This is a Pytorch implementation of paper: DropEdge: Towards Deep Graph Convolutional Networks on Node Classification

Related tags

Deep LearningDropEdge
Overview

DropEdge: Towards Deep Graph Convolutional Networks on Node Classification

PWC PWC PWC PWC

This is a Pytorch implementation of paper: DropEdge: Towards Deep Graph Convolutional Networks on Node Classification

Requirements

  • Python 3.6.2
  • For the other packages, please refer to the requirements.txt.

Usage

To run the demo: sh run.sh

All scripts of different models with parameters for Cora, Citeseer and Pubmed are in scripts folder. You can reproduce the results by:

pip install -r requirements.txt
sh scripts/supervised/cora_IncepGCN.sh

Data

The data format is same as GCN. We provide three benchmark datasets as examples (see data folder). We use the public dataset splits provided by Planetoid. The semi-supervised setting strictly follows GCN, while the full-supervised setting strictly follows FastGCN and ASGCN.

Benchmark Results

For the details of backbones in Tables, please refer to the Appendix B.2 in the paper. All results are obtained on GPU (CUDA Version 9.0.176).

Full-supervised Setting Results

The following table demonstrates the testing accuracy (%) comparisons on different backbones and layers w and w/o DropEdge.

Dataset Backbone 2 layers 4 layers 8 layers 16 layers 32 layers 64 layers
Orignal DropEdge Orignal DropEdge Orignal DropEdge Orignal DropEdge Orignal DropEdge Orignal DropEdge
Cora GCN 86.10 86.50 85.50 87.60 78.70 85.80 82.10 84.30 71.60 74.60 52.00 53.20
ResGCN - - 86.00 87.00 85.40 86.90 85.30 86.90 85.10 86.80 79.80 84.80
JKNet - - 86.90 87.70 86.70 87.80 86.20 88.00 87.10 87.60 86.30 87.90
IncepGCN - - 85.60 87.90 86.70 88.20 87.10 87.70 87.40 87.70 85.30 88.20
GraphSage 87.80 88.10 87.10 88.10 84.30 87.10 84.10 84.50 31.90 32.20 31.90 31.90
Citeseer GCN 75.90 78.70 76.70 79.20 74.60 77.20 65.20 76.80 59.20 61.40 44.60 45.60
ResGCN - - 78.90 78.80 77.80 78.80 78.20 79.40 74.40 77.90 21.20 75.30
JKNet - - 79.10 80.20 79.20 80.20 78.80 80.10 71.70 80.00 76.70 80.00
IncepGCN - - 79.50 79.90 79.60 80.50 78.50 80.20 72.60 80.30 79.00 79.90
GraphSage 78.40 80.00 77.30 79.20 74.10 77.10 72.90 74.50 37.00 53.60 16.90 25.10
Pubmed GCN 90.20 91.20 88.70 91.30 90.10 90.90 88.10 90.30 84.60 86.20 79.70 79.00
ResGCN - - 90.70 90.70 89.60 90.50 89.60 91.00 90.20 91.10 87.90 90.20
JKNet - - 90.50 91.30 90.60 91.20 89.90 91.50 89.20 91.30 90.60 91.60
IncepGCN - - 89.90 91.60 90.20 91.50 90.80 91.30 OOM 90.50 OOM 90.00
GraphSage 90.10 90.70 89.40 91.20 90.20 91.70 83.50 87.80 41.30 47.90 40.70 62.30

Semi-supervised Setting Results

The following table demonstrates the testing accuracy (%) comparisons on different backbones and layers w and w/o DropEdge.

Dataset Method 2 layers 4 laysers 8 layers 16 layers 32 layers 64 layers
Orignal DropEdge Orignal DropEdge Orignal DropEdge Orignal DropEdge Orignal DropEdge Orignal DropEdge
Cora GCN 81.10 82.80 80.40 82.00 69.50 75.80 64.90 75.70 60.30 62.50 28.70 49.50
ResGCN - - 78.80 83.30 75.60 82.80 72.20 82.70 76.60 81.10 61.10 78.90
JKNet - - 80.20 83.30 80.70 82.60 80.20 83.00 81.10 82.50 71.50 83.20
IncepGCN - - 77.60 82.90 76.50 82.50 81.70 83.10 81.70 83.10 80.00 83.50
Citeseer GCN 70.80 72.30 67.60 70.60 30.20 61.40 18.30 57.20 25.00 41.60 20.00 34.40
ResGCN - - 70.50 72.20 65.00 71.60 66.50 70.10 62.60 70.00 22.10 65.10
JKNet - - 68.70 72.60 67.70 71.80 69.80 72.60 68.20 70.80 63.40 72.20
IncepGCN - - 69.30 72.70 68.40 71.40 70.20 72.50 68.00 72.60 67.50 71.00
Pubmed GCN 79.00 79.60 76.50 79.40 61.20 78.10 40.90 78.50 22.40 77.00 35.30 61.50
ResGCN - - 78.60 78.80 78.10 78.90 75.50 78.00 67.90 78.20 66.90 76.90
JKNet - - 78.00 78.70 78.10 78.70 72.60 79.10 72.40 79.20 74.50 78.90
IncepGCN - - 77.70 79.50 77.90 78.60 74.90 79.00 OOM OOM OOM OOM

Change Log

  • 2020-03-04: Support for tensorboard and added an example in src/train_new.py. Thanks for MihailSalnikov.
  • 2019-10-11: Support both full-supervised and semi-supervised task setting for Cora, Citeseer and Pubmed. See --task_type option.

References

@inproceedings{
rong2020dropedge,
title={DropEdge: Towards Deep Graph Convolutional Networks on Node Classification},
author={Yu Rong and Wenbing Huang and Tingyang Xu and Junzhou Huang},
booktitle={International Conference on Learning Representations},
year={2020},
url={https://openreview.net/forum?id=Hkx1qkrKPr}
}
Comments
  • Results on semi-supervised

    Results on semi-supervised

    I am trying to reproduce the results of dropedge on semi-supervised setting. I used scripts in script/semi-supervised/ to run the program, but I can't get the results showned in readme. I get around 81 accuracy on Cora with 4 layers JKnet(dropedge), not 83.3. How can I reproduce the results shown in readme? And have you tried to calculate the mean accuracy using different random weight initializations which used in GCN and GAT?

    opened by Weesley743 3
  • Bump pillow from 4.2.1 to 9.0.1

    Bump pillow from 4.2.1 to 9.0.1

    Bumps pillow from 4.2.1 to 9.0.1.

    Release notes

    Sourced from pillow's releases.

    9.0.1

    https://pillow.readthedocs.io/en/stable/releasenotes/9.0.1.html

    Changes

    • In show_file, use os.remove to remove temporary images. CVE-2022-24303 #6010 [@​radarhere, @​hugovk]
    • Restrict builtins within lambdas for ImageMath.eval. CVE-2022-22817 #6009 [radarhere]

    9.0.0

    https://pillow.readthedocs.io/en/stable/releasenotes/9.0.0.html

    Changes

    ... (truncated)

    Changelog

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    9.0.1 (2022-02-03)

    • In show_file, use os.remove to remove temporary images. CVE-2022-24303 #6010 [radarhere, hugovk]

    • Restrict builtins within lambdas for ImageMath.eval. CVE-2022-22817 #6009 [radarhere]

    9.0.0 (2022-01-02)

    • Restrict builtins for ImageMath.eval(). CVE-2022-22817 #5923 [radarhere]

    • Ensure JpegImagePlugin stops at the end of a truncated file #5921 [radarhere]

    • Fixed ImagePath.Path array handling. CVE-2022-22815, CVE-2022-22816 #5920 [radarhere]

    • Remove consecutive duplicate tiles that only differ by their offset #5919 [radarhere]

    • Improved I;16 operations on big endian #5901 [radarhere]

    • Limit quantized palette to number of colors #5879 [radarhere]

    • Fixed palette index for zeroed color in FASTOCTREE quantize #5869 [radarhere]

    • When saving RGBA to GIF, make use of first transparent palette entry #5859 [radarhere]

    • Pass SAMPLEFORMAT to libtiff #5848 [radarhere]

    • Added rounding when converting P and PA #5824 [radarhere]

    • Improved putdata() documentation and data handling #5910 [radarhere]

    • Exclude carriage return in PDF regex to help prevent ReDoS #5912 [hugovk]

    • Fixed freeing pointer in ImageDraw.Outline.transform #5909 [radarhere]

    ... (truncated)

    Commits
    • 6deac9e 9.0.1 version bump
    • c04d812 Update CHANGES.rst [ci skip]
    • 4fabec3 Added release notes for 9.0.1
    • 02affaa Added delay after opening image with xdg-open
    • ca0b585 Updated formatting
    • 427221e In show_file, use os.remove to remove temporary images
    • c930be0 Restrict builtins within lambdas for ImageMath.eval
    • 75b69dd Dont need to pin for GHA
    • cd938a7 Autolink CWE numbers with sphinx-issues
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  • Bump pillow from 4.2.1 to 9.0.0

    Bump pillow from 4.2.1 to 9.0.0

    Bumps pillow from 4.2.1 to 9.0.0.

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    9.0.0

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    9.0.0 (2022-01-02)

    • Restrict builtins for ImageMath.eval(). CVE-2022-22817 #5923 [radarhere]

    • Ensure JpegImagePlugin stops at the end of a truncated file #5921 [radarhere]

    • Fixed ImagePath.Path array handling. CVE-2022-22815, CVE-2022-22816 #5920 [radarhere]

    • Remove consecutive duplicate tiles that only differ by their offset #5919 [radarhere]

    • Improved I;16 operations on big endian #5901 [radarhere]

    • Limit quantized palette to number of colors #5879 [radarhere]

    • Fixed palette index for zeroed color in FASTOCTREE quantize #5869 [radarhere]

    • When saving RGBA to GIF, make use of first transparent palette entry #5859 [radarhere]

    • Pass SAMPLEFORMAT to libtiff #5848 [radarhere]

    • Added rounding when converting P and PA #5824 [radarhere]

    • Improved putdata() documentation and data handling #5910 [radarhere]

    • Exclude carriage return in PDF regex to help prevent ReDoS #5912 [hugovk]

    • Fixed freeing pointer in ImageDraw.Outline.transform #5909 [radarhere]

    • Added ImageShow support for xdg-open #5897 [m-shinder, radarhere]

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  • Bump pillow from 4.2.1 to 8.3.2

    Bump pillow from 4.2.1 to 8.3.2

    Bumps pillow from 4.2.1 to 8.3.2.

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    8.3.2

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    Security

    • CVE-2021-23437 Raise ValueError if color specifier is too long [hugovk, radarhere]

    • Fix 6-byte OOB read in FliDecode [wiredfool]

    Python 3.10 wheels

    • Add support for Python 3.10 #5569, #5570 [hugovk, radarhere]

    Fixed regressions

    • Ensure TIFF RowsPerStrip is multiple of 8 for JPEG compression #5588 [kmilos, radarhere]

    • Updates for ImagePalette channel order #5599 [radarhere]

    • Hide FriBiDi shim symbols to avoid conflict with real FriBiDi library #5651 [nulano]

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    8.3.2 (2021-09-02)

    • CVE-2021-23437 Raise ValueError if color specifier is too long [hugovk, radarhere]

    • Fix 6-byte OOB read in FliDecode [wiredfool]

    • Add support for Python 3.10 #5569, #5570 [hugovk, radarhere]

    • Ensure TIFF RowsPerStrip is multiple of 8 for JPEG compression #5588 [kmilos, radarhere]

    • Updates for ImagePalette channel order #5599 [radarhere]

    • Hide FriBiDi shim symbols to avoid conflict with real FriBiDi library #5651 [nulano]

    8.3.1 (2021-07-06)

    • Catch OSError when checking if fp is sys.stdout #5585 [radarhere]

    • Handle removing orientation from alternate types of EXIF data #5584 [radarhere]

    • Make Image.array take optional dtype argument #5572 [t-vi, radarhere]

    8.3.0 (2021-07-01)

    • Use snprintf instead of sprintf. CVE-2021-34552 #5567 [radarhere]

    • Limit TIFF strip size when saving with LibTIFF #5514 [kmilos]

    • Allow ICNS save on all operating systems #4526 [baletu, radarhere, newpanjing, hugovk]

    • De-zigzag JPEG's DQT when loading; deprecate convert_dict_qtables #4989 [gofr, radarhere]

    • Replaced xml.etree.ElementTree #5565 [radarhere]

    ... (truncated)

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    • cece64f Add 8.3.2 (2021-09-02) [CI skip]
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  • Bump pillow from 4.2.1 to 8.2.0

    Bump pillow from 4.2.1 to 8.2.0

    Bumps pillow from 4.2.1 to 8.2.0.

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    8.2.0

    https://pillow.readthedocs.io/en/stable/releasenotes/8.2.0.html

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    ... (truncated)

    Changelog

    Sourced from pillow's changelog.

    8.2.0 (2021-04-01)

    • Added getxmp() method #5144 [UrielMaD, radarhere]

    • Add ImageShow support for GraphicsMagick #5349 [latosha-maltba, radarhere]

    • Do not load transparent pixels from subsequent GIF frames #5333 [zewt, radarhere]

    • Use LZW encoding when saving GIF images #5291 [raygard]

    • Set all transparent colors to be equal in quantize() #5282 [radarhere]

    • Allow PixelAccess to use Python int when parsing x and y #5206 [radarhere]

    • Removed Image._MODEINFO #5316 [radarhere]

    • Add preserve_tone option to autocontrast #5350 [elejke, radarhere]

    • Fixed linear_gradient and radial_gradient I and F modes #5274 [radarhere]

    • Add support for reading TIFFs with PlanarConfiguration=2 #5364 [kkopachev, wiredfool, nulano]

    • Deprecated categories #5351 [radarhere]

    • Do not premultiply alpha when resizing with Image.NEAREST resampling #5304 [nulano]

    • Dynamically link FriBiDi instead of Raqm #5062 [nulano]

    • Allow fewer PNG palette entries than the bit depth maximum when saving #5330 [radarhere]

    • Use duration from info dictionary when saving WebP #5338 [radarhere]

    • Stop flattening EXIF IFD into getexif() #4947 [radarhere, kkopachev]

    ... (truncated)

    Commits
    • e0e353c 8.2.0 version bump
    • ee635be Merge pull request #5377 from hugovk/security-and-release-notes
    • 694c84f Fix typo [ci skip]
    • 8febdad Review, typos and lint
    • fea4196 Reorder, roughly alphabetic
    • 496245a Fix BLP DOS -- CVE-2021-28678
    • 22e9bee Fix DOS in PSDImagePlugin -- CVE-2021-28675
    • ba65f0b Fix Memory DOS in ImageFont
    • bb6c11f Fix FLI DOS -- CVE-2021-28676
    • 5a5e6db Fix EPS DOS on _open -- CVE-2021-28677
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  • Bump pillow from 4.2.1 to 8.1.1

    Bump pillow from 4.2.1 to 8.1.1

    Bumps pillow from 4.2.1 to 8.1.1.

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    8.1.1

    https://pillow.readthedocs.io/en/stable/releasenotes/8.1.1.html

    8.1.0

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    8.1.1 (2021-03-01)

    • Use more specific regex chars to prevent ReDoS. CVE-2021-25292 [hugovk]

    • Fix OOB Read in TiffDecode.c, and check the tile validity before reading. CVE-2021-25291 [wiredfool]

    • Fix negative size read in TiffDecode.c. CVE-2021-25290 [wiredfool]

    • Fix OOB read in SgiRleDecode.c. CVE-2021-25293 [wiredfool]

    • Incorrect error code checking in TiffDecode.c. CVE-2021-25289 [wiredfool]

    • PyModule_AddObject fix for Python 3.10 #5194 [radarhere]

    8.1.0 (2021-01-02)

    • Fix TIFF OOB Write error. CVE-2020-35654 #5175 [wiredfool]

    • Fix for Read Overflow in PCX Decoding. CVE-2020-35653 #5174 [wiredfool, radarhere]

    • Fix for SGI Decode buffer overrun. CVE-2020-35655 #5173 [wiredfool, radarhere]

    • Fix OOB Read when saving GIF of xsize=1 #5149 [wiredfool]

    • Makefile updates #5159 [wiredfool, radarhere]

    • Add support for PySide6 #5161 [hugovk]

    • Use disposal settings from previous frame in APNG #5126 [radarhere]

    • Added exception explaining that repr_png saves to PNG #5139 [radarhere]

    • Use previous disposal method in GIF load_end #5125 [radarhere]

    ... (truncated)

    Commits
    • 741d874 8.1.1 version bump
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    • d25036f Credits
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    • 8b8076b Fix for CVE-2021-25291
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    dependencies 
    opened by dependabot[bot] 1
  • Performance issue

    Performance issue

    Hello, I am running DropEdge on my own custom data split for Cora. My performance is really low and not even close to what I expected. Can you please assist me with this performance issue?

    opened by superlouis 1
  • PPI

    PPI

    `path = osp.join(osp.dirname(osp.realpath(file)), '..', 'data', 'DD') dataset = TUDataset(path, name='DD') n = len(dataset) // 10 test_dataset = dataset[:n] train_dataset = dataset[n:]

    print('Partioning the graph... (this may take a while)')

    test_dataset_index = 0 test_data = [] test_loader = [] for data in test_dataset: \data.y = data.y.repeat(data.x.size(0)) \data_name = 'cluster_data' + '' + str(test_dataset_index) \loader_name = 'loader' + '' + str(test_dataset_index) \test_data.append(data_name) \test_loader.append(loader_name) \test_data[test_dataset_index] = ClusterData(data, 'test', test_dataset_index, num_parts=3, recursive=False, save_dir=dataset.cluster_processed_dir) \test_loader[test_dataset_index] = ClusterLoader(test_data[test_dataset_index], batch_size=30, shuffle=False, num_workers=0) \test_dataset_index += 1

    train_dataset_index = 0 train_data = [] train_loader = [] for data in train_dataset: \data.y = data.y.repeat(data.x.size(0)) \data_name = 'cluster_data' + '' + str(train_dataset_index) \loader_name = 'loader' + '' + str(train_dataset_index) \train_data.append(data_name) \train_loader.append(loader_name) \train_data[train_dataset_index] = ClusterData(data, 'train', train_dataset_index, num_parts=3, recursive=False, save_dir=dataset.cluster_processed_dir) \train_loader[train_dataset_index] = ClusterLoader(train_data[train_dataset_index], batch_size=30, shuffle=False, num_workers=0) \train_dataset_index += 1

    print('Done!')

    for loader in train_loader: \for data in loader: \x, edge_index, batch = data.x, data.edge_index, data.batch`

    opened by CFF-Dream 1
  • Bump pillow from 4.2.1 to 6.2.0

    Bump pillow from 4.2.1 to 6.2.0

    Bumps pillow from 4.2.1 to 6.2.0.

    Release notes

    Sourced from pillow's releases.

    6.2.0

    https://pillow.readthedocs.io/en/stable/releasenotes/6.2.0.html

    6.1.0

    https://pillow.readthedocs.io/en/stable/releasenotes/6.1.0.html

    6.0.0

    No release notes provided.

    5.4.1

    No release notes provided.

    5.4.0

    No release notes provided.

    5.3.0

    No release notes provided.

    5.2.0

    No release notes provided.

    5.1.0

    No release notes provided.

    5.0.0

    No release notes provided.

    4.3.0

    No release notes provided.

    Changelog

    Sourced from pillow's changelog.

    6.2.0 (2019-10-01)

    • Catch buffer overruns #4104 [radarhere]

    • Initialize rows_per_strip when RowsPerStrip tag is missing #4034 [cgohlke, radarhere]

    • Raise error if TIFF dimension is a string #4103 [radarhere]

    • Added decompression bomb checks #4102 [radarhere]

    • Fix ImageGrab.grab DPI scaling on Windows 10 version 1607+ #4000 [nulano, radarhere]

    • Corrected negative seeks #4101 [radarhere]

    • Added argument to capture all screens on Windows #3950 [nulano, radarhere]

    • Updated warning to specify when Image.frombuffer defaults will change #4086 [radarhere]

    • Changed WindowsViewer format to PNG #4080 [radarhere]

    • Use TIFF orientation #4063 [radarhere]

    • Raise the same error if a truncated image is loaded a second time #3965 [radarhere]

    • Lazily use ImageFileDirectory_v1 values from Exif #4031 [radarhere]

    • Improved HSV conversion #4004 [radarhere]

    • Added text stroking #3978 [radarhere, hugovk]

    • No more deprecated bdist_wininst .exe installers #4029 [hugovk]

    • Do not allow floodfill to extend into negative coordinates #4017 [radarhere]

    ... (truncated)
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    dependencies 
    opened by dependabot[bot] 1
  • ppi

    ppi

    `path = osp.join(osp.dirname(osp.realpath(file)), '..', 'data', 'DD') dataset = TUDataset(path, name='DD') n = len(dataset) // 10 test_dataset = dataset[:n] train_dataset = dataset[n:]

    print('Partioning the graph... (this may take a while)')

    test_dataset_index = 0 test_data = [] test_loader = [] for data in test_dataset: \data.y = data.y.repeat(data.x.size(0)) \data_name = 'cluster_data' + '' + str(test_dataset_index) \loader_name = 'loader' + '' + str(test_dataset_index) \test_data.append(data_name) \test_loader.append(loader_name) \test_data[test_dataset_index] = ClusterData(data, 'test', test_dataset_index, num_parts=3, recursive=False, save_dir=dataset.cluster_processed_dir) \test_loader[test_dataset_index] = ClusterLoader(test_data[test_dataset_index], batch_size=30, shuffle=False, num_workers=0) \test_dataset_index += 1

    train_dataset_index = 0 train_data = [] train_loader = [] for data in train_dataset: \data.y = data.y.repeat(data.x.size(0)) \data_name = 'cluster_data' + '' + str(train_dataset_index) \loader_name = 'loader' + '' + str(train_dataset_index) \train_data.append(data_name) \train_loader.append(loader_name) \train_data[train_dataset_index] = ClusterData(data, 'train', train_dataset_index, num_parts=3, recursive=False, save_dir=dataset.cluster_processed_dir) \train_loader[train_dataset_index] = ClusterLoader(train_data[train_dataset_index], batch_size=30, shuffle=False, num_workers=0) \train_dataset_index += 1

    print('Done!')

    for loader in train_loader: \for data in loader: \x, edge_index, batch = data.x, data.edge_index, data.batch`

    opened by CFF-Dream 0
  • Bump certifi from 2016.2.28 to 2022.12.7

    Bump certifi from 2016.2.28 to 2022.12.7

    Bumps certifi from 2016.2.28 to 2022.12.7.

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    dependencies 
    opened by dependabot[bot] 0
  • Bump pillow from 4.2.1 to 9.3.0

    Bump pillow from 4.2.1 to 9.3.0

    Bumps pillow from 4.2.1 to 9.3.0.

    Release notes

    Sourced from pillow's releases.

    9.3.0

    https://pillow.readthedocs.io/en/stable/releasenotes/9.3.0.html

    Changes

    ... (truncated)

    Changelog

    Sourced from pillow's changelog.

    9.3.0 (2022-10-29)

    • Limit SAMPLESPERPIXEL to avoid runtime DOS #6700 [wiredfool]

    • Initialize libtiff buffer when saving #6699 [radarhere]

    • Inline fname2char to fix memory leak #6329 [nulano]

    • Fix memory leaks related to text features #6330 [nulano]

    • Use double quotes for version check on old CPython on Windows #6695 [hugovk]

    • Remove backup implementation of Round for Windows platforms #6693 [cgohlke]

    • Fixed set_variation_by_name offset #6445 [radarhere]

    • Fix malloc in _imagingft.c:font_setvaraxes #6690 [cgohlke]

    • Release Python GIL when converting images using matrix operations #6418 [hmaarrfk]

    • Added ExifTags enums #6630 [radarhere]

    • Do not modify previous frame when calculating delta in PNG #6683 [radarhere]

    • Added support for reading BMP images with RLE4 compression #6674 [npjg, radarhere]

    • Decode JPEG compressed BLP1 data in original mode #6678 [radarhere]

    • Added GPS TIFF tag info #6661 [radarhere]

    • Added conversion between RGB/RGBA/RGBX and LAB #6647 [radarhere]

    • Do not attempt normalization if mode is already normal #6644 [radarhere]

    ... (truncated)

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    dependencies 
    opened by dependabot[bot] 0
  • Bump numpy from 1.14.3 to 1.22.0

    Bump numpy from 1.14.3 to 1.22.0

    Bumps numpy from 1.14.3 to 1.22.0.

    Release notes

    Sourced from numpy's releases.

    v1.22.0

    NumPy 1.22.0 Release Notes

    NumPy 1.22.0 is a big release featuring the work of 153 contributors spread over 609 pull requests. There have been many improvements, highlights are:

    • Annotations of the main namespace are essentially complete. Upstream is a moving target, so there will likely be further improvements, but the major work is done. This is probably the most user visible enhancement in this release.
    • A preliminary version of the proposed Array-API is provided. This is a step in creating a standard collection of functions that can be used across application such as CuPy and JAX.
    • NumPy now has a DLPack backend. DLPack provides a common interchange format for array (tensor) data.
    • New methods for quantile, percentile, and related functions. The new methods provide a complete set of the methods commonly found in the literature.
    • A new configurable allocator for use by downstream projects.

    These are in addition to the ongoing work to provide SIMD support for commonly used functions, improvements to F2PY, and better documentation.

    The Python versions supported in this release are 3.8-3.10, Python 3.7 has been dropped. Note that 32 bit wheels are only provided for Python 3.8 and 3.9 on Windows, all other wheels are 64 bits on account of Ubuntu, Fedora, and other Linux distributions dropping 32 bit support. All 64 bit wheels are also linked with 64 bit integer OpenBLAS, which should fix the occasional problems encountered by folks using truly huge arrays.

    Expired deprecations

    Deprecated numeric style dtype strings have been removed

    Using the strings "Bytes0", "Datetime64", "Str0", "Uint32", and "Uint64" as a dtype will now raise a TypeError.

    (gh-19539)

    Expired deprecations for loads, ndfromtxt, and mafromtxt in npyio

    numpy.loads was deprecated in v1.15, with the recommendation that users use pickle.loads instead. ndfromtxt and mafromtxt were both deprecated in v1.17 - users should use numpy.genfromtxt instead with the appropriate value for the usemask parameter.

    (gh-19615)

    ... (truncated)

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    dependencies 
    opened by dependabot[bot] 0
  • I can't reproduce the experiment with layers more than 8

    I can't reproduce the experiment with layers more than 8

    Dear DropEdge, I create a new virtual environment exactly as your requirement.txt describes.But there is still a huge gap between the results of mine and those published on your paper.I believe that randomly removing edges can help to overcome the over-smoothing issue but I still want to get the precise parameters so that we can discover more in this field!Thanks a lot!

    opened by StrayLu 0
  • dropedge implementation with graphsage

    dropedge implementation with graphsage

    The publication mentions and reports evaluation metrics of dropedge applied with graphsage. Is there code implementation for graphsage? I review the script file but haven't found any.

    opened by joyce04 1
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