Download PDFOpen PDF in browserStress Detection of User using Social InteractionEasyChair Preprint 19484 pages•Date: November 13, 2019AbstractMental stress is becoming a threat to people’s health now a days. With the rapid pace of life, more and more people are feeling stressed. It is not easy to detect users stress in an early time to protect user [1]. We determined that students stress state is firmly diagnosed with that of his/her activities in on-line lifestyles. We initially load the data from dataset named as “Sentiment_140” from Kaggle and visualize properties from different viewpoints and afterward propose a Naïve Bayes algorithm - It is a classification technique based on Bayes; Theorem with an assumption of independence among predictors i.e. presence of a particular feature in a class is unrelated to the presence of any other feature. Keyphrases: Naive Bayes Algorithm, Random Forest, Support Vector Machine, logistic regression, machine learning
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