Review paper(after plag check) new pic.pdf (436.32 kB)
Review on Machine Learning Techniques to predict Bipolar Disorder
Bipolar
disorder, a complex disorder in brain has affected many millions of people
around the world. This brain disorder is identified
by the occurrence of the oscillations of the patient’s changing mood. The mood
swing between two states i.e. depression and mania. This is a result of different
psychological and physical features. A set of psycholinguistic features
like behavioral changes,
mood swings and mental illness are observed to provide feedback on health and
wellness. The study is an objective
measure of identifying the stress level of human brain that could improve the
harmful effects associated with it considerably.
In the paper, we present the study prediction of symptoms and behavior of a
commonly known mental health illness,
bipolar disorder using Machine Learning Techniques. Therefore,
we extracted data from articles and research papers were studied and analyzed by using statistical analysis tools and machine learning (ML) techniques. Data is visualized to extract and communicate meaningful information
from complex datasets on predicting and optimizing various day to day analyses. The study also includes the various research
papers having machine
Learning algorithms and different classifiers like Decision Trees, Random Forest, Support Vector
Machine, Naïve Bayes, Logistic Regression and K- Nearest Neighbor are studied
and analyzed for identifying the
mental state in a target group. The purpose of the paper is mainly to explore
the challenges, adequacy and limitations in detecting the mental health
condition using Machine Learning
Techniques
History
Email Address of Submitting Author
nishaagnihotri31@gmail.comSubmitting Author's Institution
Galgotias UniversitySubmitting Author's Country
- India