Mental Healthcare Analysis using Power BI & Machine Learning

Jash Virani, Nikita Daredi, Aayush Bhanushali,Madhu Shukla,Pooja Shah

2023 4th International Conference on Signal Processing and Communication (ICSPC)(2023)

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摘要
The rise in mental health problems among people and the need for effective solutions for mental health have led to a lot of research in the machine learning domain for its applications in mental healthcare Many people’s lives have been affected by the exponential rise in mental health and depression, and various factors must be revised. Different situations can have an impact on one’s mental stability. So, taking the factors in mind like gender, age, insomnia, loneliness, depression level, aggressiveness, stress level etc. we are going to analyze the most affecting factors for poor mental health. Nowadays mostly people are facing some kind of mental health problems but very few people are giving attention to their mental health. So, our main purpose is to analyze the factors and find those factors which are responsible for a person’s poor mental health. Those factors are also anonymous by the person itself and They don’t even know that they have weak mental health. For that we have taken the initiative to analyze and point out the main causes for poor mental health by circulating a google form Which has questions regarding regular lifestyle and from that we have collected data of different types of persons who are from different professions like students, employees, professors etc. After collecting the data, we had done preprocessing on that data and then we applied machine learning algorithms for classification and prediction. By applying machine learning algorithms, we found different types of outputs and by taking those outputs we can say which are more affecting factors on a person’s mental health and we can suggest how people should improve their mental health and what type of things they should avoid for their good mental health.
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关键词
Mental Health,Data Analysis,Power BI,Machine Learning
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