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author | philblunsom <philblunsom@ec762483-ff6d-05da-a07a-a48fb63a330f> | 2010-07-14 22:42:35 +0000 |
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committer | philblunsom <philblunsom@ec762483-ff6d-05da-a07a-a48fb63a330f> | 2010-07-14 22:42:35 +0000 |
commit | 8f97e6b03114761870f0c72f18f0928fac28d0f9 (patch) | |
tree | bcee285ff2ee1368f7408647a37ac6f9620c1ca7 /gi/pyp-topics/src/mpi-pyp.hh | |
parent | 047b6eae4e5224d55c43d0994f2691692517f28d (diff) |
starting an mpi version.
git-svn-id: https://ws10smt.googlecode.com/svn/trunk@253 ec762483-ff6d-05da-a07a-a48fb63a330f
Diffstat (limited to 'gi/pyp-topics/src/mpi-pyp.hh')
-rw-r--r-- | gi/pyp-topics/src/mpi-pyp.hh | 552 |
1 files changed, 552 insertions, 0 deletions
diff --git a/gi/pyp-topics/src/mpi-pyp.hh b/gi/pyp-topics/src/mpi-pyp.hh new file mode 100644 index 00000000..dc47244b --- /dev/null +++ b/gi/pyp-topics/src/mpi-pyp.hh @@ -0,0 +1,552 @@ +#ifndef _pyp_hh +#define _pyp_hh + +#include <math.h> +#include <map> +#include <tr1/unordered_map> +//#include <google/sparse_hash_map> + +#include <boost/random/uniform_real.hpp> +#include <boost/random/variate_generator.hpp> +#include <boost/random/mersenne_twister.hpp> + +#include "log_add.h" +#include "slice-sampler.h" +#include "mt19937ar.h" + +// +// Pitman-Yor process with customer and table tracking +// + +template <typename Dish, typename Hash=std::tr1::hash<Dish> > +class PYP : protected std::tr1::unordered_map<Dish, int, Hash> +//class PYP : protected google::sparse_hash_map<Dish, int, Hash> +{ +public: + using std::tr1::unordered_map<Dish,int>::const_iterator; + using std::tr1::unordered_map<Dish,int>::iterator; + using std::tr1::unordered_map<Dish,int>::begin; + using std::tr1::unordered_map<Dish,int>::end; +// using google::sparse_hash_map<Dish,int>::const_iterator; +// using google::sparse_hash_map<Dish,int>::iterator; +// using google::sparse_hash_map<Dish,int>::begin; +// using google::sparse_hash_map<Dish,int>::end; + + PYP(double a, double b, unsigned long seed = 0, Hash hash=Hash()); + + int increment(Dish d, double p0); + int decrement(Dish d); + + // lookup functions + int count(Dish d) const; + double prob(Dish dish, double p0) const; + double prob(Dish dish, double dcd, double dca, + double dtd, double dta, double p0) const; + double unnormalised_prob(Dish dish, double p0) const; + + int num_customers() const { return _total_customers; } + int num_types() const { return std::tr1::unordered_map<Dish,int>::size(); } + //int num_types() const { return google::sparse_hash_map<Dish,int>::size(); } + bool empty() const { return _total_customers == 0; } + + double log_prob(Dish dish, double log_p0) const; + // nb. d* are NOT logs + double log_prob(Dish dish, double dcd, double dca, + double dtd, double dta, double log_p0) const; + + int num_tables(Dish dish) const; + int num_tables() const; + + double a() const { return _a; } + void set_a(double a) { _a = a; } + + double b() const { return _b; } + void set_b(double b) { _b = b; } + + void clear(); + std::ostream& debug_info(std::ostream& os) const; + + double log_restaurant_prob() const; + double log_prior() const; + static double log_prior_a(double a, double beta_a, double beta_b); + static double log_prior_b(double b, double gamma_c, double gamma_s); + + void resample_prior(); + void resample_prior_a(); + void resample_prior_b(); + +private: + double _a, _b; // parameters of the Pitman-Yor distribution + double _a_beta_a, _a_beta_b; // parameters of Beta prior on a + double _b_gamma_s, _b_gamma_c; // parameters of Gamma prior on b + + struct TableCounter + { + TableCounter() : tables(0) {}; + int tables; + std::map<int, int> table_histogram; // num customers at table -> number tables + }; + typedef std::tr1::unordered_map<Dish, TableCounter, Hash> DishTableType; + //typedef google::sparse_hash_map<Dish, TableCounter, Hash> DishTableType; + DishTableType _dish_tables; + int _total_customers, _total_tables; + + typedef boost::mt19937 base_generator_type; + typedef boost::uniform_real<> uni_dist_type; + typedef boost::variate_generator<base_generator_type&, uni_dist_type> gen_type; + +// uni_dist_type uni_dist; +// base_generator_type rng; //this gets the seed +// gen_type rnd; //instantiate: rnd(rng, uni_dist) + //call: rnd() generates uniform on [0,1) + + // Function objects for calculating the parts of the log_prob for + // the parameters a and b + struct resample_a_type { + int n, m; double b, a_beta_a, a_beta_b; + const DishTableType& dish_tables; + resample_a_type(int n, int m, double b, double a_beta_a, + double a_beta_b, const DishTableType& dish_tables) + : n(n), m(m), b(b), a_beta_a(a_beta_a), a_beta_b(a_beta_b), dish_tables(dish_tables) {} + + double operator() (double proposed_a) const { + double log_prior = log_prior_a(proposed_a, a_beta_a, a_beta_b); + double log_prob = 0.0; + double lgamma1a = lgamma(1.0 - proposed_a); + for (typename DishTableType::const_iterator dish_it=dish_tables.begin(); dish_it != dish_tables.end(); ++dish_it) + for (std::map<int, int>::const_iterator table_it=dish_it->second.table_histogram.begin(); + table_it !=dish_it->second.table_histogram.end(); ++table_it) + log_prob += (table_it->second * (lgamma(table_it->first - proposed_a) - lgamma1a)); + + log_prob += (proposed_a == 0.0 ? (m-1.0)*log(b) + : ((m-1.0)*log(proposed_a) + lgamma((m-1.0) + b/proposed_a) - lgamma(b/proposed_a))); + assert(std::isfinite(log_prob)); + return log_prob + log_prior; + } + }; + + struct resample_b_type { + int n, m; double a, b_gamma_c, b_gamma_s; + resample_b_type(int n, int m, double a, double b_gamma_c, double b_gamma_s) + : n(n), m(m), a(a), b_gamma_c(b_gamma_c), b_gamma_s(b_gamma_s) {} + + double operator() (double proposed_b) const { + double log_prior = log_prior_b(proposed_b, b_gamma_c, b_gamma_s); + double log_prob = 0.0; + log_prob += (a == 0.0 ? (m-1.0)*log(proposed_b) + : ((m-1.0)*log(a) + lgamma((m-1.0) + proposed_b/a) - lgamma(proposed_b/a))); + log_prob += (lgamma(1.0+proposed_b) - lgamma(n+proposed_b)); + return log_prob + log_prior; + } + }; + + /* lbetadist() returns the log probability density of x under a Beta(alpha,beta) + * distribution. - copied from Mark Johnson's gammadist.c + */ + static long double lbetadist(long double x, long double alpha, long double beta); + + /* lgammadist() returns the log probability density of x under a Gamma(alpha,beta) + * distribution - copied from Mark Johnson's gammadist.c + */ + static long double lgammadist(long double x, long double alpha, long double beta); + +}; + +template <typename Dish, typename Hash> +PYP<Dish,Hash>::PYP(double a, double b, unsigned long seed, Hash) +: std::tr1::unordered_map<Dish, int, Hash>(10), _a(a), _b(b), +//: google::sparse_hash_map<Dish, int, Hash>(10), _a(a), _b(b), + _a_beta_a(1), _a_beta_b(1), _b_gamma_s(1), _b_gamma_c(1), + //_a_beta_a(1), _a_beta_b(1), _b_gamma_s(10), _b_gamma_c(0.1), + _total_customers(0), _total_tables(0)//, + //uni_dist(0,1), rng(seed == 0 ? (unsigned long)this : seed), rnd(rng, uni_dist) +{ +// std::cerr << "\t##PYP<Dish,Hash>::PYP(a=" << _a << ",b=" << _b << ")" << std::endl; + //set_deleted_key(-std::numeric_limits<Dish>::max()); +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::prob(Dish dish, double p0) const +{ + int c = count(dish), t = num_tables(dish); + double r = num_tables() * _a + _b; + //std::cerr << "\t\t\t\tPYP<Dish,Hash>::prob(" << dish << "," << p0 << ") c=" << c << " r=" << r << std::endl; + if (c > 0) + return (c - _a * t + r * p0) / (num_customers() + _b); + else + return r * p0 / (num_customers() + _b); +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::unnormalised_prob(Dish dish, double p0) const +{ + int c = count(dish), t = num_tables(dish); + double r = num_tables() * _a + _b; + if (c > 0) return (c - _a * t + r * p0); + else return r * p0; +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::prob(Dish dish, double dcd, double dca, + double dtd, double dta, double p0) +const +{ + int c = count(dish) + dcd, t = num_tables(dish) + dtd; + double r = (num_tables() + dta) * _a + _b; + if (c > 0) + return (c - _a * t + r * p0) / (num_customers() + dca + _b); + else + return r * p0 / (num_customers() + dca + _b); +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::log_prob(Dish dish, double log_p0) const +{ + using std::log; + int c = count(dish), t = num_tables(dish); + double r = log(num_tables() * _a + b); + if (c > 0) + return Log<double>::add(log(c - _a * t), r + log_p0) + - log(num_customers() + _b); + else + return r + log_p0 - log(num_customers() + b); +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::log_prob(Dish dish, double dcd, double dca, + double dtd, double dta, double log_p0) +const +{ + using std::log; + int c = count(dish) + dcd, t = num_tables(dish) + dtd; + double r = log((num_tables() + dta) * _a + b); + if (c > 0) + return Log<double>::add(log(c - _a * t), r + log_p0) + - log(num_customers() + dca + _b); + else + return r + log_p0 - log(num_customers() + dca + b); +} + +template <typename Dish, typename Hash> +int +PYP<Dish,Hash>::increment(Dish dish, double p0) { + int delta = 0; + TableCounter &tc = _dish_tables[dish]; + + // seated on a new or existing table? + int c = count(dish), t = num_tables(dish), T = num_tables(); + double pshare = (c > 0) ? (c - _a*t) : 0.0; + double pnew = (_b + _a*T) * p0; + assert (pshare >= 0.0); + //assert (pnew > 0.0); + + //if (rnd() < pnew / (pshare + pnew)) { + if (mt_genrand_res53() < pnew / (pshare + pnew)) { + // assign to a new table + tc.tables += 1; + tc.table_histogram[1] += 1; + _total_tables += 1; + delta = 1; + } + else { + // randomly assign to an existing table + // remove constant denominator from inner loop + //double r = rnd() * (c - _a*t); + double r = mt_genrand_res53() * (c - _a*t); + for (std::map<int,int>::iterator + hit = tc.table_histogram.begin(); + hit != tc.table_histogram.end(); ++hit) { + r -= ((hit->first - _a) * hit->second); + if (r <= 0) { + tc.table_histogram[hit->first+1] += 1; + hit->second -= 1; + if (hit->second == 0) + tc.table_histogram.erase(hit); + break; + } + } + if (r > 0) { + std::cerr << r << " " << c << " " << _a << " " << t << std::endl; + assert(false); + } + delta = 0; + } + + std::tr1::unordered_map<Dish,int,Hash>::operator[](dish) += 1; + //google::sparse_hash_map<Dish,int,Hash>::operator[](dish) += 1; + _total_customers += 1; + + return delta; +} + +template <typename Dish, typename Hash> +int +PYP<Dish,Hash>::count(Dish dish) const +{ + typename std::tr1::unordered_map<Dish, int>::const_iterator + //typename google::sparse_hash_map<Dish, int>::const_iterator + dcit = find(dish); + if (dcit != end()) + return dcit->second; + else + return 0; +} + +template <typename Dish, typename Hash> +int +PYP<Dish,Hash>::decrement(Dish dish) +{ + typename std::tr1::unordered_map<Dish, int>::iterator dcit = find(dish); + //typename google::sparse_hash_map<Dish, int>::iterator dcit = find(dish); + if (dcit == end()) { + std::cerr << dish << std::endl; + assert(false); + } + + int delta = 0; + + typename std::tr1::unordered_map<Dish, TableCounter>::iterator dtit = _dish_tables.find(dish); + //typename google::sparse_hash_map<Dish, TableCounter>::iterator dtit = _dish_tables.find(dish); + if (dtit == _dish_tables.end()) { + std::cerr << dish << std::endl; + assert(false); + } + TableCounter &tc = dtit->second; + + //std::cerr << "\tdecrement for " << dish << "\n"; + //std::cerr << "\tBEFORE histogram: " << tc.table_histogram << " "; + //std::cerr << "count: " << count(dish) << " "; + //std::cerr << "tables: " << tc.tables << "\n"; + + //double r = rnd() * count(dish); + double r = mt_genrand_res53() * count(dish); + for (std::map<int,int>::iterator hit = tc.table_histogram.begin(); + hit != tc.table_histogram.end(); ++hit) + { + //r -= (hit->first - _a) * hit->second; + r -= (hit->first) * hit->second; + if (r <= 0) + { + if (hit->first > 1) + tc.table_histogram[hit->first-1] += 1; + else + { + delta = -1; + tc.tables -= 1; + _total_tables -= 1; + } + + hit->second -= 1; + if (hit->second == 0) tc.table_histogram.erase(hit); + break; + } + } + if (r > 0) { + std::cerr << r << " " << count(dish) << " " << _a << " " << num_tables(dish) << std::endl; + assert(false); + } + + // remove the customer + dcit->second -= 1; + _total_customers -= 1; + assert(dcit->second >= 0); + if (dcit->second == 0) { + erase(dcit); + _dish_tables.erase(dtit); + //std::cerr << "\tAFTER histogram: Empty\n"; + } + else { + //std::cerr << "\tAFTER histogram: " << _dish_tables[dish].table_histogram << " "; + //std::cerr << "count: " << count(dish) << " "; + //std::cerr << "tables: " << _dish_tables[dish].tables << "\n"; + } + + return delta; +} + +template <typename Dish, typename Hash> +int +PYP<Dish,Hash>::num_tables(Dish dish) const +{ + typename std::tr1::unordered_map<Dish, TableCounter, Hash>::const_iterator + //typename google::sparse_hash_map<Dish, TableCounter, Hash>::const_iterator + dtit = _dish_tables.find(dish); + + //assert(dtit != _dish_tables.end()); + if (dtit == _dish_tables.end()) + return 0; + + return dtit->second.tables; +} + +template <typename Dish, typename Hash> +int +PYP<Dish,Hash>::num_tables() const +{ + return _total_tables; +} + +template <typename Dish, typename Hash> +std::ostream& +PYP<Dish,Hash>::debug_info(std::ostream& os) const +{ + int hists = 0, tables = 0; + for (typename std::tr1::unordered_map<Dish, TableCounter, Hash>::const_iterator + //for (typename google::sparse_hash_map<Dish, TableCounter, Hash>::const_iterator + dtit = _dish_tables.begin(); dtit != _dish_tables.end(); ++dtit) + { + hists += dtit->second.table_histogram.size(); + tables += dtit->second.tables; + + assert(dtit->second.tables > 0); + assert(!dtit->second.table_histogram.empty()); + + for (std::map<int,int>::const_iterator + hit = dtit->second.table_histogram.begin(); + hit != dtit->second.table_histogram.end(); ++hit) + assert(hit->second > 0); + } + + os << "restaurant has " + << _total_customers << " customers; " + << _total_tables << " tables; " + << tables << " tables'; " + << num_types() << " dishes; " + << _dish_tables.size() << " dishes'; and " + << hists << " histogram entries\n"; + + return os; +} + +template <typename Dish, typename Hash> +void +PYP<Dish,Hash>::clear() +{ + this->std::tr1::unordered_map<Dish,int,Hash>::clear(); + //this->google::sparse_hash_map<Dish,int,Hash>::clear(); + _dish_tables.clear(); + _total_tables = _total_customers = 0; +} + +// log_restaurant_prob returns the log probability of the PYP table configuration. +// Excludes Hierarchical P0 term which must be calculated separately. +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::log_restaurant_prob() const { + if (_total_customers < 1) + return (double)0.0; + + double log_prob = 0.0; + double lgamma1a = lgamma(1.0-_a); + + //std::cerr << "-------------------\n" << std::endl; + for (typename DishTableType::const_iterator dish_it=_dish_tables.begin(); + dish_it != _dish_tables.end(); ++dish_it) { + for (std::map<int, int>::const_iterator table_it=dish_it->second.table_histogram.begin(); + table_it !=dish_it->second.table_histogram.end(); ++table_it) { + log_prob += (table_it->second * (lgamma(table_it->first - _a) - lgamma1a)); + //std::cerr << "|" << dish_it->first->parent << " --> " << dish_it->first->rhs << " " << table_it->first << " " << table_it->second << " " << log_prob; + } + } + //std::cerr << std::endl; + + log_prob += (_a == (double)0.0 ? (_total_tables-1.0)*log(_b) : (_total_tables-1.0)*log(_a) + lgamma((_total_tables-1.0) + _b/_a) - lgamma(_b/_a)); + //std::cerr << "\t\t" << log_prob << std::endl; + log_prob += (lgamma(1.0 + _b) - lgamma(_total_customers + _b)); + + //std::cerr << _total_customers << " " << _total_tables << " " << log_prob << " " << log_prior() << std::endl; + //std::cerr << _a << " " << _b << std::endl; + if (!std::isfinite(log_prob)) { + assert(false); + } + //return log_prob; + return log_prob + log_prior(); +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::log_prior() const { + double prior = 0.0; + if (_a_beta_a > 0.0 && _a_beta_b > 0.0 && _a > 0.0) + prior += log_prior_a(_a, _a_beta_a, _a_beta_b); + if (_b_gamma_s > 0.0 && _b_gamma_c > 0.0) + prior += log_prior_b(_b, _b_gamma_c, _b_gamma_s); + + return prior; +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::log_prior_a(double a, double beta_a, double beta_b) { + return lbetadist(a, beta_a, beta_b); +} + +template <typename Dish, typename Hash> +double +PYP<Dish,Hash>::log_prior_b(double b, double gamma_c, double gamma_s) { + return lgammadist(b, gamma_c, gamma_s); +} + +template <typename Dish, typename Hash> +long double PYP<Dish,Hash>::lbetadist(long double x, long double alpha, long double beta) { + assert(x > 0); + assert(x < 1); + assert(alpha > 0); + assert(beta > 0); + return (alpha-1)*log(x)+(beta-1)*log(1-x)+lgamma(alpha+beta)-lgamma(alpha)-lgamma(beta); +//boost::math::lgamma +} + +template <typename Dish, typename Hash> +long double PYP<Dish,Hash>::lgammadist(long double x, long double alpha, long double beta) { + assert(alpha > 0); + assert(beta > 0); + return (alpha-1)*log(x) - alpha*log(beta) - x/beta - lgamma(alpha); +} + + +template <typename Dish, typename Hash> +void +PYP<Dish,Hash>::resample_prior() { + for (int num_its=5; num_its >= 0; --num_its) { + resample_prior_b(); + resample_prior_a(); + } + resample_prior_b(); +} + +template <typename Dish, typename Hash> +void +PYP<Dish,Hash>::resample_prior_b() { + if (_total_tables == 0) + return; + + int niterations = 10; // number of resampling iterations + //std::cerr << "\n## resample_prior_b(), initial a = " << _a << ", b = " << _b << std::endl; + resample_b_type b_log_prob(_total_customers, _total_tables, _a, _b_gamma_c, _b_gamma_s); + //_b = slice_sampler1d(b_log_prob, _b, rnd, (double) 0.0, std::numeric_limits<double>::infinity(), + _b = slice_sampler1d(b_log_prob, _b, random, (double) 0.0, std::numeric_limits<double>::infinity(), + (double) 0.0, niterations, 100*niterations); + //std::cerr << "\n## resample_prior_b(), final a = " << _a << ", b = " << _b << std::endl; +} + +template <typename Dish, typename Hash> +void +PYP<Dish,Hash>::resample_prior_a() { + if (_total_tables == 0) + return; + + int niterations = 10; + //std::cerr << "\n## Initial a = " << _a << ", b = " << _b << std::endl; + resample_a_type a_log_prob(_total_customers, _total_tables, _b, _a_beta_a, _a_beta_b, _dish_tables); + //_a = slice_sampler1d(a_log_prob, _a, rnd, std::numeric_limits<double>::min(), + _a = slice_sampler1d(a_log_prob, _a, random, std::numeric_limits<double>::min(), + (double) 1.0, (double) 0.0, niterations, 100*niterations); +} + +#endif |