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- ///////////////////////////////////////////
- // Running convGAN-proximary-5 on imblearn_ozone_level
- ///////////////////////////////////////////
- Load 'data_input/imblearn_ozone_level'
- from imblearn
- Data loaded.
- -> Shuffling data
- ### Start exercise for synthetic point generator
- ====== Step 1/5 =======
- -> Shuffling data
- -> Spliting data to slices
- ------ Step 1/5: Slice 1/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 394, 99
- GAN fn, tp: 3, 12
- GAN f1 score: 0.190
- GAN cohens kappa score: 0.146
- -> test with 'LR'
- LR tn, fp: 425, 68
- LR fn, tp: 1, 14
- LR f1 score: 0.289
- LR cohens kappa score: 0.251
- LR average precision score: 0.349
- -> test with 'GB'
- GB tn, fp: 478, 15
- GB fn, tp: 7, 8
- GB f1 score: 0.421
- GB cohens kappa score: 0.400
- -> test with 'KNN'
- KNN tn, fp: 391, 102
- KNN fn, tp: 9, 6
- KNN f1 score: 0.098
- KNN cohens kappa score: 0.048
- ------ Step 1/5: Slice 2/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 484, 9
- GAN fn, tp: 15, 0
- GAN f1 score: 0.000
- GAN cohens kappa score: -0.023
- -> test with 'LR'
- LR tn, fp: 432, 61
- LR fn, tp: 4, 11
- LR f1 score: 0.253
- LR cohens kappa score: 0.214
- LR average precision score: 0.202
- -> test with 'GB'
- GB tn, fp: 485, 8
- GB fn, tp: 7, 8
- GB f1 score: 0.516
- GB cohens kappa score: 0.501
- -> test with 'KNN'
- KNN tn, fp: 446, 47
- KNN fn, tp: 13, 2
- KNN f1 score: 0.062
- KNN cohens kappa score: 0.018
- ------ Step 1/5: Slice 3/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 492, 1
- GAN fn, tp: 15, 0
- GAN f1 score: 0.000
- GAN cohens kappa score: -0.004
- -> test with 'LR'
- LR tn, fp: 432, 61
- LR fn, tp: 4, 11
- LR f1 score: 0.253
- LR cohens kappa score: 0.214
- LR average precision score: 0.119
- -> test with 'GB'
- GB tn, fp: 478, 15
- GB fn, tp: 7, 8
- GB f1 score: 0.421
- GB cohens kappa score: 0.400
- -> test with 'KNN'
- KNN tn, fp: 426, 67
- KNN fn, tp: 11, 4
- KNN f1 score: 0.093
- KNN cohens kappa score: 0.047
- ------ Step 1/5: Slice 4/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 387, 106
- GAN fn, tp: 4, 11
- GAN f1 score: 0.167
- GAN cohens kappa score: 0.121
- -> test with 'LR'
- LR tn, fp: 432, 61
- LR fn, tp: 5, 10
- LR f1 score: 0.233
- LR cohens kappa score: 0.193
- LR average precision score: 0.202
- -> test with 'GB'
- GB tn, fp: 485, 8
- GB fn, tp: 9, 6
- GB f1 score: 0.414
- GB cohens kappa score: 0.397
- -> test with 'KNN'
- KNN tn, fp: 430, 63
- KNN fn, tp: 10, 5
- KNN f1 score: 0.120
- KNN cohens kappa score: 0.076
- ------ Step 1/5: Slice 5/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 163, 328
- GAN fn, tp: 1, 12
- GAN f1 score: 0.068
- GAN cohens kappa score: 0.019
- -> test with 'LR'
- LR tn, fp: 427, 64
- LR fn, tp: 3, 10
- LR f1 score: 0.230
- LR cohens kappa score: 0.195
- LR average precision score: 0.180
- -> test with 'GB'
- GB tn, fp: 475, 16
- GB fn, tp: 9, 4
- GB f1 score: 0.242
- GB cohens kappa score: 0.218
- -> test with 'KNN'
- KNN tn, fp: 383, 108
- KNN fn, tp: 5, 8
- KNN f1 score: 0.124
- KNN cohens kappa score: 0.081
- ====== Step 2/5 =======
- -> Shuffling data
- -> Spliting data to slices
- ------ Step 2/5: Slice 1/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 39, 454
- GAN fn, tp: 0, 15
- GAN f1 score: 0.062
- GAN cohens kappa score: 0.005
- -> test with 'LR'
- LR tn, fp: 425, 68
- LR fn, tp: 5, 10
- LR f1 score: 0.215
- LR cohens kappa score: 0.174
- LR average precision score: 0.308
- -> test with 'GB'
- GB tn, fp: 483, 10
- GB fn, tp: 12, 3
- GB f1 score: 0.214
- GB cohens kappa score: 0.192
- -> test with 'KNN'
- KNN tn, fp: 415, 78
- KNN fn, tp: 10, 5
- KNN f1 score: 0.102
- KNN cohens kappa score: 0.055
- ------ Step 2/5: Slice 2/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 341, 152
- GAN fn, tp: 7, 8
- GAN f1 score: 0.091
- GAN cohens kappa score: 0.040
- -> test with 'LR'
- LR tn, fp: 444, 49
- LR fn, tp: 5, 10
- LR f1 score: 0.270
- LR cohens kappa score: 0.234
- LR average precision score: 0.214
- -> test with 'GB'
- GB tn, fp: 481, 12
- GB fn, tp: 7, 8
- GB f1 score: 0.457
- GB cohens kappa score: 0.438
- -> test with 'KNN'
- KNN tn, fp: 396, 97
- KNN fn, tp: 6, 9
- KNN f1 score: 0.149
- KNN cohens kappa score: 0.102
- ------ Step 2/5: Slice 3/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 72, 421
- GAN fn, tp: 0, 15
- GAN f1 score: 0.067
- GAN cohens kappa score: 0.010
- -> test with 'LR'
- LR tn, fp: 426, 67
- LR fn, tp: 1, 14
- LR f1 score: 0.292
- LR cohens kappa score: 0.255
- LR average precision score: 0.413
- -> test with 'GB'
- GB tn, fp: 482, 11
- GB fn, tp: 8, 7
- GB f1 score: 0.424
- GB cohens kappa score: 0.405
- -> test with 'KNN'
- KNN tn, fp: 394, 99
- KNN fn, tp: 11, 4
- KNN f1 score: 0.068
- KNN cohens kappa score: 0.017
- ------ Step 2/5: Slice 4/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 450, 43
- GAN fn, tp: 13, 2
- GAN f1 score: 0.067
- GAN cohens kappa score: 0.023
- -> test with 'LR'
- LR tn, fp: 440, 53
- LR fn, tp: 5, 10
- LR f1 score: 0.256
- LR cohens kappa score: 0.219
- LR average precision score: 0.155
- -> test with 'GB'
- GB tn, fp: 477, 16
- GB fn, tp: 11, 4
- GB f1 score: 0.229
- GB cohens kappa score: 0.202
- -> test with 'KNN'
- KNN tn, fp: 432, 61
- KNN fn, tp: 11, 4
- KNN f1 score: 0.100
- KNN cohens kappa score: 0.055
- ------ Step 2/5: Slice 5/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 473, 18
- GAN fn, tp: 11, 2
- GAN f1 score: 0.121
- GAN cohens kappa score: 0.093
- -> test with 'LR'
- LR tn, fp: 430, 61
- LR fn, tp: 3, 10
- LR f1 score: 0.238
- LR cohens kappa score: 0.203
- LR average precision score: 0.195
- -> test with 'GB'
- GB tn, fp: 479, 12
- GB fn, tp: 7, 6
- GB f1 score: 0.387
- GB cohens kappa score: 0.368
- -> test with 'KNN'
- KNN tn, fp: 377, 114
- KNN fn, tp: 2, 11
- KNN f1 score: 0.159
- KNN cohens kappa score: 0.118
- ====== Step 3/5 =======
- -> Shuffling data
- -> Spliting data to slices
- ------ Step 3/5: Slice 1/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 379, 114
- GAN fn, tp: 8, 7
- GAN f1 score: 0.103
- GAN cohens kappa score: 0.053
- -> test with 'LR'
- LR tn, fp: 431, 62
- LR fn, tp: 3, 12
- LR f1 score: 0.270
- LR cohens kappa score: 0.232
- LR average precision score: 0.302
- -> test with 'GB'
- GB tn, fp: 475, 18
- GB fn, tp: 10, 5
- GB f1 score: 0.263
- GB cohens kappa score: 0.236
- -> test with 'KNN'
- KNN tn, fp: 395, 98
- KNN fn, tp: 9, 6
- KNN f1 score: 0.101
- KNN cohens kappa score: 0.052
- ------ Step 3/5: Slice 2/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 463, 30
- GAN fn, tp: 11, 4
- GAN f1 score: 0.163
- GAN cohens kappa score: 0.128
- -> test with 'LR'
- LR tn, fp: 430, 63
- LR fn, tp: 3, 12
- LR f1 score: 0.267
- LR cohens kappa score: 0.229
- LR average precision score: 0.147
- -> test with 'GB'
- GB tn, fp: 476, 17
- GB fn, tp: 8, 7
- GB f1 score: 0.359
- GB cohens kappa score: 0.335
- -> test with 'KNN'
- KNN tn, fp: 391, 102
- KNN fn, tp: 7, 8
- KNN f1 score: 0.128
- KNN cohens kappa score: 0.080
- ------ Step 3/5: Slice 3/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 411, 82
- GAN fn, tp: 5, 10
- GAN f1 score: 0.187
- GAN cohens kappa score: 0.143
- -> test with 'LR'
- LR tn, fp: 449, 44
- LR fn, tp: 4, 11
- LR f1 score: 0.314
- LR cohens kappa score: 0.281
- LR average precision score: 0.188
- -> test with 'GB'
- GB tn, fp: 477, 16
- GB fn, tp: 9, 6
- GB f1 score: 0.324
- GB cohens kappa score: 0.300
- -> test with 'KNN'
- KNN tn, fp: 398, 95
- KNN fn, tp: 10, 5
- KNN f1 score: 0.087
- KNN cohens kappa score: 0.038
- ------ Step 3/5: Slice 4/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 482, 11
- GAN fn, tp: 15, 0
- GAN f1 score: 0.000
- GAN cohens kappa score: -0.026
- -> test with 'LR'
- LR tn, fp: 448, 45
- LR fn, tp: 5, 10
- LR f1 score: 0.286
- LR cohens kappa score: 0.251
- LR average precision score: 0.165
- -> test with 'GB'
- GB tn, fp: 477, 16
- GB fn, tp: 9, 6
- GB f1 score: 0.324
- GB cohens kappa score: 0.300
- -> test with 'KNN'
- KNN tn, fp: 394, 99
- KNN fn, tp: 9, 6
- KNN f1 score: 0.100
- KNN cohens kappa score: 0.051
- ------ Step 3/5: Slice 5/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 143, 348
- GAN fn, tp: 0, 13
- GAN f1 score: 0.070
- GAN cohens kappa score: 0.021
- -> test with 'LR'
- LR tn, fp: 424, 67
- LR fn, tp: 2, 11
- LR f1 score: 0.242
- LR cohens kappa score: 0.207
- LR average precision score: 0.367
- -> test with 'GB'
- GB tn, fp: 478, 13
- GB fn, tp: 8, 5
- GB f1 score: 0.323
- GB cohens kappa score: 0.302
- -> test with 'KNN'
- KNN tn, fp: 396, 95
- KNN fn, tp: 3, 10
- KNN f1 score: 0.169
- KNN cohens kappa score: 0.130
- ====== Step 4/5 =======
- -> Shuffling data
- -> Spliting data to slices
- ------ Step 4/5: Slice 1/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 490, 3
- GAN fn, tp: 15, 0
- GAN f1 score: 0.000
- GAN cohens kappa score: -0.010
- -> test with 'LR'
- LR tn, fp: 432, 61
- LR fn, tp: 4, 11
- LR f1 score: 0.253
- LR cohens kappa score: 0.214
- LR average precision score: 0.270
- -> test with 'GB'
- GB tn, fp: 478, 15
- GB fn, tp: 10, 5
- GB f1 score: 0.286
- GB cohens kappa score: 0.261
- -> test with 'KNN'
- KNN tn, fp: 399, 94
- KNN fn, tp: 9, 6
- KNN f1 score: 0.104
- KNN cohens kappa score: 0.056
- ------ Step 4/5: Slice 2/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 456, 37
- GAN fn, tp: 11, 4
- GAN f1 score: 0.143
- GAN cohens kappa score: 0.104
- -> test with 'LR'
- LR tn, fp: 439, 54
- LR fn, tp: 4, 11
- LR f1 score: 0.275
- LR cohens kappa score: 0.238
- LR average precision score: 0.238
- -> test with 'GB'
- GB tn, fp: 478, 15
- GB fn, tp: 7, 8
- GB f1 score: 0.421
- GB cohens kappa score: 0.400
- -> test with 'KNN'
- KNN tn, fp: 406, 87
- KNN fn, tp: 9, 6
- KNN f1 score: 0.111
- KNN cohens kappa score: 0.063
- ------ Step 4/5: Slice 3/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 452, 41
- GAN fn, tp: 10, 5
- GAN f1 score: 0.164
- GAN cohens kappa score: 0.125
- -> test with 'LR'
- LR tn, fp: 433, 60
- LR fn, tp: 3, 12
- LR f1 score: 0.276
- LR cohens kappa score: 0.239
- LR average precision score: 0.193
- -> test with 'GB'
- GB tn, fp: 480, 13
- GB fn, tp: 7, 8
- GB f1 score: 0.444
- GB cohens kappa score: 0.425
- -> test with 'KNN'
- KNN tn, fp: 412, 81
- KNN fn, tp: 11, 4
- KNN f1 score: 0.080
- KNN cohens kappa score: 0.031
- ------ Step 4/5: Slice 4/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 449, 44
- GAN fn, tp: 9, 6
- GAN f1 score: 0.185
- GAN cohens kappa score: 0.146
- -> test with 'LR'
- LR tn, fp: 435, 58
- LR fn, tp: 3, 12
- LR f1 score: 0.282
- LR cohens kappa score: 0.246
- LR average precision score: 0.283
- -> test with 'GB'
- GB tn, fp: 477, 16
- GB fn, tp: 8, 7
- GB f1 score: 0.368
- GB cohens kappa score: 0.345
- -> test with 'KNN'
- KNN tn, fp: 395, 98
- KNN fn, tp: 9, 6
- KNN f1 score: 0.101
- KNN cohens kappa score: 0.052
- ------ Step 4/5: Slice 5/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 338, 153
- GAN fn, tp: 4, 9
- GAN f1 score: 0.103
- GAN cohens kappa score: 0.058
- -> test with 'LR'
- LR tn, fp: 422, 69
- LR fn, tp: 4, 9
- LR f1 score: 0.198
- LR cohens kappa score: 0.161
- LR average precision score: 0.212
- -> test with 'GB'
- GB tn, fp: 474, 17
- GB fn, tp: 7, 6
- GB f1 score: 0.333
- GB cohens kappa score: 0.311
- -> test with 'KNN'
- KNN tn, fp: 393, 98
- KNN fn, tp: 6, 7
- KNN f1 score: 0.119
- KNN cohens kappa score: 0.076
- ====== Step 5/5 =======
- -> Shuffling data
- -> Spliting data to slices
- ------ Step 5/5: Slice 1/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 17, 476
- GAN fn, tp: 0, 15
- GAN f1 score: 0.059
- GAN cohens kappa score: 0.002
- -> test with 'LR'
- LR tn, fp: 441, 52
- LR fn, tp: 2, 13
- LR f1 score: 0.325
- LR cohens kappa score: 0.291
- LR average precision score: 0.266
- -> test with 'GB'
- GB tn, fp: 480, 13
- GB fn, tp: 7, 8
- GB f1 score: 0.444
- GB cohens kappa score: 0.425
- -> test with 'KNN'
- KNN tn, fp: 383, 110
- KNN fn, tp: 11, 4
- KNN f1 score: 0.062
- KNN cohens kappa score: 0.010
- ------ Step 5/5: Slice 2/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 423, 70
- GAN fn, tp: 4, 11
- GAN f1 score: 0.229
- GAN cohens kappa score: 0.189
- -> test with 'LR'
- LR tn, fp: 422, 71
- LR fn, tp: 3, 12
- LR f1 score: 0.245
- LR cohens kappa score: 0.205
- LR average precision score: 0.159
- -> test with 'GB'
- GB tn, fp: 476, 17
- GB fn, tp: 10, 5
- GB f1 score: 0.270
- GB cohens kappa score: 0.244
- -> test with 'KNN'
- KNN tn, fp: 410, 83
- KNN fn, tp: 11, 4
- KNN f1 score: 0.078
- KNN cohens kappa score: 0.030
- ------ Step 5/5: Slice 3/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 455, 38
- GAN fn, tp: 9, 6
- GAN f1 score: 0.203
- GAN cohens kappa score: 0.167
- -> test with 'LR'
- LR tn, fp: 455, 38
- LR fn, tp: 6, 9
- LR f1 score: 0.290
- LR cohens kappa score: 0.257
- LR average precision score: 0.191
- -> test with 'GB'
- GB tn, fp: 482, 11
- GB fn, tp: 11, 4
- GB f1 score: 0.267
- GB cohens kappa score: 0.244
- -> test with 'KNN'
- KNN tn, fp: 363, 130
- KNN fn, tp: 5, 10
- KNN f1 score: 0.129
- KNN cohens kappa score: 0.080
- ------ Step 5/5: Slice 4/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 387, 106
- GAN fn, tp: 3, 12
- GAN f1 score: 0.180
- GAN cohens kappa score: 0.135
- -> test with 'LR'
- LR tn, fp: 425, 68
- LR fn, tp: 2, 13
- LR f1 score: 0.271
- LR cohens kappa score: 0.233
- LR average precision score: 0.242
- -> test with 'GB'
- GB tn, fp: 474, 19
- GB fn, tp: 6, 9
- GB f1 score: 0.419
- GB cohens kappa score: 0.395
- -> test with 'KNN'
- KNN tn, fp: 404, 89
- KNN fn, tp: 8, 7
- KNN f1 score: 0.126
- KNN cohens kappa score: 0.079
- ------ Step 5/5: Slice 5/5 -------
- -> Reset the GAN
- -> Train generator for synthetic samples
- -> create 1912 synthetic samples
- -> test with GAN.predict
- GAN tn, fp: 232, 259
- GAN fn, tp: 0, 13
- GAN f1 score: 0.091
- GAN cohens kappa score: 0.044
- -> test with 'LR'
- LR tn, fp: 421, 70
- LR fn, tp: 2, 11
- LR f1 score: 0.234
- LR cohens kappa score: 0.198
- LR average precision score: 0.277
- -> test with 'GB'
- GB tn, fp: 476, 15
- GB fn, tp: 9, 4
- GB f1 score: 0.250
- GB cohens kappa score: 0.226
- -> test with 'KNN'
- KNN tn, fp: 383, 108
- KNN fn, tp: 6, 7
- KNN f1 score: 0.109
- KNN cohens kappa score: 0.066
- ### Exercise is done.
- -----[ LR ]-----
- maximum:
- LR tn, fp: 455, 71
- LR fn, tp: 6, 14
- LR f1 score: 0.325
- LR cohens kappa score: 0.291
- LR average precision score: 0.413
- average:
- LR tn, fp: 432.8, 59.8
- LR fn, tp: 3.44, 11.16
- LR f1 score: 0.262
- LR cohens kappa score: 0.225
- LR average precision score: 0.233
- minimum:
- LR tn, fp: 421, 38
- LR fn, tp: 1, 9
- LR f1 score: 0.198
- LR cohens kappa score: 0.161
- LR average precision score: 0.119
- -----[ GB ]-----
- maximum:
- GB tn, fp: 485, 19
- GB fn, tp: 12, 9
- GB f1 score: 0.516
- GB cohens kappa score: 0.501
- average:
- GB tn, fp: 478.44, 14.16
- GB fn, tp: 8.4, 6.2
- GB f1 score: 0.353
- GB cohens kappa score: 0.331
- minimum:
- GB tn, fp: 474, 8
- GB fn, tp: 6, 3
- GB f1 score: 0.214
- GB cohens kappa score: 0.192
- -----[ KNN ]-----
- maximum:
- KNN tn, fp: 446, 130
- KNN fn, tp: 13, 11
- KNN f1 score: 0.169
- KNN cohens kappa score: 0.130
- average:
- KNN tn, fp: 400.48, 92.12
- KNN fn, tp: 8.44, 6.16
- KNN f1 score: 0.107
- KNN cohens kappa score: 0.060
- minimum:
- KNN tn, fp: 363, 47
- KNN fn, tp: 2, 2
- KNN f1 score: 0.062
- KNN cohens kappa score: 0.010
- -----[ GAN ]-----
- maximum:
- GAN tn, fp: 492, 476
- GAN fn, tp: 15, 15
- GAN f1 score: 0.229
- GAN cohens kappa score: 0.189
- average:
- GAN tn, fp: 354.88, 137.72
- GAN fn, tp: 6.92, 7.68
- GAN f1 score: 0.109
- GAN cohens kappa score: 0.068
- minimum:
- GAN tn, fp: 17, 1
- GAN fn, tp: 0, 0
- GAN f1 score: 0.000
- GAN cohens kappa score: -0.026
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