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Merge pull request #91 from RobustBench/add-models
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add models from Addepalli2022Efficient
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fra31 committed Jun 7, 2022
2 parents dca3b0f + 17b6515 commit 1b632c5
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120 changes: 63 additions & 57 deletions README.md

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15 changes: 15 additions & 0 deletions model_info/cifar10/Linf/Addepalli2022Efficient_RN18.json
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{
"link": "https://artofrobust.github.io/short_paper/31.pdf",
"name": "Efficient and Effective Augmentation Strategy for Adversarial Training",
"authors": "Sravanti Addepalli, Samyak Jain, Venkatesh Babu Radhakrishnan",
"additional_data": false,
"number_forward_passes": 1,
"dataset": "cifar10",
"venue": "CVPRW 2022",
"architecture": "ResNet-18",
"eps": "8/255",
"clean_acc": "85.71",
"reported": "52.50",
"autoattack_acc": "52.48",
"unreliable": false
}
15 changes: 15 additions & 0 deletions model_info/cifar10/Linf/Addepalli2022Efficient_WRN_34_10.json
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{
"link": "https://artofrobust.github.io/short_paper/31.pdf",
"name": "Efficient and Effective Augmentation Strategy for Adversarial Training",
"authors": "Sravanti Addepalli, Samyak Jain, Venkatesh Babu Radhakrishnan",
"additional_data": false,
"number_forward_passes": 1,
"dataset": "cifar10",
"venue": "CVPRW 2022",
"architecture": "WideResNet-34-10",
"eps": "8/255",
"clean_acc": "88.71",
"reported": "57.81",
"autoattack_acc": "57.81",
"unreliable": false
}
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{
"link": "https://artofrobust.github.io/short_paper/31.pdf",
"name": "Efficient and Effective Augmentation Strategy for Adversarial Training",
"authors": "Sravanti Addepalli, Samyak Jain, Venkatesh Babu Radhakrishnan",
"additional_data": false,
"number_forward_passes": 1,
"dataset": "cifar10",
"venue": "CVPRW 2022",
"architecture": "WideResNet-34-10",
"eps": null,
"clean_acc": "88.71",
"reported": "80.12",
"corruptions_acc": "80.12"
}
1 change: 1 addition & 0 deletions model_info/cifar10/corruptions/unaggregated_results.csv
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Expand Up @@ -22,3 +22,4 @@ Diffenderfer2021Winning_Binary_CARD_Deck,0.945,0.9388,0.9229,0.9149,0.9036,0.937
Addepalli2021Towards_WRN34,0.8466,0.8389,0.7994,0.7758,0.7151,0.8236,0.7945,0.7601,0.7581,0.724,0.8451,0.8379,0.8177,0.8048,0.7985,0.8448,0.8405,0.8333,0.8212,0.8016,0.8394,0.8172,0.7719,0.7423,0.7037,0.8459,0.8326,0.815,0.7972,0.7467,0.8587,0.8588,0.8568,0.8526,0.8317,0.8303,0.7687,0.684,0.5667,0.3517,0.816,0.8127,0.8043,0.7947,0.7759,0.8483,0.8285,0.7935,0.7843,0.7467,0.7998,0.8012,0.7935,0.7425,0.7465,0.8248,0.7948,0.7542,0.6549,0.551,0.8118,0.6633,0.5305,0.3584,0.1953,0.8379,0.8307,0.8279,0.8231,0.8195,0.8062,0.8101,0.7952,0.781,0.7728
Modas2021PRIMEResNet18,0.9203,0.9157,0.8993,0.8975,0.8848,0.92,0.906,0.8883,0.8885,0.8677,0.918,0.899,0.8857,0.856,0.856,0.9222,0.9118,0.9073,0.8814,0.8356,0.9145,0.901,0.8902,0.8767,0.8686,0.928,0.9236,0.9165,0.907,0.8845,0.929,0.9275,0.925,0.9238,0.9148,0.9288,0.9173,0.898,0.8575,0.7277,0.9156,0.9163,0.9112,0.9063,0.8931,0.9211,0.9097,0.8953,0.894,0.8807,0.8737,0.8744,0.8802,0.8246,0.8343,0.9148,0.8877,0.8668,0.8048,0.743,0.9291,0.9172,0.9096,0.8936,0.8389,0.914,0.8997,0.8954,0.8903,0.8804,0.9055,0.908,0.8996,0.8799,0.8594
Erichson2022NoisyMix,0.9611,0.9529,0.9339,0.9198,0.8991,0.9588,0.9463,0.9318,0.9327,0.9118,0.9581,0.9396,0.935,0.9166,0.9065,0.9594,0.95,0.9427,0.8862,0.7533,0.9548,0.9395,0.912,0.9003,0.8818,0.9668,0.9637,0.959,0.9513,0.9269,0.9682,0.9659,0.9636,0.9601,0.9493,0.9666,0.961,0.9509,0.9338,0.8563,0.9545,0.9536,0.9469,0.9417,0.9276,0.9621,0.9497,0.9329,0.9292,0.9076,0.8973,0.8964,0.9038,0.8305,0.8412,0.9662,0.9658,0.9647,0.9614,0.9618,0.9666,0.957,0.946,0.9136,0.6425,0.9429,0.9272,0.9201,0.9098,0.8909,0.9512,0.9506,0.945,0.9175,0.8805
Addepalli2022Efficient_WRN_34_10,0.8819,0.8752,0.8474,0.8345,0.8038,0.8565,0.8319,0.7952,0.7941,0.7508,0.8752,0.8623,0.8473,0.8132,0.797,0.8798,0.8738,0.8701,0.8565,0.838,0.8769,0.8596,0.8286,0.8123,0.7974,0.8811,0.8657,0.8483,0.8315,0.7803,0.888,0.8859,0.8799,0.8693,0.8309,0.8674,0.7994,0.7051,0.5727,0.3483,0.8485,0.8429,0.8306,0.8208,0.8012,0.87,0.8425,0.8033,0.805,0.7798,0.8378,0.8365,0.8345,0.7796,0.7841,0.8618,0.8301,0.8075,0.7472,0.703,0.8498,0.6766,0.5126,0.3187,0.1941,0.873,0.866,0.8609,0.8576,0.8571,0.8401,0.84,0.8353,0.8175,0.8074
15 changes: 15 additions & 0 deletions model_info/cifar100/Linf/Addepalli2022Efficient_RN18.json
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{
"link": "https://artofrobust.github.io/short_paper/31.pdf",
"name": "Efficient and Effective Augmentation Strategy for Adversarial Training",
"authors": "Sravanti Addepalli, Samyak Jain, Venkatesh Babu Radhakrishnan",
"additional_data": false,
"number_forward_passes": 1,
"dataset": "cifar100",
"venue": "CVPRW 2022",
"architecture": "ResNet-18",
"eps": "8/255",
"clean_acc": "65.45",
"reported": "27.69",
"autoattack_acc": "27.67",
"unreliable": false
}
15 changes: 15 additions & 0 deletions model_info/cifar100/Linf/Addepalli2022Efficient_WRN_34_10.json
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@@ -0,0 +1,15 @@
{
"link": "https://artofrobust.github.io/short_paper/31.pdf",
"name": "Efficient and Effective Augmentation Strategy for Adversarial Training",
"authors": "Sravanti Addepalli, Samyak Jain, Venkatesh Babu Radhakrishnan",
"additional_data": false,
"number_forward_passes": 1,
"dataset": "cifar100",
"venue": "CVPRW 2022",
"architecture": "WideResNet-34-10",
"eps": "8/255",
"clean_acc": "68.75",
"reported": "31.85",
"autoattack_acc": "31.85",
"unreliable": false
}
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@@ -0,0 +1,14 @@
{
"link": "https://artofrobust.github.io/short_paper/31.pdf",
"name": "Efficient and Effective Augmentation Strategy for Adversarial Training",
"authors": "Sravanti Addepalli, Samyak Jain, Venkatesh Babu Radhakrishnan",
"additional_data": false,
"number_forward_passes": 1,
"dataset": "cifar100",
"venue": "CVPRW 2022",
"architecture": "WideResNet-34-10",
"eps": null,
"clean_acc": "68.75",
"reported": "56.95",
"corruptions_acc": "56.95"
}
1 change: 1 addition & 0 deletions model_info/cifar100/corruptions/unaggregated_results.csv
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Expand Up @@ -12,3 +12,4 @@ Addepalli2021Towards_PARN18,0.6211,0.6115,0.5906,0.5595,0.4787,0.5629,0.3907,0.2
Addepalli2021Towards_WRN34,0.6612,0.6483,0.629,0.601,0.5244,0.601,0.413,0.2831,0.1501,0.0367,0.6479,0.6225,0.5948,0.5679,0.5046,0.5824,0.5841,0.5723,0.5581,0.5497,0.6252,0.521,0.3998,0.2813,0.1164,0.6244,0.5759,0.508,0.507,0.4457,0.6502,0.6324,0.5878,0.5586,0.5251,0.5992,0.5995,0.5866,0.5378,0.5375,0.6286,0.592,0.551,0.4678,0.3738,0.6358,0.6241,0.6194,0.6153,0.6076,0.6104,0.5701,0.5238,0.5243,0.4813,0.6477,0.6413,0.6321,0.6204,0.5883,0.6534,0.65,0.6141,0.5872,0.5317,0.6522,0.6274,0.6021,0.5634,0.5248,0.5955,0.5896,0.5718,0.5582,0.5327
Modas2021PRIMEResNet18,0.7739,0.7698,0.7601,0.7442,0.7095,0.7709,0.7508,0.7316,0.7032,0.604,0.7733,0.7593,0.7371,0.707,0.639,0.7184,0.7261,0.7147,0.6767,0.6272,0.7717,0.7484,0.7074,0.6518,0.4926,0.7423,0.7127,0.6769,0.6801,0.6395,0.7315,0.7068,0.6725,0.6565,0.6407,0.623,0.6319,0.6361,0.5417,0.5471,0.7361,0.68,0.6207,0.5216,0.4336,0.7184,0.677,0.6553,0.6399,0.6178,0.7458,0.7153,0.6769,0.6785,0.6433,0.7563,0.7286,0.7057,0.6267,0.5212,0.7488,0.7284,0.7001,0.6911,0.6648,0.7527,0.7045,0.6824,0.6457,0.6284,0.7428,0.7341,0.718,0.697,0.6658
Erichson2022NoisyMix,0.7887,0.7659,0.6938,0.664,0.597,0.7888,0.7653,0.7323,0.7305,0.6957,0.7925,0.74,0.7366,0.7,0.656,0.7977,0.7792,0.7606,0.6877,0.5489,0.7666,0.7109,0.6427,0.6046,0.5732,0.8101,0.8017,0.7868,0.7634,0.7187,0.8097,0.8034,0.7896,0.7744,0.7241,0.81,0.7935,0.758,0.7166,0.5775,0.7809,0.7793,0.766,0.7496,0.721,0.7835,0.7417,0.6895,0.6884,0.6334,0.6286,0.6355,0.6528,0.5229,0.5414,0.8111,0.8104,0.8087,0.8033,0.8018,0.8071,0.7716,0.7376,0.6672,0.3828,0.7563,0.7151,0.6997,0.6826,0.6571,0.7624,0.7724,0.7612,0.7121,0.6538
Addepalli2022Efficient_WRN_34_10,0.6816,0.6689,0.6102,0.5803,0.5064,0.6409,0.5995,0.5611,0.5587,0.5168,0.6695,0.6484,0.6201,0.5767,0.5478,0.6785,0.6701,0.6641,0.649,0.6196,0.6762,0.6414,0.578,0.5358,0.497,0.6749,0.652,0.6244,0.6013,0.5432,0.6855,0.6786,0.663,0.6389,0.5722,0.6583,0.569,0.4518,0.3217,0.1393,0.6286,0.62,0.6027,0.5904,0.5669,0.6558,0.6155,0.5626,0.5606,0.5112,0.6163,0.6185,0.6118,0.5383,0.552,0.617,0.5381,0.4629,0.3326,0.2355,0.6424,0.4941,0.3669,0.2089,0.0425,0.6658,0.6531,0.6487,0.6427,0.637,0.6138,0.6131,0.6048,0.589,0.5807
12 changes: 12 additions & 0 deletions robustbench/model_zoo/cifar10.py
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Expand Up @@ -736,6 +736,14 @@ def forward(self, x):
std=CIFAR10_STD),
'gdrive_id': '1uQZYUuUiL9BzaQUeXLhjr_RhoyFRrHe3'
}),
('Addepalli2022Efficient_RN18', {
'model': ResNet18,
'gdrive_id': '1m5vhdzIUUKhDbsZdOG9z76Eyp6f4xe_f',
}),
('Addepalli2022Efficient_WRN_34_10', {
'model': lambda: WideResNet(depth=34, widen_factor=10),
'gdrive_id': '1--dVDtZhAk4D2zMtTDwIGnImuCGxTcBA',
}),
])

l2 = OrderedDict([
Expand Down Expand Up @@ -951,6 +959,10 @@ def forward(self, x):
'model': Modas2021PRIMEResNet18,
'gdrive_id': '13oDyqi16FeXy5j4Vm6IghnjTVqp_XF5U'
}),
('Addepalli2022Efficient_WRN_34_10', {
'model': lambda: WideResNet(depth=34, widen_factor=10),
'gdrive_id': '1--dVDtZhAk4D2zMtTDwIGnImuCGxTcBA',
}),
])

cifar_10_models = OrderedDict([(ThreatModel.Linf, linf), (ThreatModel.L2, l2),
Expand Down
14 changes: 14 additions & 0 deletions robustbench/model_zoo/cifar100.py
Original file line number Diff line number Diff line change
Expand Up @@ -361,6 +361,15 @@ def forward(self, x):
num_classes=100),
'gdrive_id': '1WhRq01Yl1v8O3skkrGUBuySlptidc5a6',
}),
('Addepalli2022Efficient_RN18', {
'model': lambda: ResNet(BasicBlock, [2, 2, 2, 2], num_classes=100),
'gdrive_id': '1-2hnxC7lZOQDqQbum4yPbtRtTND86I5N',
}),
('Addepalli2022Efficient_WRN_34_10', {
'model': lambda: WideResNet(depth=34, widen_factor=10,
num_classes=100),
'gdrive_id': '1-3c-iniqNfiwGoGPHC3nSostnG6J9fDt',
}),
])

common_corruptions = OrderedDict([
Expand Down Expand Up @@ -438,6 +447,11 @@ def forward(self, x):
'model': Modas2021PRIMEResNet18,
'gdrive_id': '1kcohb2tBuJHa5pGSi4nAkvK-hXPSI6Hr'
}),
('Addepalli2022Efficient_WRN_34_10', {
'model': lambda: WideResNet(depth=34, widen_factor=10,
num_classes=100),
'gdrive_id': '1-3c-iniqNfiwGoGPHC3nSostnG6J9fDt',
}),
])

cifar_100_models = OrderedDict([(ThreatModel.Linf, linf),
Expand Down

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