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Diffstat (limited to 'gi/pf/backward.cc')
-rw-r--r-- | gi/pf/backward.cc | 89 |
1 files changed, 89 insertions, 0 deletions
diff --git a/gi/pf/backward.cc b/gi/pf/backward.cc new file mode 100644 index 00000000..b92629fd --- /dev/null +++ b/gi/pf/backward.cc @@ -0,0 +1,89 @@ +#include "backward.h" + +#include <queue> +#include <utility> + +#include "array2d.h" +#include "reachability.h" +#include "base_distributions.h" + +using namespace std; + +BackwardEstimator::BackwardEstimator(const string& s2t, + const string& t2s) : m1(new Model1(s2t)), m1inv(new Model1(t2s)) {} + +BackwardEstimator::~BackwardEstimator() { + delete m1; m1 = NULL; + delete m1inv; m1inv = NULL; +} + +float BackwardEstimator::ComputeBackwardProb(const std::vector<WordID>& src, + const std::vector<WordID>& trg, + unsigned src_covered, + unsigned trg_covered, + double s2t_ratio) const { + if (src_covered == src.size() || trg_covered == trg.size()) { + assert(src_covered == src.size()); + assert(trg_covered == trg.size()); + return 0; + } + static const WordID kNULL = TD::Convert("<eps>"); + const prob_t uniform_alignment(1.0 / (src.size() - src_covered + 1)); + // TODO factor in expected length ratio + prob_t e; e.logeq(Md::log_poisson(trg.size() - trg_covered, (src.size() - src_covered) * s2t_ratio)); // p(trg len remaining | src len remaining) + for (unsigned j = trg_covered; j < trg.size(); ++j) { + prob_t p = (*m1)(kNULL, trg[j]) + prob_t(1e-12); + for (unsigned i = src_covered; i < src.size(); ++i) + p += (*m1)(src[i], trg[j]); + if (p.is_0()) { + cerr << "ERROR: p(" << TD::Convert(trg[j]) << " | " << TD::GetString(src) << ") = 0!\n"; + assert(!"failed"); + } + p *= uniform_alignment; + e *= p; + } + // TODO factor in expected length ratio + const prob_t inv_uniform(1.0 / (trg.size() - trg_covered + 1.0)); + prob_t inv; + inv.logeq(Md::log_poisson(src.size() - src_covered, (trg.size() - trg_covered) / s2t_ratio)); + for (unsigned i = src_covered; i < src.size(); ++i) { + prob_t p = (*m1inv)(kNULL, src[i]) + prob_t(1e-12); + for (unsigned j = trg_covered; j < trg.size(); ++j) + p += (*m1inv)(trg[j], src[i]); + if (p.is_0()) { + cerr << "ERROR: p_inv(" << TD::Convert(src[i]) << " | " << TD::GetString(trg) << ") = 0!\n"; + assert(!"failed"); + } + p *= inv_uniform; + inv *= p; + } + return (log(e) + log(inv)) / 2; +} + +void BackwardEstimator::InitializeGrid(const vector<WordID>& src, + const vector<WordID>& trg, + const Reachability& r, + double s2t_ratio, + float* grid) const { + queue<pair<int,int> > q; + q.push(make_pair(0,0)); + Array2D<bool> done(src.size()+1, trg.size()+1, false); + //cerr << TD::GetString(src) << " ||| " << TD::GetString(trg) << endl; + while(!q.empty()) { + const pair<int,int> n = q.front(); + q.pop(); + if (done(n.first,n.second)) continue; + done(n.first,n.second) = true; + + float lp = ComputeBackwardProb(src, trg, n.first, n.second, s2t_ratio); + if (n.first == 0 && n.second == 0) grid[0] = lp; + //cerr << " " << n.first << "," << n.second << "\t" << lp << endl; + + if (n.first == src.size() || n.second == trg.size()) continue; + const vector<pair<short,short> >& edges = r.valid_deltas[n.first][n.second]; + for (int i = 0; i < edges.size(); ++i) + q.push(make_pair(n.first + edges[i].first, n.second + edges[i].second)); + } + //static int cc = 0; ++cc; if (cc == 80) exit(1); +} + |