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#include "score.h"
namespace dtrain
{
/*
* bleu
*
* as in "BLEU: a Method for Automatic Evaluation
* of Machine Translation"
* (Papineni et al. '02)
*
* NOTE: 0 if one n in {1..N} has 0 count
*/
score_t
BleuScorer::Bleu(NgramCounts& counts, const unsigned hyp_len, const unsigned ref_len)
{
if (hyp_len == 0 || ref_len == 0) return 0;
unsigned M = N_;
if (ref_len < N_) M = ref_len;
score_t sum = 0;
for (unsigned i = 0; i < M; i++) {
if (counts.clipped[i] == 0 || counts.sum[i] == 0) return 0;
sum += w_[i] * log((score_t)counts.clipped[i]/counts.sum[i]);
}
return brevity_penaly(hyp_len, ref_len) * exp(sum);
}
score_t
BleuScorer::Score(vector<WordID>& hyp, vector<WordID>& ref)
{
unsigned hyp_len = hyp.size(), ref_len = ref.size();
if (hyp_len == 0 || ref_len == 0) return 0;
NgramCounts counts = make_ngram_counts(hyp, ref, N_);
return Bleu(counts, hyp_len, ref_len);
}
/*
* 'stupid' bleu
*
* as in "ORANGE: a Method for Evaluating
* Automatic Evaluation Metrics
* for Machine Translation"
* (Lin & Och '04)
*
* NOTE: 0 iff no 1gram match
*/
score_t
StupidBleuScorer::Score(vector<WordID>& hyp, vector<WordID>& ref)
{
unsigned hyp_len = hyp.size(), ref_len = ref.size();
if (hyp_len == 0 || ref_len == 0) return 0;
NgramCounts counts = make_ngram_counts(hyp, ref, N_);
unsigned M = N_;
if (ref_len < N_) M = ref_len;
score_t sum = 0, add = 0;
for (unsigned i = 0; i < M; i++) {
if (i == 1) add = 1;
sum += w_[i] * log(((score_t)counts.clipped[i] + add)/((counts.sum[i] + add)));
}
return brevity_penaly(hyp_len, ref_len) * exp(sum);
}
/*
* smooth bleu
*
* as in "An End-to-End Discriminative Approach
* to Machine Translation"
* (Liang et al. '06)
*
* NOTE: max is 0.9375
*/
score_t
SmoothBleuScorer::Score(vector<WordID>& hyp, vector<WordID>& ref)
{
unsigned hyp_len = hyp.size(), ref_len = ref.size();
if (hyp_len == 0 || ref_len == 0) return 0;
NgramCounts counts = make_ngram_counts(hyp, ref, N_);
score_t sum = 0;
unsigned j = 1;
for (unsigned i = 0; i < N_; i++) {
if (counts.clipped[i] == 0 || counts.sum[i] == 0) continue;
sum += exp((w_[i] * log((score_t)counts.clipped[i]/counts.sum[i])))/pow(2, N_-j+1);
j++;
}
return brevity_penaly(hyp_len, ref_len) * sum;
}
// FIXME
/*
* approx. bleu
*
* as in "Online Large-Margin Training of Syntactic
* and Structural Translation Features"
* (Chiang et al. '08)
*/
/*void
ApproxBleuScorer::Prep(NgramCounts& counts, const unsigned hyp_len, const unsigned ref_len)
{
glob_onebest_counts += counts;
glob_hyp_len += hyp_len;
glob_ref_len += ref_len;
}
void
ApproxBleuScorer::Reset()
{
glob_onebest_counts.Zero();
glob_hyp_len = 0;
glob_ref_len = 0;
}
score_t
ApproxBleuScorer::Score(ScoredHyp& hyp, vector<WordID>& ref_ids, unsigned id)
{
NgramCounts counts = make_ngram_counts(hyp.w, ref_ids, N_);
if (id == 0) reset();
unsigned hyp_len = 0, ref_len = 0;
if (hyp.rank == 0) { // 'context of 1best translations'
scorer->prep(counts, hyp.w.size(), ref_ids.size());
counts.reset();
} else {
hyp_len = hyp.w.size();
ref_len = ref_ids.size();
}
return 0.9 * BleuScorer::Bleu(glob_onebest_counts + counts,
glob_hyp_len + hyp_len, glob_ref_len + ref_len);
}*/
} // namespace
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