sccloud.net_tsne¶
-
sccloud.net_tsne(data, rep='pca', n_jobs=-1, n_components=2, perplexity=30, early_exaggeration=12, learning_rate=1000, random_state=0, select_frac=0.1, select_K=25, select_alpha=1.0, net_alpha=0.1, polish_learning_frac=0.33, polish_n_iter=150, out_basis='net_tsne')[source]¶ Calculate approximated tSNE embedding using Deep Learning model to improve the speed.
In specific, the deep model used is MLPRegressor, the scikit-learn implementation of Multi-layer Perceptron regressor.
- Parameters
data (
anndata.AnnData) – Annotated data matrix with rows for cells (n_obs) and columns for genes (n_feature).rep (
str, optional, default:"pca") – Representation of data used for the calculation. By default, use PCA coordinates. IfNone, use the count matrixdata.X.n_jobs (
int, optional, default:-1) – Number of threads to use. If-1, use all available threads.n_components (
int, optional, default:2) – Dimension of calculated tSNE coordinates. By default, generate 2-dimensional data for 2D visualization.perplexity (
float, optional, default:30) – The perplexity is related to the number of nearest neighbors used in other manifold learning algorithms. Larger datasets usually require a larger perplexity.early_exaggeration (
int, optional, default:12) – Controls how tight natural clusters in the original space are in the embedded space, and how much space will be between them.learning_rate (
float, optional, default:1000) – The learning rate can be a critical parameter, which should be between 100 and 1000.random_state (
int, optional, default:0) – Random seed set for reproducing results.select_frac (
float, optional, default:0.1) – Down sampling fraction on the cells.select_K (
int, optional, default:25) – Number of neighbors to be used to estimate local density for each data point for down sampling.select_alpha (
float, optional, default:1.0) – Weight the down sample to be proportional toradius ** select_alpha.net_alpha (
float, optional, default:0.1) – L2 penalty (regularization term) parameter of the deep regressor.polish_learning_frac (
float, optional, default:0.33) – After running the deep regressor to predict new coordinates, usepolish_learning_frac*n_obsas the learning rate to polish the coordinates.polish_n_iter (
int, optional, default:150) – Number of iterations for polishing tSNE run.out_basis (
str, optional, default:"net_tsne") – Key name for the approximated tSNE coordinates calculated.
- Return type
None- Returns
NoneUpdate
data.obsm–data.obsm['X_' + out_basis]: Net tSNE coordinates of the data.
Update
data.obs–data.obs['ds_selected']: Boolean array to indicate which cells are selected during the down sampling phase.
Examples
>>> scc.net_tsne(adata)