Detecting Fraud Apps Using Sentiment Analysis

Detecting Fraud Apps Using Sentiment Analysis is a report that highlights the necessity of fraud as detection using sentiment analysis. The report can focus on how the fraud apps can affect the users and can also make them bankrupt. Using sentiment analysis, this report may demonstrate the fraud app detection technique. Simple overview and abstract study on identifying fraud applications using sentiment analysis will aid users. The download mini project, synopsis, abstract report on detecting fraud apps using sentiment analysis is available easily.

Study on Detecting Fraud Apps Using Sentiment Analysis, In hacking and app store security, mood analysis to discover phony applications is novel and strong. The abundance of user-generated material and comments on app stores and social networking sites may be used to identify bogus or hazardous programs. Natural language processing’s “sentiment analysis” determines text’s tone, attitude, and viewpoints. Sentiment analysis can determine responses to false app ratings and comments.

Fraud Apps

There are many kinds of fake apps, such as ones that hide malware, ones that show false ads, or ones that are made to steal personal information. Scammed app users typically submit negative reviews to express their dissatisfaction and fear. These pieces of text can be instantly processed by mood analysis and put into three groups: positive, neutral, and negative. The main goal here is to find unpleasant feelings, which can be a sign of scam or other bad behavior.

Large-scale mood analysis is possible using machine learning algorithms trained on a vast user rating and comment database. These algorithms can find negative attitudes and fraud or security-related words, phrases, or patterns in text. Research may include user taking part, change frequency, and response quality. A real fake app may have numerous poor ratings, the creator may not respond to user complaints, or it may undergo many odd changes.

The mood analysis may help app store authorities or hackers identify fake apps. This method discovers and gets rid of fake applications from a large population quickly and not expensively, protecting users. It works with current app protection techniques but adds even more security using app users’ input and intelligence to defend the digital world from fake and dangerous apps.

Topics Covered:

01)Introduction
02)Objectives, ER Diagram
03)Flow Chats, Algorithms used
04)System Requirements
05)Project Screenshots
06)Conclusion, References


Project Name Detecting Fraud Apps Using Sentiment Analysis
Project Category Software Project Reports
Pages Available 60-65/Pages
Available Formats Word and PDF
Support Line Email: emptydocindia@gmail.com
WhatsApp Helpline https://wa.me/+919481545735   
Helpline +91 -9481545735

By admin

Leave a Reply

Call to order