https://benthamchang.github.io/Anomaly-Detection/Anomaly%20Detection%20Report.html
- Detected anomolous output based on input materials via supervised learning under limited size of data.
- Detected anomolous output based on input materials via unsupervised learning.
- Exploratory Data Analysis
- Missing Value Treatment
- Anomaly Detection
- Linear Model
- Isolation Forest
- Hierarchical Clustering
- Multivariate SPC
- Identified the most critical input materials that lead to anomaly via observing linear model's p-value.
- Detected problematic input materials and ranked them from high to low based on the predicted probability (anomolous tendency).