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import streamlit as st |
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st.title("π Exploratory Data Analysis (EDA)") |
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st.markdown(""" |
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### π Data Exploration: |
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The dataset was analyzed to uncover patterns and relationships between features and depression status. |
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Key areas of focus included: |
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- Distribution of depression across genders |
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- Impact of academic pressure on depression risk |
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- Correlation between sleep duration and mental well-being |
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- Relationship between financial stress and depression |
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- Influence of CGPA and dietary habits on student mental health |
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""") |
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st.markdown(""" |
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### π Key Observations: |
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- Students reporting **higher academic pressure** were more likely to show signs of depression |
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- **Inadequate sleep** and **unbalanced diet** were common among students predicted as depressed |
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- **Financial stress** and **low CGPA** had strong associations with depression |
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- Female students showed slightly higher reported cases of depression in the dataset |
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""") |
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st.markdown(""" |
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### π Visualization Techniques: |
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- **Countplots** to examine category distributions like gender, class, and stress levels |
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- **Boxplots** to explore spread and variation in numerical features (e.g., CGPA, Age) |
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- **Heatmaps** to visualize feature correlations and identify multicollinearity |
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These insights helped refine feature selection and informed model-building decisions. |
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""") |
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if st.button("Next >>"): |
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st.switch_page(r"pages/4 Feature Engineering.py") |
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if st.button("<< Back"): |
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st.switch_page(r"pages/2 Data Understanding.py") |