4. Machine Learning for Financial Services (Janani Ravi, 2021)
1. Course Overview:
1. Course Overview 00:00:00
2. Exploring Applications of Machine Learning in Financial Services:
01. Version Check 00:01:59
02. Prerequisites and Course Outline 00:02:15
03. Data and Analytics Trends in Finance 00:04:06
04. Use Cases of ML in Finance - Investment Predictions 00:10:10
05. Use Cases of ML in Finance - Loan Automation 00:14:47
06. Use Cases of ML in Finance - Process Automation 00:17:50
07. Use Cases of ML in Finance - Robo Advisors 00:21:47
08. Use Cases of ML in Finance - Fraud Detection 00:24:41
09. Recurrent Neural Networks for Financial Data 00:27:33
10. Challenges of ML in Finance 00:34:16
3. Case Study - Quantifying Risk and Return of Investment Opportunities:
1. Managing Portfolio Risk 00:40:29
2. Modeling Returns and Risk 00:42:39
3. Stock Correlation Prediction - Background and Context 00:50:04
4. Stock Correlation Prediction - Proposed Hybrid Model 00:54:26
5. Stock Correlation Coefficient Prediction - Methodology a 00:58:23
4. Case Study - Extracting Insights for Fraud Detection:
1. Fraud Detection - Background and Context 01:04:37
2. Fraud Detection - Transaction Features and Customer Features 01:10:36
3. Fraud Detection - Snorkel Labeling 01:12:49
4. Fraud Detection - Methodology and Results 01:16:35
5. Applying Machine Learning Techniques to Financial Data:
1. Classification Use Cases 01:23:32
2. Accuracy Precision and Recall 01:25:05
3. Demo - Fraud Detection - Data Exploration and Preparation Part I 01:29:47
4. Demo - Fraud Detection - Data Exploration and Preparation Part II 01:34:55
5. Demo - Fraud Detection - Classification Models 01:41:25
6. Demo - Fraud Detection - ROC Curves and AUC 01:46:19
7. Summary Resources Used and Further Study 01:50:05