The Internet and communication technologies
of today are extremely fast and dynamic. In the age of
mobile phones and computers, the use of different
communication channels, such as cell phones and
computers, is very common. This project develops an
Emotion Detection Model that takes sentence-level
emotion into account. In natural language processing,
content-based classification problems include concepts
from both machine learning and natural language
processing. Our technique employs direct emotional
keywords in text as a means of identifying emotions. In
order to increase the accuracy of the detection, words
and phrases containing emotion-affect were also
considered. We have thought about emotions like
happiness, sadness, anger, and so on to help us recognise
emotion in text. Human beings actually use these
expressions. They are important investigations, as their
findings have the potential to better express human
emotions and help facilitate interpersonal
communication.
Keywords : SVM, Python, Emotion Detection, Testing.