TODO MULTIPARTITE ranking (108010, 1 vs all, cluster modelscore;score) what about RESCORING? REMEMBER kbest (merge) weights? SELECT iteration with highest (real) BLEU? GENERATED data? (multi-task, ability to learn, perfect translation in nbest, at first all modelscore 1) CACHING (ngrams for scoring) hadoop PIPES imlementation SHARED LM (kenlm actually does this!)? ITERATION variants once -> average shuffle resulting weights weights AVERAGING in reducer (global Ngram counts) BATCH implementation (no update after each Kbest list) set REFERENCE for cdec (rescoring)? MORE THAN ONE reference for BLEU? kbest NICER (do not iterate twice)!? -> shared_ptr? DO NOT USE Decoder::Decode (input caching as WordID)!? sparse vector instead of vector for weights in Decoder(::SetWeights)? reactivate DTEST and tests non deterministic, high variance, RANDOM RESTARTS use separate TEST SET KNOWN BUGS, PROBLEMS doesn't select best iteration for weigts if size of candidate < N => 0 score cdec kbest vs 1best (no -k param), rescoring? => ok(?) no sparse vector in decoder => ok ? ok sh: error while loading shared libraries: libreadline.so.6: cannot open shared object file: Error 24 PhraseModel_* features (0..99 seem to be generated, why 99?) flex scanner jams on malicious input, we could skip that FIX approx BLEU fix merge ep data r\tr\tr\tr\tr