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Detection of Cyber Bullying on Social Media using Machine Learning

Category: Mini Projects

Price: ₹ 3500 ₹ 10000 65% OFF

Abstract:

The use of social media has grown exponentially over time with the growth of the Internet and has become the most influential networking platform in the 21st century.

However, the enhancement official connectivity often creates negative impacts on society that contribute to a couple of bad phenomena such as online abuse, harassment cyberbullying, cybercrime and online trolling.

Cyberbullying frequently leads to serious mental and physical distress, particularly for women and children, and even sometimes force them to attempt suicide.

Online harassment attracts attention due to its strong negative social impact. Many incidents have recently occurred worldwide due to online harassment, such as sharing private chats, rumors, and sexual remarks. Therefore, the identification of bullying text or message on social media has gained a growing amount of attention among researchers.

The purpose of this research is to design and develop an effective technique to detect online abusive and bullying messages by merging natural language processing and machine learning. Two distinct features, namely Bag-of -Words (BoW) and term frequency-inverse text frequency (TFIDF), are used to analyze the accuracy level of four distinct machine learning algorithms.

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• Immediate (Download)

Software Requirement:
1. Python IDE
2. Matplot Libraries
3. Scikit Libraries
4. Tensorflow

Hardware Requirement:
Processor : Intel Core Duo 2.0 GHz or more
RAM : 1 GB or More
Harddisk : 80GB or more
Monitor : 15” CRT, or LCD monitor
Keyboard : Normal or Multimedia
Mouse : Compatible mouse

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