EDUCBA
Credit Default Prediction with Python: Apply & Analyze

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EDUCBA

Credit Default Prediction with Python: Apply & Analyze

EDUCBA

Instructor: EDUCBA

Included with Coursera Plus

Gain insight into a topic and learn the fundamentals.
4 hours to complete
Flexible schedule
Learn at your own pace
Gain insight into a topic and learn the fundamentals.
4 hours to complete
Flexible schedule
Learn at your own pace

What you'll learn

  • Preprocess financial datasets using encoding, scaling, and EDA techniques.

  • Build and tune logistic regression, decision trees, and Random Forest models.

  • Evaluate credit risk models with confusion matrices, ROC curves, and ensemble methods.

Details to know

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Recently updated!

September 2025

Assessments

6 assignments

Taught in English

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There are 2 modules in this course

In this module, learners gain a strong foundation in building a credit default prediction model using Python. The module introduces the project’s scope, outlines the workflow, and emphasizes the importance of structured data handling. Learners will explore data preprocessing techniques such as handling missing values, encoding categorical features, and scaling numerical variables. In addition, they will perform exploratory data analysis (EDA) to identify patterns, visualize distributions, and uncover key relationships within the dataset. Finally, learners will split the dataset into training and testing sets to ensure reliable evaluation of logistic regression models for predicting credit default risk.

What's included

9 videos3 assignments1 plugin

In this module, learners advance beyond data preparation into the core of predictive modeling. The module introduces evaluation metrics such as the confusion matrix and ROC curve to assess classification performance in credit default prediction. Learners will then explore hyperparameter tuning methods like Grid Search and Randomized Search to optimize logistic regression models. The module further builds knowledge with decision tree theory, covering splitting criteria, visualization using Graphviz, and practical implementation in Python. Finally, learners will apply ensemble techniques with Random Forest to reduce overfitting and improve model accuracy for robust credit risk prediction.

What's included

10 videos3 assignments

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Instructor

EDUCBA
EDUCBA
279 Courses107,607 learners

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EDUCBA

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