# graspologic
[![Paper shield](https://img.shields.io/badge/JMLR-Paper-red)](http://www.jmlr.org/papers/volume20/19-490/19-490.pdf)
[![PyPI version](https://img.shields.io/pypi/v/graspologic.svg)](https://pypi.org/project/graspologic/)
[![Downloads shield](https://pepy.tech/badge/graspologic)](https://pepy.tech/project/graspologic)
[![Docs shield](https://img.shields.io/readthedocs/graspologic)](https://graspologic.readthedocs.io/)
![graspologic CI](https://github.com/microsoft/graspologic/workflows/graspologic%20CI/badge.svg)
[![codecov](https://codecov.io/gh/microsoft/graspologic/branch/dev/graph/badge.svg)](https://codecov.io/gh/microsoft/graspologic)
[![DOI](https://zenodo.org/badge/147768493.svg)](https://zenodo.org/badge/latestdoi/147768493)
[![License: MIT](https://img.shields.io/badge/License-MIT-yellow.svg)](https://opensource.org/licenses/MIT)
## `graspologic` is a package for graph statistical algorithms.
- [Overview](#overview)
- [Documentation](#documentation)
- [System Requirements](#system-requirements)
- [Installation Guide](#installation-guide)
- [Contributing](#contributing)
- [License](#license)
- [Issues](#issues)
# Overview
A graph, or network, provides a mathematically intuitive representation of data with some sort of relationship between items. For example, a social network can be represented as a graph by considering all participants in the social network as nodes, with connections representing whether each pair of individuals in the network are friends with one another. Naively, one might apply traditional statistical techniques to a graph, which neglects the spatial arrangement of nodes within the network and is not utilizing all of the information present in the graph. In this package, we provide utilities and algorithms designed for the processing and analysis of graphs with specialized graph statistical algorithms.
# Documentation
The official documentation with usage is at https://graspologic.readthedocs.io/en/latest/
Please visit the [tutorial section](https://microsoft.github.io/graspologic/tutorials/index.html) in the official website for more in depth usage.
# System Requirements
## Hardware requirements
`graspologic` package requires only a standard computer with enough RAM to support the in-memory operations.
## Software requirements
### OS Requirements
`graspologic` is tested on the following OSes:
- Linux x64
- macOS x64
- Windows 10 x64
And across the following versions of Python:
- 3.6 (x64)
- 3.7 (x64)
- 3.8 (x64)
If you try to use `graspologic` for a different platform than the ones listed and notice any unexpected behavior,
please feel free to [raise an issue](https://github.com/microsoft/graspologic/issues/new). It's better for ourselves and our users
if we have concrete examples of things not working!
# Installation Guide
## Install from pip
```
pip install graspologic
```
## Install from Github
```
git clone https://github.com/microsoft/graspologic
cd graspologic
python3 -m venv venv
source venv/bin/activate
python3 setup.py install
```
# Contributing
We welcome contributions from anyone. Please see our [contribution guidelines](https://github.com/microsoft/graspologic/blob/dev/CONTRIBUTING.md) before making a pull request. Our
[issues](https://github.com/microsoft/graspologic/issues) page is full of places we could use help!
If you have an idea for an improvement not listed there, please
[make an issue](https://github.com/microsoft/graspologic/issues/new) first so you can discuss with the developers.
# License
This project is covered under the MIT License.
# Issues
We appreciate detailed bug reports and feature requests (though we appreciate pull requests even more!). Please visit our [issues](https://github.com/microsoft/graspologic/issues) page if you have questions or ideas.
# Citing `graspologic`
If you find `graspologic` useful in your work, please cite the package via the [GraSPy paper](http://www.jmlr.org/papers/volume20/19-490/19-490.pdf)
> Chung, J., Pedigo, B. D., Bridgeford, E. W., Varjavand, B. K., Helm, H. S., & Vogelstein, J. T. (2019). GraSPy: Graph Statistics in Python. Journal of Machine Learning Research, 20(158), 1-7.
没有合适的资源?快使用搜索试试~ 我知道了~
PyPI 官网下载 | graspologic-0.2.0.dev710055525.tar.gz
1.该资源内容由用户上传,如若侵权请联系客服进行举报
2.虚拟产品一经售出概不退款(资源遇到问题,请及时私信上传者)
2.虚拟产品一经售出概不退款(资源遇到问题,请及时私信上传者)
版权申诉
0 下载量 165 浏览量
2022-01-11
14:03:40
上传
评论
收藏 4.87MB GZ 举报
温馨提示
共162个文件
py:80个
csv:39个
edgelist:32个
资源来自pypi官网。 资源全名:graspologic-0.2.0.dev710055525.tar.gz
资源推荐
资源详情
资源评论
收起资源包目录
PyPI 官网下载 | graspologic-0.2.0.dev710055525.tar.gz (162个子文件)
setup.cfg 1KB
right_adjacency.csv 89KB
left_adjacency.csv 86KB
54797.csv 33KB
54870.csv 33KB
54866.csv 33KB
54864.csv 33KB
54868.csv 33KB
54793.csv 33KB
54794.csv 33KB
54790.csv 33KB
54831.csv 33KB
54779.csv 33KB
54829.csv 33KB
54776.csv 33KB
54781.csv 33KB
54835.csv 33KB
54777.csv 33KB
54815.csv 33KB
54833.csv 33KB
54817.csv 33KB
54855.csv 33KB
54853.csv 33KB
54813.csv 33KB
54849.csv 33KB
54851.csv 33KB
54811.csv 33KB
54885.csv 33KB
54823.csv 33KB
54887.csv 33KB
54883.csv 33KB
54847.csv 33KB
54842.csv 33KB
54821.csv 33KB
54890.csv 33KB
atlas.csv 19KB
participants.csv 488B
right_cell_labels.csv 426B
left_cell_labels.csv 418B
blocks.csv 297B
sub-54781_ses-1_dti.edgelist 501KB
sub-54793_ses-1_dti.edgelist 491KB
sub-54794_ses-1_dti.edgelist 490KB
sub-54829_ses-1_dti.edgelist 489KB
sub-54866_ses-1_dti.edgelist 484KB
sub-54868_ses-1_dti.edgelist 482KB
sub-54797_ses-1_dti.edgelist 479KB
sub-54790_ses-1_dti.edgelist 475KB
sub-54835_ses-1_dti.edgelist 475KB
sub-54870_ses-1_dti.edgelist 470KB
sub-54779_ses-1_dti.edgelist 470KB
sub-54883_ses-1_dti.edgelist 469KB
sub-54890_ses-1_dti.edgelist 463KB
sub-54847_ses-1_dti.edgelist 459KB
sub-54842_ses-1_dti.edgelist 455KB
sub-54776_ses-1_dti.edgelist 454KB
sub-54821_ses-1_dti.edgelist 448KB
sub-54823_ses-1_dti.edgelist 446KB
sub-54864_ses-1_dti.edgelist 441KB
sub-54853_ses-1_dti.edgelist 440KB
sub-54849_ses-1_dti.edgelist 421KB
sub-54831_ses-1_dti.edgelist 419KB
sub-54817_ses-1_dti.edgelist 416KB
sub-54811_ses-1_dti.edgelist 414KB
sub-54815_ses-1_dti.edgelist 409KB
sub-54777_ses-1_dti.edgelist 407KB
sub-54885_ses-1_dti.edgelist 407KB
sub-54833_ses-1_dti.edgelist 403KB
sub-54813_ses-1_dti.edgelist 401KB
sub-54851_ses-1_dti.edgelist 398KB
sub-54887_ses-1_dti.edgelist 355KB
sub-54855_ses-1_dti.edgelist 335KB
MANIFEST.in 173B
colors-100.json 28KB
README.md 4KB
PKG-INFO 6KB
PKG-INFO 6KB
plot.py 48KB
_quad_node.py 43KB
utils.py 37KB
simulations.py 36KB
plot_matrix.py 33KB
autogmm.py 27KB
qap.py 22KB
leiden.py 19KB
latent_distribution_test.py 18KB
n2v.py 18KB
sbm.py 18KB
seedless_procrustes.py 16KB
graph_cuts.py 16KB
divisive_cluster.py 16KB
VNviaSGM.py 15KB
auto.py 13KB
graph_cuts.py 11KB
spectralVN.py 10KB
gclust.py 10KB
ase.py 10KB
render.py 10KB
mase.py 10KB
simulations_corr.py 10KB
共 162 条
- 1
- 2
资源评论
挣扎的蓝藻
- 粉丝: 13w+
- 资源: 15万+
上传资源 快速赚钱
- 我的内容管理 展开
- 我的资源 快来上传第一个资源
- 我的收益 登录查看自己的收益
- 我的积分 登录查看自己的积分
- 我的C币 登录后查看C币余额
- 我的收藏
- 我的下载
- 下载帮助
安全验证
文档复制为VIP权益,开通VIP直接复制
信息提交成功