cdec cfg './cdec.ini' Loading the LM will be faster if you build a binary file. Reading ./nc-wmt11.en.srilm.gz ----5---10---15---20---25---30---35---40---45---50---55---60---65---70---75---80---85---90---95--100 **************************************************************************************************** Example feature: Shape_S00000_T00000 Seeding random number sequence to 1677737427 dtrain Parameters: k 100 N 4 T 2 scorer 'fixed_stupid_bleu' sample from 'kbest' filter 'uniq' learning rate 1 gamma 0 loss margin 0 faster perceptron 1 pairs 'XYX' hi lo 0.1 pair threshold 0 select weights 'VOID' l1 reg 0 'none' max pairs 4294967295 cdec cfg './cdec.ini' input './nc-wmt11.de.gz' refs './nc-wmt11.en.gz' output '-' stop_after 10 (a dot represents 10 inputs) Iteration #1 of 2. . 10 Stopping after 10 input sentences. WEIGHTS Glue = -1155 WordPenalty = -329.63 LanguageModel = +3903 LanguageModel_OOV = -1630 PhraseModel_0 = +2746.9 PhraseModel_1 = +1200.3 PhraseModel_2 = -1004.1 PhraseModel_3 = +2223.1 PhraseModel_4 = +551.58 PhraseModel_5 = +217 PhraseModel_6 = +1816 PassThrough = -1603 --- 1best avg score: 0.19344 (+0.19344) 1best avg model score: 81387 (+81387) avg # pairs: 616.3 (meaningless) avg # rank err: 616.3 avg # margin viol: 0 non0 feature count: 673 avg list sz: 90.9 avg f count: 104.26 (time 0.38 min, 2.3 s/S) Iteration #2 of 2. . 10 WEIGHTS Glue = -994 WordPenalty = -778.69 LanguageModel = +2348.9 LanguageModel_OOV = -1967 PhraseModel_0 = -412.72 PhraseModel_1 = +1428.9 PhraseModel_2 = +1967.4 PhraseModel_3 = -944.99 PhraseModel_4 = -239.7 PhraseModel_5 = +708 PhraseModel_6 = +645 PassThrough = -1866 --- 1best avg score: 0.22395 (+0.03051) 1best avg model score: -31388 (-1.1278e+05) avg # pairs: 702.3 (meaningless) avg # rank err: 702.3 avg # margin viol: 0 non0 feature count: 955 avg list sz: 91.3 avg f count: 103.45 (time 0.32 min, 1.9 s/S) Writing weights file to '-' ... done --- Best iteration: 2 [SCORE 'fixed_stupid_bleu'=0.22395]. This took 0.7 min.