dc.description.abstract |
This study investigates the application of artificial intelligence techniques to predict mental health
breakdowns among university students based on their daily activities. The research uses various
data sources, including electronic health records, smartphone usage, and passive sensor data, to
create predictive models for detecting depression, suicidal behavior, and other mental health
problems. The study found promising results in predicting mental health outcomes with high
accuracy, emphasizing feature selection, model optimization, and early intervention using
predictive insights. However, gaps in existing research include the need for more comprehensive
models, standardization of evaluation metrics, and diverse data sources to capture the complexities
of students' experiences. The study aims to address these gaps by creating a predictive model
tailored to the university student population, predicting mental health breakdowns based on daily
activities. In this work, a survey form was created to collect data on depression, resulting in 1000
responses. The dataset contains 2 parts, 20% is testing data while 80% is training data. The dataset
comprises 16 categorical columns, with 10 questions aimed at diagnosing depression
independently. Each column represents a different aspect of mental health, lifestyle, or academic
experience, without interdependencies between questions. There are 1 dependent and 10
independent or input variables in the dataset. Machine learning methods used such as LR, DT, RF,
SVM, Gradient Boosting Algorithm, AdaBoost Algorithm gave 56%, 68%, 68%, 52%, 91% and
89% accuracy respectively. The model is predicted with Gradient Boosting algorithm from the
highest accuracy |
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