Our work has been published at the Journal of Machine Learning Research(JMLR)!
PaCMAP (Pairwise Controlled Manifold Approximation) is a dimensionality reduction method that can be used for visualization, preserving both local and global structure of the data in original space. PaCMAP optimizes the low dimensional embedding using three kinds of pairs of points: neighbor pairs (pair_neighbors), mid-near pair (pair_MN), and further pairs (pair_FP).
Previous dimensionality reduction techniques focus on either local structure (e.g. t-SNE, LargeVis and UMAP) or global structure (e.g. TriMAP), but not both, although with carefully tuning the parameter in their algorithms that controls the balance between global and local structure, which mainly adjusts the number of considered neighbors. Instead of considering more neighbors to attract for preserving glocal structure, PaCMAP dynamically uses a special group of pairs -- mid-near pairs, to first capture global structure and then refine local structure, which both preserve global and local structure. For a thorough background and discussion on this work, please read our paper.
Please see the release notes.
You can use conda or mamba to install PaCMAP from the conda-forge channel.
conda:
conda install pacmap -c conda-forge
mamba:
mamba install pacmap -c conda-forge
You can use pip to install pacmap from PyPI. It will automatically install the dependencies for you:
pip install pacmap
If you have any problems during the installation of dependencies, such as
Failed building wheel for annoy
, you can try to install these dependencies
with conda
or mamba
. Users have also reported that in some cases, you may
wish to use numba >= 0.57
.
conda install -c conda-forge python-annoy
pip install pacmap
The pacmap
package is designed to be compatible with scikit-learn
, meaning that it has a similar interface with functions in the sklearn.manifold
module. To run pacmap
on your own dataset, you should install the package following the instructions in installation, and then import the module. The following code clip includes a use case about how to use PaCMAP on the COIL-20 dataset:
import pacmap
import numpy as np
import matplotlib.pyplot as plt
# loading preprocessed coil_20 dataset
# you can change it with any dataset that is in the ndarray format, with the shape (N, D)
# where N is the number of samples and D is the dimension of each sample
X = np.load("./data/coil_20.npy", allow_pickle=True)
X = X.reshape(X.shape[0], -1)
y = np.load("./data/coil_20_labels.npy", allow_pickle=True)
# initializing the pacmap instance
# Setting n_neighbors to "None" leads to a default choice shown below in "parameter" section
embedding = pacmap.PaCMAP(n_components=2, n_neighbors=None, MN_ratio=0.5, FP_ratio=2.0)
# fit the data (The index of transformed data corresponds to the index of the original data)
X_transformed = embedding.fit_transform(X, init="pca")
# visualize the embedding
fig, ax = plt.subplots(1, 1, figsize=(6, 6))
ax.scatter(X_transformed[:, 0], X_transformed[:, 1], cmap="Spectral", c=y, s=0.6)
You can also use PaCMAP in R with the reticulate package. We provide a sample R notebook that demonstrates how PaCMAP can be called in R for visualization.
The following images are visualizations of two datasets: MNIST (n=70,000, d=784) and Mammoth (n=10,000, d=3), generated by PaCMAP. The two visualizations demonstrate the local and global structure's preservation ability of PaCMAP respectively.
The list of the most important parameters is given below. Changing these values will affect the result of dimension reduction significantly, as specified in section 8.3 in our paper.
-
n_components
: the number of dimension of the output. Default to 2. -
n_neighbors
: the number of neighbors considered in the k-Nearest Neighbor graph. Default to 10 for dataset whose sample size is smaller than 10000. For large dataset whose sample size (n) is larger than 10000, the default value is: 10 + 15 * (log10(n) - 4). -
MN_ratio
: the ratio of the number of mid-near pairs to the number of neighbors,n_MN
=n_neighbors * MN_ratio
. Default to 0.5. -
FP_ratio
: the ratio of the number of further pairs to the number of neighbors,n_FP
=n_neighbors * FP_ratio
Default to 2.
The initialization is also important to the result, but it's a parameter of the fit
and fit_transform
function.
init
: the initialization of the lower dimensional embedding. One of"pca"
or"random"
, or a user-provided numpy ndarray with the shape (N, 2). Default to"random"
.
Other parameters include:
num_iters
: number of iterations. Default to 450. 450 iterations is enough for most dataset to converge.pair_neighbors
,pair_MN
andpair_FP
: pre-specified neighbor pairs, mid-near points, and further pairs. Allows user to use their own graphs. Default toNone
.verbose
: print the progress of pacmap. Default toFalse
lr
: learning rate of the AdaGrad optimizer. Default to 1.apply_pca
: whether pacmap should apply PCA to the data before constructing the k-Nearest Neighbor graph. Using PCA to preprocess the data can largely accelerate the DR process without losing too much accuracy. Notice that this option does not affect the initialization of the optimization process.intermediate
: whether pacmap should also output the intermediate stages of the optimization process of the lower dimension embedding. IfTrue
, then the output will be a numpy array of the size (n,n_components
, 13), where each slice is a "screenshot" of the output embedding at a particular number of steps, from [0, 10, 30, 60, 100, 120, 140, 170, 200, 250, 300, 350, 450].
Similar to the scikit-learn API, the PaCMAP instance can generate embedding for a dataset via fit
, fit_transform
and transform
method. We currently support numpy.ndarray format as our input. Specifically, to convert pandas DataFrame to ndarray format, please refer to the pandas documentation. For a more detailed walkthrough, please see the demo directory.
In version 0.4, we have provided a new option to allow users to use their own nearest neighbors when mapping large-scale datasets. Please see the demo for a detailed walkthrough about how to use PaCMAP with the user-specified nearest neighbors.
We have provided the code we use to run experiment for better reproducibility. The code are separated into three parts, in three folders, respectively:
data
, which includes all the datasets we used, preprocessed into the file format each DR method use. Notice that since the Mouse single cell RNA sequence dataset is too big (~4GB), you may need to download from the link here. MNIST and FMNIST dataset is compressed, and you need to unzip them before using. COIL-100 dataset is still too large after compressed, please preprocess it using the file Preprocessing.ipynb on your own.experiments
, which includes all the scripts we use to produce DR results.evaluation
, which includes all the scripts we use to evaluate DR results, stated in Section 8 in our paper.
After downloading the code, you may need to specify some of the paths in the script to make them fully functional.
If you used PaCMAP in your publication, or you used the implementation in this repository, please cite our paper using the following bibtex:
@article{JMLR:v22:20-1061,
author = {Yingfan Wang and Haiyang Huang and Cynthia Rudin and Yaron Shaposhnik},
title = {Understanding How Dimension Reduction Tools Work: An Empirical Approach to Deciphering t-SNE, UMAP, TriMap, and PaCMAP for Data Visualization},
journal = {Journal of Machine Learning Research},
year = {2021},
volume = {22},
number = {201},
pages = {1-73},
url = {http://jmlr.org/papers/v22/20-1061.html}
}
For PaCMAP's performance on biological dataset, please check the following paper:
@article{huang2022towards,
title={Towards a comprehensive evaluation of dimension reduction methods for transcriptomic data visualization},
author={Huang, Haiyang and Wang, Yingfan and Rudin, Cynthia and Browne, Edward P},
journal={Communications biology},
volume={5},
number={1},
pages={719},
year={2022},
publisher={Nature Publishing Group UK London}
}
Please see the license file.