Utilizing Data Science Models to Evaluate Questionnaire Accuracy for Detecting Mental Illness: Insights and Applications for Psychological Assessments
Abstract
The accurate assessment of mental illness is crucial for effective diagnosis, treatment, and
support. Traditional psychological assessments often rely on questionnaires to gather
information about an individual's mental health. However, the accuracy of these
questionnaires can vary, leading to potential misdiagnosis or underdiagnosis. This paper
explores the application of data science models to evaluate the accuracy of questionnaires in
detecting mental illness.
The study proposes utilizing machine learning algorithms and statistical techniques to
analyze questionnaire data and identify patterns that correlate with specific mental health
conditions. By training these models on a diverse dataset of individuals with known mental
health diagnoses, it is possible to create predictive models that can accurately identify mental
illness based on questionnaire responses.
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