Explore the relation between variables using data-driven methods for regression, classification, and clustering.
The Machine Learning module bundles several R
packages for machine learning into a general interface for training a predictive model and assessing its performance on holdout data. The module offers a variety of supervised an unsupervised learning methods whose parameters can be adjusted. Moreover, the module facilitates different data splitting methods for dividing data into a training, testing, and validation set.
The analyses in the Machine Learning module are structured in JASP in the following way:
--- Machine Learning
-- Regression
- Boosting
- K-Nearest Neighbors
- Random Forest
- Regularized Linear
-- Classification
- Boosting
- K-Nearest Neighbors
- Linear Discriminant
- Random Forest
-- Clustering
- Density-Based
- Fuzzy C-Means
- Hierarchical
- K-Means
- Random Forest