SLICR: Sparse Locally Involved Covariate Regression. A Python package for efficient, memory-conscious kNN distance correction, based on technical covariates whose effect should be removed.
This is in alpha mode, so I haven't uploaded to PyPi yet! Just a placeholder
You can install the package using pip:
python3 -m pip install slicr
Here is a simple usage example:
import numpy as np
from scipy.sparse import csr_matrix
from slicr.analysis import slicr_analysis
# Create some dummy data
n = 1000 # number of nodes
g = 5 # number of covariates
k = 20 # number of nearest neighbors
dims = 50
obs_X = np.random.rand(n, dims)
obs_knn_dist = np.random.rand(n, k)
covar_mat = np.random.rand(n, g)
# Perform the analysis
results = slicr_analysis(obs_X,
covar_mat,
k,
1)
This software is available under dual-licencing. For non-commercial entities, this software can be used under the associated licence under the 'NON-COMMERCIAL-LICENSE' file. Commercial entities must enquire.