2025-10-19 11:15:53 -04:00
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import pandas as pd
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import numpy as np
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import matplotlib.pyplot as plt
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import seaborn as sns
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2025-10-19 11:15:53 -04:00
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data_path = "student_lifestyle_dataset.csv"
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def main():
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#loading
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df = load_data()
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#preprocessing
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df_clean = preprocess_data(df)
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#exploratory data analysis
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draw_plots(df_clean)
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def load_data():
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df = pd.read_csv(data_path, encoding="ascii", delimiter=",")
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#removing uneeded feature
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df.drop("Student_ID", axis=1, inplace=True)
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return df
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def inspect_data(df):
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print("Info:")
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print(df.info())
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print("\n")
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print("Head:")
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print(df.head())
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print("\n")
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print("Description:")
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print(df.describe(include="all"))
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print("\n")
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2025-10-19 13:41:30 -04:00
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def clean_data(df):
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print("Missing values:")
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print(df.isnull().sum())
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print("\n")
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df.dropna(inplace=False)
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return df
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def order_data_stress_level(df):
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df["Stress_Level"] = pd.Categorical(
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df["Stress_Level"],
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categories=["Low", "Moderate", "High"],
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ordered=True
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)
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def display_feature_distributions_histogram(df):
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df.hist(bins=20, figsize=(10,8))
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plt.suptitle("Feature Distributions")
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plt.show()
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def display_scatter_plot_matrix(df):
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sns.pairplot(df, hue="Stress_Level")
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plt.suptitle("Pair Plot of Numerical Features", y=1.02)
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plt.show()
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def display_correlation_heatmap(df):
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corr = df.corr(numeric_only=True)
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sns.heatmap(corr, annot=True, cmap="coolwarm")
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plt.title("Correlation Heatmap")
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plt.show()
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def display_feature_boxplots(df):
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for col in df.select_dtypes(include=[np.number]).columns:
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sns.boxplot(x="Stress_Level", y=col, data=df)
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plt.title(f"{col} by Stress Level")
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plt.show()
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def draw_plots(df):
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display_feature_distributions_histogram(df)
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display_scatter_plot_matrix(df)
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display_correlation_heatmap(df)
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display_feature_boxplots(df)
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def preprocess_data(df):
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df_clean = clean_data(df)
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order_data_stress_level(df_clean)
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return df_clean
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2025-10-19 13:41:30 -04:00
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2025-10-19 11:15:53 -04:00
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main()
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