Deep Recursive Embedding for High-Dimensional Data
Project description
Deep Recursive Embedding
Deep Recursive Embedding (DRE) is a novel demensionality reduction method based on a generic deep embedding network (DEN) framework, which is able to learn a parametric mapping from high-dimensional space to low-dimensional space, guided by a recursive training strategy. DRE makes use of the latent data representations for boosted embedding performance.
Lab github DRE page: Tao Lab
Maintainer's github DRE page: Xinrui Zu
MNIST embedding result
Installation
DRE can be installed with a simple PyPi command:
pip install DRE
The pre-requests of DRE are:
numpy >= 1.19
scikit-learn >= 0.16
matplotlib
numba >= 0.34
torch >= 1.0
How to use DRE
DRE follows the form of Scikit-learn APIs, whose fit_transform
function is for returning the embedding result and fit
for the whole model:
from DRE import DeepRecursiveEmbedding
dre = DeepRecursiveEmbedding()
y = dre.fit_transform(x)
Run test_MNIST.py
to check the embedding procedure of MNIST dataset.
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