Manifold Learning
Nonlinear dimensionality reduction.
Inputs
- Data: input dataset
 
Outputs
- Transformed Data: dataset with reduced coordinates
 
Manifold Learning is a technique which finds a non-linear manifold within the higher-dimensional space. The widget then outputs new coordinates which correspond to a two-dimensional space. Such data can be later visualized with Scatter Plot or other visualization widgets.
- Method for manifold learning:
 - Set parameters for the method:
- t-SNE (distance measures):
- Euclidean distance
 - Manhattan
 - Chebyshev
 - Jaccard
 - Mahalanobis
 - Cosine
 
 - MDS (iterations and initialization):
- max iterations: maximum number of optimization interactions
 - initialization: method for initialization of the algorithm (PCA or random)
 
 - Isomap:
- number of neighbors
 
 - Locally Linear Embedding:
- method:
- standard
 - modified
 - hessian eigenmap
 - local
 
 - number of neighbors
 - max iterations
 
 - method:
 - Spectral Embedding:
- affinity:
- nearest neighbors
 - RFB kernel
 
 
 - affinity:
 
 - t-SNE (distance measures):
 - Output: the number of reduced features (components).
 - If Apply automatically is ticked, changes will be propagated automatically. Alternatively, click Apply.
 - Produce a report.
 
Manifold Learning widget produces different embeddings for high-dimensional data.
From left to right, top to bottom: t-SNE, MDS, Isomap, Locally Linear Embedding and Spectral Embedding.
Preprocessing
All projections use default preprocessing if necessary. It is executed in the following order:
- continuization of categorical variables (with one feature per value)
 - imputation of missing values with mean values
 
To override default preprocessing, preprocess the data beforehand with Preprocess widget.
Example
Manifold Learning widget transforms high-dimensional data into a lower dimensional approximation. This makes it great for visualizing datasets with many features. We used voting.tab to map 16-dimensional data onto a 2D graph. Then we used Scatter Plot to plot the embeddings.
