PRSD Knowledge Base
Keyword cloud
Adaboost API C4.5 cascade of classifiers class imbalance classification speed classifier approximation classifier execution compatibility confusion matrices cross-validation custom algorithms decision tree detectors discriminants error measurements evaluation feature selection greedy search image data interactive tools KNN leave-one-out LIBSVM multi-class neural networks operating point operating points optimization output thresholding output weighting Parzen PRTools PRTools compatibility random forest rejection ROC analysis sample meta-data setting operation point soft outputs support vector machines visual inspection
All articles
- kb22: Note on decision tree performance and speed
- kb21: Feature selection in perClass
- kb20: PRSD Studio to perClass transition
- kb19: PRTools compatibility
- kb18: How to protect a trained discriminant against outliers?
- kb17: How to optimize three-class classifier in imbalanced problems
- kb16: Visualize the effect of a change of parameters in a trained classifier
- kb15: How to speed up classifiers using the neural network approximation?
- kb14: How to train a two-stage algorithm?
- kb13: How to find samples with a specific type of error in a confusion matrix?
- kb12: Detector classifier cascade with ROC analysis
- kb11: Hierarchical classifier: How to build detector-classifier cascade?
- kb10: A step by step construction of a detector
- kb9: How to build a detector from a custom region in an image?
- kb8: How to build a detector in a single line of code?
- kb7: How to convert LIBSVM Support Vector machine into a pipeline?
- kb6: Can ROC analysis be performed for multi-class problems?
- kb5: ROC analysis on two-class problems: choosing an operating point
- kb4: How to cross-validate over objects?
- kb3: Perform leave-one-out evaluation
- kb2: How to perform cross-validation with replicas
- kb1: How to make decisions at a default operating point?
