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    Credit Risk Scoring & Decision Making By Global Experts

    Posted By: ELK1nG
    Credit Risk Scoring & Decision Making By Global Experts

    Credit Risk Scoring & Decision Making By Global Experts
    Published 10/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.57 GB | Duration: 5h 58m

    Master Credit Risk Scoring with Real-World Data and Advanced Techniques with Sector Best Practices using Python

    What you'll learn

    Build a Comprehensive Credit Risk Model: Participants will learn to construct a complete credit risk model using Python

    Preprocess and Analyze Real-World Data: The course will teach how to preprocess and manage real-world datasets, preparing them for modeling and analysis.

    Apply Advanced Data Science Techniques: Learners will gain knowledge of advanced data science techniques and how to apply them in the context of risk models

    Evaluate and Validate Models: The course covers model evaluation and validation processes to ensure the effectiveness and reliability of credit risk models.

    Practical Application and Real-Life Examples: Gain practical knowledge through real-life examples and case studies

    Sector Best Practices: Learn industry standards for designing and implementing robust credit risk systems

    Requirements

    Basic Python Knowledge and Enthusiasm to Learn

    Basic Math and Statistics

    Description

    Credit Risk Scoring & Decision Making CourseAre you ready to enhance your career in the financial world by mastering credit risk management skills? Look no further! Our "Credit Risk Scoring & Decision Making" course is designed to equip you with the essential tools and knowledge needed to excel in this critical field.Who is this course for?Banking Professionals: If you’re a credit analyst, loan officer, or risk manager, this course will elevate your understanding of advanced modeling techniques.Finance and Risk Management Students: Gain practical skills in credit risk modeling to stand out in the competitive job market.Data Scientists and Analysts: Expand your portfolio by learning how to apply your data science expertise to the financial sector using PythonAspiring Credit Risk Professionals: New to the field? This course will provide you with a solid foundation and prepare you for work life. Entrepreneurs and Business Owners: Make informed lending or investment decisions by understanding and managing credit risk effectively.What will you learn?Build a Comprehensive Credit Risk Model: Construct a complete model using Python, covering key aspects like Probability of Default and scorecards. Preprocess and Analyze Real-World Data: Learn to handle and prepare real-world datasets for modeling and analysis.Apply Advanced Data Science Techniques: Understand and apply cutting-edge data science techniques within the context of credit risk management.Evaluate and Validate Models: Gain skills in model evaluation and validation to ensure reliability and effectiveness.Practical Application and Real-Life Examples: Engage with real-life case studies and examples to apply your learning directly to your work.Master Risk Profiling: Accurately profile the risk of potential borrowers and make confident credit decisions.Why choose this course?Expert Instruction: Learn from industry experts who have worked on global projects and developed software used on a global scale. Their real-world experience and academic credentials ensure you receive top-quality instruction.Comprehensive Content: From theory to practical applications, this course covers all aspects of credit scoring models.Real-World Data: Work with actual datasets and solve real-life data science tasks, not just theoretical exercises.Career Advancement: Enhance your resume and impress interviewers with your practical knowledge and skills in a high-demand field.Sector Best Practices: Understand industry standards for designing robust credit risk systems, including data flows, automated quality checks, and advanced reporting mechanisms.Join us and take the next step in your career by mastering the skills needed to excel in credit risk scoring and decision making. Enroll now and start your journey towards becoming a credit risk expert!

    Overview

    Section 1: Introduction

    Lecture 1 Course Overview

    Lecture 2 Setting Up Your Computer

    Lecture 3 Overview of Credit Risk Models

    Lecture 4 Applications in the Industry

    Section 2: Course Material

    Lecture 5 Python codes

    Lecture 6 Documents

    Section 3: Fundamentals of Credit Risk Scoring

    Lecture 7 Introduction to Probability of Default (PD) Models

    Lecture 8 Example Case Presentation

    Lecture 9 Application vs Behavioral Scorecards

    Section 4: Dataset Description

    Lecture 10 Dataset Information

    Lecture 11 Loading data to the Python environment

    Section 5: Data Preprocessing

    Lecture 12 Data Quality Checks

    Lecture 13 Data Cleaning

    Lecture 14 Exploratory Data Analysis

    Lecture 15 Exploratory Data Analysis - Based on Time

    Lecture 16 Sector Best Practices

    Section 6: Data Transformation

    Lecture 17 Data Transformation Methods

    Lecture 18 Data Transformation in Practice

    Lecture 19 Sector Best Practices

    Section 7: Data Splitting

    Lecture 20 Data Splitting Methods

    Lecture 21 Data Splitting In Practice

    Section 8: Feature Selection Methods

    Lecture 22 Overview and Sector Best Practices

    Lecture 23 Correlation Elimination

    Lecture 24 Correlation Elimination In Practice

    Lecture 25 Information Value

    Lecture 26 Information Value in Practice

    Lecture 27 Univariate Gini

    Lecture 28 Univariate Gini In Practice

    Section 9: Classical Probability of Default Models

    Lecture 29 Survival Analysis

    Lecture 30 Survival Analysis In Practice

    Lecture 31 Logistic Regression

    Lecture 32 Logistic Regression In Practice

    Lecture 33 Logistic Regression Model Explainability Methods

    Lecture 34 Logistic Regression Model Explainability Methods In Practice

    Lecture 35 Model Coefficients

    Lecture 36 Logistic Regression - Max Gini Model

    Lecture 37 Logistic Regression - Max Gini Model Predictions

    Lecture 38 K Fold Cross Validation

    Lecture 39 K Fold Cross Validation In Practice

    Lecture 40 Sector Best Practices

    Section 10: Feature Selection for Advanced Data Science Techniques

    Lecture 41 Advanced Feature Importance Overview

    Lecture 42 Random Forest Feature Selection

    Lecture 43 Shapley Values Feature Selection

    Lecture 44 Permutation Feature Importance Selection

    Section 11: Advanced Data Science Techniques

    Lecture 45 XGBoost Overview

    Lecture 46 XGBoost

    Lecture 47 Approximate Coefficients for XGBoost

    Lecture 48 Parameter Tuning for XGBoost

    Lecture 49 Neural Networks Overview

    Lecture 50 Neural Networks

    Lecture 51 Parameter Tuning for Neural Networks

    Lecture 52 Model Ensembling

    Lecture 53 Model Ensembling In Practice

    Lecture 54 Sector Best Practices

    Section 12: Model Selection

    Lecture 55 Model Selection Methodology

    Lecture 56 Model Selection In Practice

    Section 13: Rating Scale Development

    Lecture 57 Rating Scale Overview

    Lecture 58 Rating Scale Generation

    Lecture 59 Score Generation and Scaling

    Lecture 60 Sector Best Practices

    Section 14: Model Calibration

    Lecture 61 Why Model Calibration Needed?

    Lecture 62 Bayesian Calibration

    Lecture 63 Regression Calibration

    Lecture 64 Sector Best Practices

    Section 15: Model Evaluation and Validation

    Lecture 65 Model Validation Basics and Sector Best Practices

    Lecture 66 Validation Metrics for Credit Scoring Models

    Lecture 67 AUC / ROC

    Lecture 68 Time Series Gini

    Lecture 69 Kolmogorov-Smirnov Test

    Lecture 70 Confusion Matrix

    Lecture 71 Stability Tests - PSI & SSI

    Lecture 72 Variance Inflation Factor

    Lecture 73 Herfindahl-Hirshman Index and Adjusted Herfindahl-Hirshman Index

    Lecture 74 Anchor Point

    Lecture 75 Chi-Square Test

    Lecture 76 Binomial Test

    Lecture 77 Adjusted Binomial Test

    Lecture 78 Model Validation Thresholds

    Section 16: Advancements in the Industry

    Lecture 79 Case Study 1 - U.S. based Financing Company

    Lecture 80 Case Study 2 - UK based Fintech Startup

    Section 17: Final Project and Test

    Lecture 81 Final Project Using Real-World Data

    Banking Professionals,Finance and Risk Management Students,Aspiring Credit Risk Professionals,Credit Risk Auditors,Entrepreneurs and Business Owners,Data Scientists