imblearn_webpage.log 17 KB

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  1. ///////////////////////////////////////////
  2. // Running convGAN-proximary-5 on imblearn_webpage
  3. ///////////////////////////////////////////
  4. Load 'data_input/imblearn_webpage'
  5. from imblearn
  6. non empty cut in data_input/imblearn_webpage! (76 points)
  7. Data loaded.
  8. -> Shuffling data
  9. ### Start exercise for synthetic point generator
  10. ====== Step 1/5 =======
  11. -> Shuffling data
  12. -> Spliting data to slices
  13. ------ Step 1/5: Slice 1/5 -------
  14. -> Reset the GAN
  15. -> Train generator for synthetic samples
  16. -> create 26255 synthetic samples
  17. -> test with GAN.predict
  18. GAN tn, fp: 6228, 532
  19. GAN fn, tp: 35, 162
  20. GAN f1 score: 0.364
  21. GAN cohens kappa score: 0.334
  22. -> test with 'LR'
  23. LR tn, fp: 6351, 409
  24. LR fn, tp: 25, 172
  25. LR f1 score: 0.442
  26. LR cohens kappa score: 0.418
  27. LR average precision score: 0.766
  28. -> test with 'GB'
  29. GB tn, fp: 6400, 360
  30. GB fn, tp: 94, 103
  31. GB f1 score: 0.312
  32. GB cohens kappa score: 0.284
  33. -> test with 'KNN'
  34. KNN tn, fp: 6264, 496
  35. KNN fn, tp: 15, 182
  36. KNN f1 score: 0.416
  37. KNN cohens kappa score: 0.389
  38. ------ Step 1/5: Slice 2/5 -------
  39. -> Reset the GAN
  40. -> Train generator for synthetic samples
  41. -> create 26255 synthetic samples
  42. -> test with GAN.predict
  43. GAN tn, fp: 5812, 948
  44. GAN fn, tp: 38, 159
  45. GAN f1 score: 0.244
  46. GAN cohens kappa score: 0.206
  47. -> test with 'LR'
  48. LR tn, fp: 6403, 357
  49. LR fn, tp: 22, 175
  50. LR f1 score: 0.480
  51. LR cohens kappa score: 0.458
  52. LR average precision score: 0.788
  53. -> test with 'GB'
  54. GB tn, fp: 6298, 462
  55. GB fn, tp: 90, 107
  56. GB f1 score: 0.279
  57. GB cohens kappa score: 0.248
  58. -> test with 'KNN'
  59. KNN tn, fp: 6344, 416
  60. KNN fn, tp: 33, 164
  61. KNN f1 score: 0.422
  62. KNN cohens kappa score: 0.397
  63. ------ Step 1/5: Slice 3/5 -------
  64. -> Reset the GAN
  65. -> Train generator for synthetic samples
  66. -> create 26255 synthetic samples
  67. -> test with GAN.predict
  68. GAN tn, fp: 5952, 808
  69. GAN fn, tp: 28, 169
  70. GAN f1 score: 0.288
  71. GAN cohens kappa score: 0.253
  72. -> test with 'LR'
  73. LR tn, fp: 6385, 375
  74. LR fn, tp: 15, 182
  75. LR f1 score: 0.483
  76. LR cohens kappa score: 0.460
  77. LR average precision score: 0.838
  78. -> test with 'GB'
  79. GB tn, fp: 6353, 407
  80. GB fn, tp: 87, 110
  81. GB f1 score: 0.308
  82. GB cohens kappa score: 0.279
  83. -> test with 'KNN'
  84. KNN tn, fp: 6217, 543
  85. KNN fn, tp: 23, 174
  86. KNN f1 score: 0.381
  87. KNN cohens kappa score: 0.352
  88. ------ Step 1/5: Slice 4/5 -------
  89. -> Reset the GAN
  90. -> Train generator for synthetic samples
  91. -> create 26255 synthetic samples
  92. -> test with GAN.predict
  93. GAN tn, fp: 5778, 982
  94. GAN fn, tp: 43, 154
  95. GAN f1 score: 0.231
  96. GAN cohens kappa score: 0.192
  97. -> test with 'LR'
  98. LR tn, fp: 6370, 390
  99. LR fn, tp: 17, 180
  100. LR f1 score: 0.469
  101. LR cohens kappa score: 0.446
  102. LR average precision score: 0.754
  103. -> test with 'GB'
  104. GB tn, fp: 6352, 408
  105. GB fn, tp: 90, 107
  106. GB f1 score: 0.301
  107. GB cohens kappa score: 0.271
  108. -> test with 'KNN'
  109. KNN tn, fp: 6261, 499
  110. KNN fn, tp: 27, 170
  111. KNN f1 score: 0.393
  112. KNN cohens kappa score: 0.365
  113. ------ Step 1/5: Slice 5/5 -------
  114. -> Reset the GAN
  115. -> Train generator for synthetic samples
  116. -> create 26252 synthetic samples
  117. -> test with GAN.predict
  118. GAN tn, fp: 6428, 331
  119. GAN fn, tp: 42, 151
  120. GAN f1 score: 0.447
  121. GAN cohens kappa score: 0.425
  122. -> test with 'LR'
  123. LR tn, fp: 6397, 362
  124. LR fn, tp: 32, 161
  125. LR f1 score: 0.450
  126. LR cohens kappa score: 0.426
  127. LR average precision score: 0.741
  128. -> test with 'GB'
  129. GB tn, fp: 6376, 383
  130. GB fn, tp: 93, 100
  131. GB f1 score: 0.296
  132. GB cohens kappa score: 0.267
  133. -> test with 'KNN'
  134. KNN tn, fp: 6246, 513
  135. KNN fn, tp: 30, 163
  136. KNN f1 score: 0.375
  137. KNN cohens kappa score: 0.347
  138. ====== Step 2/5 =======
  139. -> Shuffling data
  140. -> Spliting data to slices
  141. ------ Step 2/5: Slice 1/5 -------
  142. -> Reset the GAN
  143. -> Train generator for synthetic samples
  144. -> create 26255 synthetic samples
  145. -> test with GAN.predict
  146. GAN tn, fp: 5571, 1189
  147. GAN fn, tp: 35, 162
  148. GAN f1 score: 0.209
  149. GAN cohens kappa score: 0.168
  150. -> test with 'LR'
  151. LR tn, fp: 6377, 383
  152. LR fn, tp: 23, 174
  153. LR f1 score: 0.462
  154. LR cohens kappa score: 0.438
  155. LR average precision score: 0.794
  156. -> test with 'GB'
  157. GB tn, fp: 6353, 407
  158. GB fn, tp: 92, 105
  159. GB f1 score: 0.296
  160. GB cohens kappa score: 0.266
  161. -> test with 'KNN'
  162. KNN tn, fp: 6192, 568
  163. KNN fn, tp: 28, 169
  164. KNN f1 score: 0.362
  165. KNN cohens kappa score: 0.332
  166. ------ Step 2/5: Slice 2/5 -------
  167. -> Reset the GAN
  168. -> Train generator for synthetic samples
  169. -> create 26255 synthetic samples
  170. -> test with GAN.predict
  171. GAN tn, fp: 6194, 566
  172. GAN fn, tp: 35, 162
  173. GAN f1 score: 0.350
  174. GAN cohens kappa score: 0.320
  175. -> test with 'LR'
  176. LR tn, fp: 6391, 369
  177. LR fn, tp: 21, 176
  178. LR f1 score: 0.474
  179. LR cohens kappa score: 0.452
  180. LR average precision score: 0.796
  181. -> test with 'GB'
  182. GB tn, fp: 6383, 377
  183. GB fn, tp: 92, 105
  184. GB f1 score: 0.309
  185. GB cohens kappa score: 0.280
  186. -> test with 'KNN'
  187. KNN tn, fp: 6231, 529
  188. KNN fn, tp: 27, 170
  189. KNN f1 score: 0.379
  190. KNN cohens kappa score: 0.351
  191. ------ Step 2/5: Slice 3/5 -------
  192. -> Reset the GAN
  193. -> Train generator for synthetic samples
  194. -> create 26255 synthetic samples
  195. -> test with GAN.predict
  196. GAN tn, fp: 6185, 575
  197. GAN fn, tp: 36, 161
  198. GAN f1 score: 0.345
  199. GAN cohens kappa score: 0.314
  200. -> test with 'LR'
  201. LR tn, fp: 6399, 361
  202. LR fn, tp: 28, 169
  203. LR f1 score: 0.465
  204. LR cohens kappa score: 0.442
  205. LR average precision score: 0.758
  206. -> test with 'GB'
  207. GB tn, fp: 6325, 435
  208. GB fn, tp: 94, 103
  209. GB f1 score: 0.280
  210. GB cohens kappa score: 0.249
  211. -> test with 'KNN'
  212. KNN tn, fp: 6243, 517
  213. KNN fn, tp: 27, 170
  214. KNN f1 score: 0.385
  215. KNN cohens kappa score: 0.356
  216. ------ Step 2/5: Slice 4/5 -------
  217. -> Reset the GAN
  218. -> Train generator for synthetic samples
  219. -> create 26255 synthetic samples
  220. -> test with GAN.predict
  221. GAN tn, fp: 6011, 749
  222. GAN fn, tp: 34, 163
  223. GAN f1 score: 0.294
  224. GAN cohens kappa score: 0.259
  225. -> test with 'LR'
  226. LR tn, fp: 6329, 431
  227. LR fn, tp: 20, 177
  228. LR f1 score: 0.440
  229. LR cohens kappa score: 0.415
  230. LR average precision score: 0.755
  231. -> test with 'GB'
  232. GB tn, fp: 6441, 319
  233. GB fn, tp: 93, 104
  234. GB f1 score: 0.335
  235. GB cohens kappa score: 0.309
  236. -> test with 'KNN'
  237. KNN tn, fp: 6339, 421
  238. KNN fn, tp: 19, 178
  239. KNN f1 score: 0.447
  240. KNN cohens kappa score: 0.423
  241. ------ Step 2/5: Slice 5/5 -------
  242. -> Reset the GAN
  243. -> Train generator for synthetic samples
  244. -> create 26252 synthetic samples
  245. -> test with GAN.predict
  246. GAN tn, fp: 5813, 946
  247. GAN fn, tp: 34, 159
  248. GAN f1 score: 0.245
  249. GAN cohens kappa score: 0.208
  250. -> test with 'LR'
  251. LR tn, fp: 6372, 387
  252. LR fn, tp: 19, 174
  253. LR f1 score: 0.462
  254. LR cohens kappa score: 0.438
  255. LR average precision score: 0.800
  256. -> test with 'GB'
  257. GB tn, fp: 6355, 404
  258. GB fn, tp: 105, 88
  259. GB f1 score: 0.257
  260. GB cohens kappa score: 0.226
  261. -> test with 'KNN'
  262. KNN tn, fp: 6287, 472
  263. KNN fn, tp: 31, 162
  264. KNN f1 score: 0.392
  265. KNN cohens kappa score: 0.365
  266. ====== Step 3/5 =======
  267. -> Shuffling data
  268. -> Spliting data to slices
  269. ------ Step 3/5: Slice 1/5 -------
  270. -> Reset the GAN
  271. -> Train generator for synthetic samples
  272. -> create 26255 synthetic samples
  273. -> test with GAN.predict
  274. GAN tn, fp: 6043, 717
  275. GAN fn, tp: 40, 157
  276. GAN f1 score: 0.293
  277. GAN cohens kappa score: 0.259
  278. -> test with 'LR'
  279. LR tn, fp: 6359, 401
  280. LR fn, tp: 30, 167
  281. LR f1 score: 0.437
  282. LR cohens kappa score: 0.412
  283. LR average precision score: 0.733
  284. -> test with 'GB'
  285. GB tn, fp: 6366, 394
  286. GB fn, tp: 92, 105
  287. GB f1 score: 0.302
  288. GB cohens kappa score: 0.272
  289. -> test with 'KNN'
  290. KNN tn, fp: 6341, 419
  291. KNN fn, tp: 29, 168
  292. KNN f1 score: 0.429
  293. KNN cohens kappa score: 0.403
  294. ------ Step 3/5: Slice 2/5 -------
  295. -> Reset the GAN
  296. -> Train generator for synthetic samples
  297. -> create 26255 synthetic samples
  298. -> test with GAN.predict
  299. GAN tn, fp: 6180, 580
  300. GAN fn, tp: 35, 162
  301. GAN f1 score: 0.345
  302. GAN cohens kappa score: 0.314
  303. -> test with 'LR'
  304. LR tn, fp: 6410, 350
  305. LR fn, tp: 18, 179
  306. LR f1 score: 0.493
  307. LR cohens kappa score: 0.471
  308. LR average precision score: 0.799
  309. -> test with 'GB'
  310. GB tn, fp: 6344, 416
  311. GB fn, tp: 93, 104
  312. GB f1 score: 0.290
  313. GB cohens kappa score: 0.260
  314. -> test with 'KNN'
  315. KNN tn, fp: 6233, 527
  316. KNN fn, tp: 24, 173
  317. KNN f1 score: 0.386
  318. KNN cohens kappa score: 0.357
  319. ------ Step 3/5: Slice 3/5 -------
  320. -> Reset the GAN
  321. -> Train generator for synthetic samples
  322. -> create 26255 synthetic samples
  323. -> test with GAN.predict
  324. GAN tn, fp: 6239, 521
  325. GAN fn, tp: 49, 148
  326. GAN f1 score: 0.342
  327. GAN cohens kappa score: 0.312
  328. -> test with 'LR'
  329. LR tn, fp: 6399, 361
  330. LR fn, tp: 32, 165
  331. LR f1 score: 0.456
  332. LR cohens kappa score: 0.433
  333. LR average precision score: 0.713
  334. -> test with 'GB'
  335. GB tn, fp: 6401, 359
  336. GB fn, tp: 100, 97
  337. GB f1 score: 0.297
  338. GB cohens kappa score: 0.268
  339. -> test with 'KNN'
  340. KNN tn, fp: 6297, 463
  341. KNN fn, tp: 41, 156
  342. KNN f1 score: 0.382
  343. KNN cohens kappa score: 0.355
  344. ------ Step 3/5: Slice 4/5 -------
  345. -> Reset the GAN
  346. -> Train generator for synthetic samples
  347. -> create 26255 synthetic samples
  348. -> test with GAN.predict
  349. GAN tn, fp: 6238, 522
  350. GAN fn, tp: 29, 168
  351. GAN f1 score: 0.379
  352. GAN cohens kappa score: 0.350
  353. -> test with 'LR'
  354. LR tn, fp: 6359, 401
  355. LR fn, tp: 17, 180
  356. LR f1 score: 0.463
  357. LR cohens kappa score: 0.439
  358. LR average precision score: 0.811
  359. -> test with 'GB'
  360. GB tn, fp: 6320, 440
  361. GB fn, tp: 88, 109
  362. GB f1 score: 0.292
  363. GB cohens kappa score: 0.261
  364. -> test with 'KNN'
  365. KNN tn, fp: 6258, 502
  366. KNN fn, tp: 21, 176
  367. KNN f1 score: 0.402
  368. KNN cohens kappa score: 0.375
  369. ------ Step 3/5: Slice 5/5 -------
  370. -> Reset the GAN
  371. -> Train generator for synthetic samples
  372. -> create 26252 synthetic samples
  373. -> test with GAN.predict
  374. GAN tn, fp: 5751, 1008
  375. GAN fn, tp: 37, 156
  376. GAN f1 score: 0.230
  377. GAN cohens kappa score: 0.191
  378. -> test with 'LR'
  379. LR tn, fp: 6374, 385
  380. LR fn, tp: 16, 177
  381. LR f1 score: 0.469
  382. LR cohens kappa score: 0.446
  383. LR average precision score: 0.775
  384. -> test with 'GB'
  385. GB tn, fp: 6393, 366
  386. GB fn, tp: 95, 98
  387. GB f1 score: 0.298
  388. GB cohens kappa score: 0.270
  389. -> test with 'KNN'
  390. KNN tn, fp: 6241, 518
  391. KNN fn, tp: 16, 177
  392. KNN f1 score: 0.399
  393. KNN cohens kappa score: 0.371
  394. ====== Step 4/5 =======
  395. -> Shuffling data
  396. -> Spliting data to slices
  397. ------ Step 4/5: Slice 1/5 -------
  398. -> Reset the GAN
  399. -> Train generator for synthetic samples
  400. -> create 26255 synthetic samples
  401. -> test with GAN.predict
  402. GAN tn, fp: 5798, 962
  403. GAN fn, tp: 39, 158
  404. GAN f1 score: 0.240
  405. GAN cohens kappa score: 0.201
  406. -> test with 'LR'
  407. LR tn, fp: 6397, 363
  408. LR fn, tp: 27, 170
  409. LR f1 score: 0.466
  410. LR cohens kappa score: 0.443
  411. LR average precision score: 0.742
  412. -> test with 'GB'
  413. GB tn, fp: 6389, 371
  414. GB fn, tp: 100, 97
  415. GB f1 score: 0.292
  416. GB cohens kappa score: 0.262
  417. -> test with 'KNN'
  418. KNN tn, fp: 6277, 483
  419. KNN fn, tp: 37, 160
  420. KNN f1 score: 0.381
  421. KNN cohens kappa score: 0.353
  422. ------ Step 4/5: Slice 2/5 -------
  423. -> Reset the GAN
  424. -> Train generator for synthetic samples
  425. -> create 26255 synthetic samples
  426. -> test with GAN.predict
  427. GAN tn, fp: 6150, 610
  428. GAN fn, tp: 42, 155
  429. GAN f1 score: 0.322
  430. GAN cohens kappa score: 0.290
  431. -> test with 'LR'
  432. LR tn, fp: 6353, 407
  433. LR fn, tp: 22, 175
  434. LR f1 score: 0.449
  435. LR cohens kappa score: 0.425
  436. LR average precision score: 0.748
  437. -> test with 'GB'
  438. GB tn, fp: 6342, 418
  439. GB fn, tp: 96, 101
  440. GB f1 score: 0.282
  441. GB cohens kappa score: 0.251
  442. -> test with 'KNN'
  443. KNN tn, fp: 6235, 525
  444. KNN fn, tp: 26, 171
  445. KNN f1 score: 0.383
  446. KNN cohens kappa score: 0.354
  447. ------ Step 4/5: Slice 3/5 -------
  448. -> Reset the GAN
  449. -> Train generator for synthetic samples
  450. -> create 26255 synthetic samples
  451. -> test with GAN.predict
  452. GAN tn, fp: 5932, 828
  453. GAN fn, tp: 26, 171
  454. GAN f1 score: 0.286
  455. GAN cohens kappa score: 0.250
  456. -> test with 'LR'
  457. LR tn, fp: 6378, 382
  458. LR fn, tp: 17, 180
  459. LR f1 score: 0.474
  460. LR cohens kappa score: 0.451
  461. LR average precision score: 0.808
  462. -> test with 'GB'
  463. GB tn, fp: 6430, 330
  464. GB fn, tp: 79, 118
  465. GB f1 score: 0.366
  466. GB cohens kappa score: 0.340
  467. -> test with 'KNN'
  468. KNN tn, fp: 6331, 429
  469. KNN fn, tp: 19, 178
  470. KNN f1 score: 0.443
  471. KNN cohens kappa score: 0.418
  472. ------ Step 4/5: Slice 4/5 -------
  473. -> Reset the GAN
  474. -> Train generator for synthetic samples
  475. -> create 26255 synthetic samples
  476. -> test with GAN.predict
  477. GAN tn, fp: 6109, 651
  478. GAN fn, tp: 45, 152
  479. GAN f1 score: 0.304
  480. GAN cohens kappa score: 0.271
  481. -> test with 'LR'
  482. LR tn, fp: 6377, 383
  483. LR fn, tp: 21, 176
  484. LR f1 score: 0.466
  485. LR cohens kappa score: 0.442
  486. LR average precision score: 0.752
  487. -> test with 'GB'
  488. GB tn, fp: 6322, 438
  489. GB fn, tp: 88, 109
  490. GB f1 score: 0.293
  491. GB cohens kappa score: 0.262
  492. -> test with 'KNN'
  493. KNN tn, fp: 6238, 522
  494. KNN fn, tp: 29, 168
  495. KNN f1 score: 0.379
  496. KNN cohens kappa score: 0.350
  497. ------ Step 4/5: Slice 5/5 -------
  498. -> Reset the GAN
  499. -> Train generator for synthetic samples
  500. -> create 26252 synthetic samples
  501. -> test with GAN.predict
  502. GAN tn, fp: 6057, 702
  503. GAN fn, tp: 28, 165
  504. GAN f1 score: 0.311
  505. GAN cohens kappa score: 0.279
  506. -> test with 'LR'
  507. LR tn, fp: 6357, 402
  508. LR fn, tp: 20, 173
  509. LR f1 score: 0.451
  510. LR cohens kappa score: 0.427
  511. LR average precision score: 0.792
  512. -> test with 'GB'
  513. GB tn, fp: 6349, 410
  514. GB fn, tp: 91, 102
  515. GB f1 score: 0.289
  516. GB cohens kappa score: 0.260
  517. -> test with 'KNN'
  518. KNN tn, fp: 6232, 527
  519. KNN fn, tp: 21, 172
  520. KNN f1 score: 0.386
  521. KNN cohens kappa score: 0.358
  522. ====== Step 5/5 =======
  523. -> Shuffling data
  524. -> Spliting data to slices
  525. ------ Step 5/5: Slice 1/5 -------
  526. -> Reset the GAN
  527. -> Train generator for synthetic samples
  528. -> create 26255 synthetic samples
  529. -> test with GAN.predict
  530. GAN tn, fp: 5930, 830
  531. GAN fn, tp: 33, 164
  532. GAN f1 score: 0.275
  533. GAN cohens kappa score: 0.239
  534. -> test with 'LR'
  535. LR tn, fp: 6412, 348
  536. LR fn, tp: 22, 175
  537. LR f1 score: 0.486
  538. LR cohens kappa score: 0.464
  539. LR average precision score: 0.766
  540. -> test with 'GB'
  541. GB tn, fp: 6380, 380
  542. GB fn, tp: 85, 112
  543. GB f1 score: 0.325
  544. GB cohens kappa score: 0.297
  545. -> test with 'KNN'
  546. KNN tn, fp: 6303, 457
  547. KNN fn, tp: 23, 174
  548. KNN f1 score: 0.420
  549. KNN cohens kappa score: 0.394
  550. ------ Step 5/5: Slice 2/5 -------
  551. -> Reset the GAN
  552. -> Train generator for synthetic samples
  553. -> create 26255 synthetic samples
  554. -> test with GAN.predict
  555. GAN tn, fp: 6249, 511
  556. GAN fn, tp: 51, 146
  557. GAN f1 score: 0.342
  558. GAN cohens kappa score: 0.312
  559. -> test with 'LR'
  560. LR tn, fp: 6406, 354
  561. LR fn, tp: 26, 171
  562. LR f1 score: 0.474
  563. LR cohens kappa score: 0.451
  564. LR average precision score: 0.750
  565. -> test with 'GB'
  566. GB tn, fp: 6351, 409
  567. GB fn, tp: 100, 97
  568. GB f1 score: 0.276
  569. GB cohens kappa score: 0.245
  570. -> test with 'KNN'
  571. KNN tn, fp: 6222, 538
  572. KNN fn, tp: 31, 166
  573. KNN f1 score: 0.368
  574. KNN cohens kappa score: 0.339
  575. ------ Step 5/5: Slice 3/5 -------
  576. -> Reset the GAN
  577. -> Train generator for synthetic samples
  578. -> create 26255 synthetic samples
  579. -> test with GAN.predict
  580. GAN tn, fp: 6133, 627
  581. GAN fn, tp: 35, 162
  582. GAN f1 score: 0.329
  583. GAN cohens kappa score: 0.297
  584. -> test with 'LR'
  585. LR tn, fp: 6309, 451
  586. LR fn, tp: 25, 172
  587. LR f1 score: 0.420
  588. LR cohens kappa score: 0.393
  589. LR average precision score: 0.745
  590. -> test with 'GB'
  591. GB tn, fp: 6328, 432
  592. GB fn, tp: 80, 117
  593. GB f1 score: 0.314
  594. GB cohens kappa score: 0.284
  595. -> test with 'KNN'
  596. KNN tn, fp: 6281, 479
  597. KNN fn, tp: 21, 176
  598. KNN f1 score: 0.413
  599. KNN cohens kappa score: 0.386
  600. ------ Step 5/5: Slice 4/5 -------
  601. -> Reset the GAN
  602. -> Train generator for synthetic samples
  603. -> create 26255 synthetic samples
  604. -> test with GAN.predict
  605. GAN tn, fp: 5751, 1009
  606. GAN fn, tp: 33, 164
  607. GAN f1 score: 0.239
  608. GAN cohens kappa score: 0.201
  609. -> test with 'LR'
  610. LR tn, fp: 6376, 384
  611. LR fn, tp: 17, 180
  612. LR f1 score: 0.473
  613. LR cohens kappa score: 0.450
  614. LR average precision score: 0.824
  615. -> test with 'GB'
  616. GB tn, fp: 6360, 400
  617. GB fn, tp: 96, 101
  618. GB f1 score: 0.289
  619. GB cohens kappa score: 0.259
  620. -> test with 'KNN'
  621. KNN tn, fp: 6275, 485
  622. KNN fn, tp: 28, 169
  623. KNN f1 score: 0.397
  624. KNN cohens kappa score: 0.370
  625. ------ Step 5/5: Slice 5/5 -------
  626. -> Reset the GAN
  627. -> Train generator for synthetic samples
  628. -> create 26252 synthetic samples
  629. -> test with GAN.predict
  630. GAN tn, fp: 5570, 1189
  631. GAN fn, tp: 34, 159
  632. GAN f1 score: 0.206
  633. GAN cohens kappa score: 0.166
  634. -> test with 'LR'
  635. LR tn, fp: 6388, 371
  636. LR fn, tp: 24, 169
  637. LR f1 score: 0.461
  638. LR cohens kappa score: 0.438
  639. LR average precision score: 0.754
  640. -> test with 'GB'
  641. GB tn, fp: 6378, 381
  642. GB fn, tp: 104, 89
  643. GB f1 score: 0.268
  644. GB cohens kappa score: 0.239
  645. -> test with 'KNN'
  646. KNN tn, fp: 6202, 557
  647. KNN fn, tp: 31, 162
  648. KNN f1 score: 0.355
  649. KNN cohens kappa score: 0.326
  650. ### Exercise is done.
  651. -----[ LR ]-----
  652. maximum:
  653. LR tn, fp: 6412, 451
  654. LR fn, tp: 32, 182
  655. LR f1 score: 0.493
  656. LR cohens kappa score: 0.471
  657. LR average precision score: 0.838
  658. average:
  659. LR tn, fp: 6377.12, 382.68
  660. LR fn, tp: 22.24, 173.96
  661. LR f1 score: 0.463
  662. LR cohens kappa score: 0.439
  663. LR average precision score: 0.772
  664. minimum:
  665. LR tn, fp: 6309, 348
  666. LR fn, tp: 15, 161
  667. LR f1 score: 0.420
  668. LR cohens kappa score: 0.393
  669. LR average precision score: 0.713
  670. -----[ GB ]-----
  671. maximum:
  672. GB tn, fp: 6441, 462
  673. GB fn, tp: 105, 118
  674. GB f1 score: 0.366
  675. GB cohens kappa score: 0.340
  676. average:
  677. GB tn, fp: 6363.56, 396.24
  678. GB fn, tp: 92.68, 103.52
  679. GB f1 score: 0.298
  680. GB cohens kappa score: 0.268
  681. minimum:
  682. GB tn, fp: 6298, 319
  683. GB fn, tp: 79, 88
  684. GB f1 score: 0.257
  685. GB cohens kappa score: 0.226
  686. -----[ KNN ]-----
  687. maximum:
  688. KNN tn, fp: 6344, 568
  689. KNN fn, tp: 41, 182
  690. KNN f1 score: 0.447
  691. KNN cohens kappa score: 0.423
  692. average:
  693. KNN tn, fp: 6263.6, 496.2
  694. KNN fn, tp: 26.28, 169.92
  695. KNN f1 score: 0.395
  696. KNN cohens kappa score: 0.367
  697. minimum:
  698. KNN tn, fp: 6192, 416
  699. KNN fn, tp: 15, 156
  700. KNN f1 score: 0.355
  701. KNN cohens kappa score: 0.326
  702. -----[ GAN ]-----
  703. maximum:
  704. GAN tn, fp: 6428, 1189
  705. GAN fn, tp: 51, 171
  706. GAN f1 score: 0.447
  707. GAN cohens kappa score: 0.425
  708. average:
  709. GAN tn, fp: 6004.08, 755.72
  710. GAN fn, tp: 36.64, 159.56
  711. GAN f1 score: 0.298
  712. GAN cohens kappa score: 0.264
  713. minimum:
  714. GAN tn, fp: 5570, 331
  715. GAN fn, tp: 26, 146
  716. GAN f1 score: 0.206
  717. GAN cohens kappa score: 0.166