Uso delle variabili di evoluzione

Analisi predittiva intermedia in Python

Nele Verbiest

Senior Data Scientist @PythonPredictions

Costruire modelli predittivi

# Import the linear_model module
from sklearn import linear_model

# Predictive variables variables = ["gender","age", "donations_last_year", "ratio_month_year"]
# Select predictors and target X = basetable[variables] y = basetable[["target"]]
# Construct the logistic regression model logreg = linear_model.LogisticRegression() logreg.fit(X, y)
Analisi predittiva intermedia in Python

Fare previsioni

# Import the linear_model module
from sklearn import linear_model

# Predictive variables variables = ["gender","age", "donations_last_year", "ratio_month_year"]
# Select predictors and target X = basetable[variables] y = basetable[["target"]]
# Construct the logistic regression model logreg = linear_model.LogisticRegression() logreg.fit(X, y)
# Make predictions
predictions = logreg.predict_proba(X)[:,1]
Analisi predittiva intermedia in Python

Valutare i modelli con l’AUC

# Import roc_auc_score module from sklearn.metrics
from sklearn.metrics import roc_auc_score

# Calculate the AUC auc= roc_auc_score(y, predictions) print(round(auc,2))
0.56
Analisi predittiva intermedia in Python

Il grafico di insight del predittore

# Discretize the variable in 5 bins and add to the basetable
basetable["ratio_month_year_disc"] = pd.qcut(basetable["ratio_month_year"], 5)

# Construct the predictor insight graph table pig_table = create_pig_table(basetable, "target","ratio_month_year_disc") ```{python} # Plot the predictor insight graph plot_pig(pig_table, "ratio_month_year_disc")
Analisi predittiva intermedia in Python

Interpretare il grafico di insight

Analisi predittiva intermedia in Python

Passons à la pratique !

Analisi predittiva intermedia in Python

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