PCA |
Dimensionality reduction |
Linear, principle component analysis, orthogonal transformation. |
51
|
Isomap |
|
Nonlinear, spectral clustering, geodesic distance. |
53
|
Diffusion Map |
|
Nonlinear, spectral clustering, diffusion distance. |
54
|
t‐SNE/viSNE |
|
Nonlinear, t‐distributed stochastic neighborhood embedding, attraction/repulsion balance. |
55
|
UMAP |
|
Nonlinear, uniform manifold approximation and projection, identify user‐specified number of neighbors to build high‐dimensional manifolds. |
56
|
ACCENSE |
Unsupervised clustering |
t‐SNE, kernel‐based density estimation, peak‐finding, and partitioning. |
57
|
Phenograph |
|
k‐nearest neighbors (k‐NN) detection, community detection, and Jaccard similarity coefficient. |
58
|
Xshift |
|
Weighted k‐NN density estimation and density‐ascending path‐based clustering. |
59
|
FlowSOM |
|
Self‐organizing map, minimal spanning tree‐based nodes connection, and consensus of hierarchical meta‐clustering. |
60
|
DEPECHE |
|
Penalized k‐means clustering. |
61
|
SPADE |
|
Density‐normalization, spanning tree progression analysis, and hierarchical/agglomerative clustering. |
62
|
ACDC |
Semi‐supervised clustering |
Community detection of landmark points. Cells and random walker‐based clustering. |
63
|
LDA |
|
Linear discriminant analysis. |
64
|
Citrus |
Clustering with statistics |
Hierarchically clustering, regularized supervised learning algorithms, nearest shrunken centroid methods, and lasso regularized logistic regression. |
67
|
Wanderlust |
Differentiation trajectory determination |
Ensemble of k I‐nearest neighbor graphs, shortest path distance‐based trajectory construction, and waypoints‐based iteratively trajectory refinement. |
69
|