Table 1.
Some example machine learning (ML) algorithms, ordinary parameters and hyper-parameters
ML algorithm | Example ordinary parameters | Example hyper-parameters |
---|---|---|
Random forest | Input variable and threshold value selected at every internal node of a decision tree | Number of decision trees, number of input variables to evaluate at every internal node of a decision tree |
Support vector machine | Support vectors, lagrange multiplier for every support vector | Kernel to use, degree of a polynomial kernel, ε for round-off error, regularization constant C, tolerance parameter |