Data Science Asked on January 14, 2021
All,
I would like to plot the following:
I have a binary classification problem where I am using xgboost as my ‘model’ below:
y_pred = model.predict_proba(x_test)[:, 1]
probabilities = pd.DataFrame({
'prediction': y_pred,
'output': y_true
})
colors = ['g', 'r']
for output in [0, 1]:
probabilities[probabilities['output'] == output]['prediction']
.plot(kind='kde', ax=ax2, legend=True, color=colors[output])
ax2.set_xlim(prob_xlims)
ax2.set_xlabel('Predicted probability')
ax2.set_title('Predicted probabilities and true labels (color)')
# Legend
handles, labels = ax2.get_legend_handles_labels()
ax2.legend(handles, ['Class 0', 'Class 1'])
Using the above how can I get a plot similar to the above? Correct me if wrong as well, but predict_proba
returns $text{probability(class x | data sample)}$ where data sample is a single row of data..?
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