Merge pull request #1449 from keevindoherty/hotfix/maxproduct
Add normalization to max-product, avoiding underflow.release/4.3a0
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4f4c6eba7e
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@ -121,6 +121,12 @@ namespace gtsam {
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for (auto&& factor : factors) product = (*factor) * product;
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gttoc(product);
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// Sum all the potentials by pretending all keys are frontal:
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auto normalization = product.sum(product.size());
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// Normalize the product factor to prevent underflow.
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product = product / (*normalization);
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// max out frontals, this is the factor on the separator
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gttic(max);
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DecisionTreeFactor::shared_ptr max = product.max(frontalKeys);
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@ -13,7 +13,8 @@ Author: Frank Dellaert
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import unittest
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from gtsam import DiscreteFactorGraph, DiscreteKeys, DiscreteValues, Ordering
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import numpy as np
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from gtsam import DiscreteConditional, DiscreteFactorGraph, DiscreteKeys, DiscreteValues, Ordering, Symbol
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from gtsam.utils.test_case import GtsamTestCase
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OrderingType = Ordering.OrderingType
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@ -155,6 +156,65 @@ class TestDiscreteFactorGraph(GtsamTestCase):
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bayesNet = graph.sumProduct(ordering_type)
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self.assertEqual(bayesNet(mpe), mpeProbability)
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def test_MPE_chain(self):
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"""
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Test for numerical underflow in EliminateMPE on long chains.
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Adapted from the toy problem of @pcl15423
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Ref: https://github.com/borglab/gtsam/issues/1448
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"""
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num_states = 3
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num_obs = 200
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desired_state = 1
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states = list(range(num_states))
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# Helper function to mimic the behavior of gtbook.Variables discrete_series function
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def make_key(character, index, cardinality):
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symbol = Symbol(character, index)
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key = symbol.key()
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return (key, cardinality)
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X = {index: make_key("X", index, len(states)) for index in range(num_obs)}
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Z = {index: make_key("Z", index, num_obs + 1) for index in range(num_obs)}
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graph = DiscreteFactorGraph()
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# Mostly identity transition matrix
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transitions = np.eye(num_states)
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# Needed otherwise mpe is always state 0?
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transitions += 0.1/(num_states)
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transition_cpt = []
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for i in range(0, num_states):
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transition_row = "/".join([str(x) for x in transitions[i]])
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transition_cpt.append(transition_row)
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transition_cpt = " ".join(transition_cpt)
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for i in reversed(range(1, num_obs)):
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transition_conditional = DiscreteConditional(X[i], [X[i-1]], transition_cpt)
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graph.push_back(transition_conditional)
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# Contrived example such that the desired state gives measurements [0, num_obs) with equal probability
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# but all other states always give measurement num_obs
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obs = np.zeros((num_states, num_obs+1))
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obs[:,-1] = 1
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obs[desired_state,0: -1] = 1
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obs[desired_state,-1] = 0
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obs_cpt_list = []
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for i in range(0, num_states):
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obs_row = "/".join([str(z) for z in obs[i]])
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obs_cpt_list.append(obs_row)
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obs_cpt = " ".join(obs_cpt_list)
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# Contrived example where each measurement is its own index
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for i in range(0, num_obs):
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obs_conditional = DiscreteConditional(Z[i], [X[i]], obs_cpt)
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factor = obs_conditional.likelihood(i)
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graph.push_back(factor)
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mpe = graph.optimize()
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vals = [mpe[X[i][0]] for i in range(num_obs)]
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self.assertEqual(vals, [desired_state]*num_obs)
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if __name__ == "__main__":
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unittest.main()
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