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Group 9: Loan Eligibility Prediction and Default Risk
WQD7004 Group Assignment
- Mohammad Iqbal Afif bin Mohamad Shahnaz (U2004720)
- Ahmad Marwan Bin Murshidi (17205900)
- Mawaddah Binti Musthafa (17147301)
- Mohamad Ziqry Bin Zulkifli (S2153309)
- Ahmad Salim Odeh Alsane (23083537)
2_Impute_Missing_Data
for oregon extension project
WQD7004 OCC2 - Group 7 Project
WQD7004 PROGRAMMING FOR DATA SCIENCE
Session 2024/2025 Semester I
Title: Analyzing Customer Spending Behaviour: The role of demographics, purchase type, and loyalty pattern in consumer
WQD7004 Group Assignment-Group 9
Detecting Online Payment Fraud Using Machine Learning Models
Lecturer: Dr. Ang Group 9
| Matric | Full Name |
|----------|----------------|
| 23121328 | Mohammed Iqram |
| 24052516 | LI JUNMING |
| 22106713 | LI YUEXIN |
| 23111676 | LIU YICONG |
| 23108677 | ZHAO ZITONG |
Useful R commands
Here are some useful R commands.
Summmative working progress
Saving to here as Im paranoid that I dont want to lose anything
Predicting Customer Churn in Banking using Machine Learning
Group Assignment for WQD7004
Business Forecasting 2
This homework used STL decomposition to extract the trend, seasonal, and residual components of the time series. The data was tidied with `mutate()` and visualized using `filter()`. The trend model was estimated using `TSLM()` and forecasts were generated with the `forecast()` function, which were then visualized with `autoplot()`. Basic forecasting models such as **MEAN(), NAIVE(),** and **RW()** were applied and visualized. Missing dates were handled by updating the time series index with `update_tsibble()`. Fitted values and residuals were calculated using `augment()` and visualized with `ggplot()` and ACF plots. Additionally, a **log() transformation** was applied, and seasonally adjusted series were generated for improved forecasting accuracy.