review score predictions than those derived from the numerical star ratings given by the users.In addition, user ratings are not available in Social Media data like Twitter or Facebook. In this context, research has moved towards fine-grained approaches like aspect-based (or feature-based) sentiment analysis.

Final Deliverable of the Project Software SystemCore Industry ITOther IndustriesCore Technology Artificial Intelligence(AI)Other TechnologiesSustainable Development Goals Partnerships to achieve the GoalRequired Resources
Item Name Type No. of Units Per Unit Cost (in Rs) Total (in Rs)
Total in (Rs) 50000
Domain Equipment2600012000
Database Equipment11500015000
ANACONDA Pro Version Equipment6300018000
Stationary Miscellaneous 150005000

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