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import pandas as pd |
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from sklearn.ensemble import RandomForestRegressor |
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from sklearn.metrics import mean_squared_error, r2_score |
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train_df = pd.read_parquet("./ml_input_data/train_split.parquet") |
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valid_df=pd.read_parquet("./ml_input_data/validation_split.parquet") |
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test_df=pd.read_parquet("./ml_input_data/test_split.parquet") |
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chem_properties=list(train_df.keys()[1:9]) |
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ecfp=list(train_df.keys()[24:]) |
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target="LUMO_HOMO_GAP" |
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feature_cols = chem_properties + ecfp |
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X_train, y_train = train_df[feature_cols], train_df[target] |
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X_valid, y_valid = valid_df[feature_cols], valid_df[target] |
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X_test, y_test = test_df[feature_cols], test_df[target] |
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rf_10 = RandomForestRegressor( |
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n_estimators=10, |
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max_depth=None, |
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random_state=42, |
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) |
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rf_10.fit(X_train, y_train) |
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y_pred = rf_10.predict(X_test) |
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mse = mean_squared_error(y_test, y_pred) |
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r2 = r2_score(y_test, y_pred) |
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print(f"Test MSE: {mse:.4f}") |
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print(f"Test R² : {r2:.4f}") |
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all_data="./ml_input_data/all_data_no_split.parquet" |
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df=pd.read_parquet(all_data) |
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top_10_percent = df.sort_values(by='LUMO_HOMO_GAP', ascending=False).head(int(0.1 * len(df))) |
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top_10_percent_X_test, top_10_percent_y_test = top_10_percent[feature_cols], top_10_percent[target] |
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top_10_percent_y_pred = rf_10.predict(top_10_percent_X_test) |
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mse = mean_squared_error(top_10_percent_y_test, top_10_percent_y_pred) |
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r2 = r2_score(top_10_percent_y_test, top_10_percent_y_pred) |
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print(f"Top 10% Test MSE: {mse:.4f}") |
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print(f"Top 10% Test R² : {r2:.4f}") |