aGrUM  0.14.2
gum::IBayesNet< GUM_SCALAR > Class Template Referenceabstract

Class representing the minimal interface for Bayesian Network. More...

#include <agrum/BN/IBayesNet.h>

+ Inheritance diagram for gum::IBayesNet< GUM_SCALAR >:
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Public Member Functions

bool operator== (const IBayesNet< GUM_SCALAR > &from) const
 This operator compares 2 BNs ! More...
 
bool operator!= (const IBayesNet< GUM_SCALAR > &from) const
 
Size dim () const
 Returns the dimension (the number of free parameters) in this bayes net. More...
 
Size maxVarDomainSize () const
 
GUM_SCALAR minParam () const
 
GUM_SCALAR maxParam () const
 
GUM_SCALAR minNonZeroParam () const
 
GUM_SCALAR maxNonOneParam () const
 
virtual std::string toDot () const
 
std::string toString () const
 
NodeSet minimalCondSet (NodeId target, const NodeSet &soids) const
 
NodeSet minimalCondSet (const NodeSet &targets, const NodeSet &soids) const
 
double log10DomainSize () const
 
bool hasSameStructure (const DAGmodel &other)
 
Constructors / Destructors
 IBayesNet ()
 Default constructor. More...
 
 IBayesNet (std::string name)
 Default constructor. More...
 
virtual ~IBayesNet ()
 Destructor. More...
 
 IBayesNet (const IBayesNet< GUM_SCALAR > &source)
 Copy constructor. More...
 
IBayesNet< GUM_SCALAR > & operator= (const IBayesNet< GUM_SCALAR > &source)
 Copy operator. More...
 
Pure Virtual methods
virtual const Potential< GUM_SCALAR > & cpt (NodeId varId) const =0
 Returns the CPT of a variable. More...
 
virtual const VariableNodeMapvariableNodeMap () const =0
 Returns a constant reference to the VariableNodeMap of thisBN. More...
 
virtual const DiscreteVariablevariable (NodeId id) const =0
 Returns a constant reference over a variable given it's node id. More...
 
virtual NodeId nodeId (const DiscreteVariable &var) const =0
 Return id node from discrete var pointer. More...
 
virtual NodeId idFromName (const std::string &name) const =0
 Getter by name. More...
 
virtual const DiscreteVariablevariableFromName (const std::string &name) const =0
 Getter by name. More...
 
Joint Probability manipulation methods
GUM_SCALAR jointProbability (const Instantiation &i) const
 Compute a parameter of the joint probability for the BN (given an instantiation of the vars) More...
 
GUM_SCALAR log2JointProbability (const Instantiation &i) const
 Compute a parameter of the log joint probability for the BN (given an instantiation of the vars) More...
 
Getter and setters
const std::string & property (const std::string &name) const
 Return the value of the property name of this DAGModel. More...
 
const std::string & propertyWithDefault (const std::string &name, const std::string &byDefault) const
 Return the value of the property name of this DAGModel. More...
 
void setProperty (const std::string &name, const std::string &value)
 Add or change a property of this DAGModel. More...
 
Variable manipulation methods.
const DAGdag () const
 Returns a constant reference to the dag of this Bayes Net. More...
 
Size size () const
 Returns the number of variables in this Directed Graphical Model. More...
 
Size sizeArcs () const
 Returns the number of arcs in this Directed Graphical Model. More...
 
bool empty () const
 Retursn true if this Directed Graphical Model is empty. More...
 
const NodeGraphPartnodes () const
 Returns a constant reference to the dag of this Bayes Net. More...
 
virtual Instantiation completeInstantiation () const final
 Get an instantiation over all the variables of the model. More...
 
Arc manipulation methods.
const ArcSetarcs () const
 returns the set of nodes with arc ingoing to a given node More...
 
const NodeSetparents (const NodeId id) const
 returns the set of nodes with arc ingoing to a given node More...
 
const NodeSetparents (const std::string &name) const
 returns the set of nodes with arc ingoing to a given node More...
 
const NodeSetchildren (const NodeId id) const
 returns the set of nodes with arc outgoing from a given node More...
 
const NodeSetchildren (const std::string &name) const
 returns the set of nodes with arc ingoing to a given node More...
 
Graphical methods
const UndiGraphmoralGraph (bool clear=true) const
 The node's id are coherent with the variables and nodes of the topology. More...
 
const Sequence< NodeId > & topologicalOrder (bool clear=true) const
 The topological order stays the same as long as no variable or arcs are added or erased src the topology. More...
 

Protected Attributes

DAG _dag
 The DAG of this Directed Graphical Model. More...
 

Detailed Description

template<typename GUM_SCALAR>
class gum::IBayesNet< GUM_SCALAR >

Class representing the minimal interface for Bayesian Network.

This class is used as a base class for different versions of Bayesian Networks. No data (except the dag herited from DAGmodel are included in this class. Many algorithms (inference for instance) may use this class when a simple BN is needed.

Definition at line 59 of file IBayesNet.h.

Constructor & Destructor Documentation

◆ IBayesNet() [1/3]

template<typename GUM_SCALAR >
INLINE gum::IBayesNet< GUM_SCALAR >::IBayesNet ( )

Default constructor.

Definition at line 46 of file IBayesNet_tpl.h.

46  : DAGmodel() {
47  GUM_CONSTRUCTOR(IBayesNet);
48  }
DAGmodel()
Default constructor.
Definition: DAGmodel.cpp:28
IBayesNet()
Default constructor.
Definition: IBayesNet_tpl.h:46

◆ IBayesNet() [2/3]

template<typename GUM_SCALAR >
INLINE gum::IBayesNet< GUM_SCALAR >::IBayesNet ( std::string  name)
explicit

Default constructor.

Definition at line 51 of file IBayesNet_tpl.h.

51  : DAGmodel() {
52  GUM_CONSTRUCTOR(IBayesNet);
53  this->setProperty("name", name);
54  }
void setProperty(const std::string &name, const std::string &value)
Add or change a property of this DAGModel.
Definition: DAGmodel_inl.h:53
DAGmodel()
Default constructor.
Definition: DAGmodel.cpp:28
IBayesNet()
Default constructor.
Definition: IBayesNet_tpl.h:46

◆ ~IBayesNet()

template<typename GUM_SCALAR >
gum::IBayesNet< GUM_SCALAR >::~IBayesNet ( )
virtual

Destructor.

Definition at line 71 of file IBayesNet_tpl.h.

71  {
72  GUM_DESTRUCTOR(IBayesNet);
73  }
IBayesNet()
Default constructor.
Definition: IBayesNet_tpl.h:46

◆ IBayesNet() [3/3]

template<typename GUM_SCALAR>
gum::IBayesNet< GUM_SCALAR >::IBayesNet ( const IBayesNet< GUM_SCALAR > &  source)

Copy constructor.

Definition at line 57 of file IBayesNet_tpl.h.

57  :
58  DAGmodel(source) {
59  GUM_CONS_CPY(IBayesNet);
60  }
DAGmodel()
Default constructor.
Definition: DAGmodel.cpp:28
IBayesNet()
Default constructor.
Definition: IBayesNet_tpl.h:46

Member Function Documentation

◆ __minimalCondSetVisitDn()

template<typename GUM_SCALAR >
void gum::IBayesNet< GUM_SCALAR >::__minimalCondSetVisitDn ( NodeId  node,
const NodeSet soids,
NodeSet minimal,
NodeSet alreadyVisitedUp,
NodeSet alreadyVisitedDn 
) const
private

Definition at line 329 of file IBayesNet_tpl.h.

334  {
335  if (alreadyVisitedDn.contains(node)) return;
336  alreadyVisitedDn << node;
337 
338  if (soids.contains(node)) {
339  minimal << node;
340  for (auto fath : _dag.parents(node))
342  fath, soids, minimal, alreadyVisitedUp, alreadyVisitedDn);
343  } else {
344  for (auto chil : _dag.children(node))
346  chil, soids, minimal, alreadyVisitedUp, alreadyVisitedDn);
347  }
348  }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
void __minimalCondSetVisitUp(NodeId node, const NodeSet &soids, NodeSet &minimal, NodeSet &alreadyVisitedUp, NodeSet &alreadyVisitedDn) const
const NodeSet & children(const NodeId id) const
returns the set of nodes with arc outgoing from a given node
void __minimalCondSetVisitDn(NodeId node, const NodeSet &soids, NodeSet &minimal, NodeSet &alreadyVisitedUp, NodeSet &alreadyVisitedDn) const

◆ __minimalCondSetVisitUp()

template<typename GUM_SCALAR >
void gum::IBayesNet< GUM_SCALAR >::__minimalCondSetVisitUp ( NodeId  node,
const NodeSet soids,
NodeSet minimal,
NodeSet alreadyVisitedUp,
NodeSet alreadyVisitedDn 
) const
private

Definition at line 306 of file IBayesNet_tpl.h.

311  {
312  if (alreadyVisitedUp.contains(node)) return;
313  alreadyVisitedUp << node;
314 
315  if (soids.contains(node)) {
316  minimal << node;
317  } else {
318  for (auto fath : _dag.parents(node))
320  fath, soids, minimal, alreadyVisitedUp, alreadyVisitedDn);
321  for (auto chil : _dag.children(node))
323  chil, soids, minimal, alreadyVisitedUp, alreadyVisitedDn);
324  }
325  }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
void __minimalCondSetVisitUp(NodeId node, const NodeSet &soids, NodeSet &minimal, NodeSet &alreadyVisitedUp, NodeSet &alreadyVisitedDn) const
const NodeSet & children(const NodeId id) const
returns the set of nodes with arc outgoing from a given node
void __minimalCondSetVisitDn(NodeId node, const NodeSet &soids, NodeSet &minimal, NodeSet &alreadyVisitedUp, NodeSet &alreadyVisitedDn) const

◆ arcs()

INLINE const ArcSet & gum::DAGmodel::arcs ( ) const
inherited

returns the set of nodes with arc ingoing to a given node

Note that the set of arcs returned may be empty if no arc within the ArcGraphPart is ingoing into the given node.

Parameters
idthe node toward which the arcs returned are pointing

Definition at line 101 of file DAGmodel_inl.h.

References gum::DAGmodel::_dag, and gum::ArcGraphPart::arcs().

Referenced by gum::EssentialGraph::__buildEssentialGraph(), gum::DAGmodel::__moralGraph(), gum::MarkovBlanket::hasSameStructure(), and gum::DAGmodel::hasSameStructure().

101 { return _dag.arcs(); }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
const ArcSet & arcs() const
returns the set of arcs stored within the ArcGraphPart
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◆ children() [1/2]

INLINE const NodeSet & gum::DAGmodel::children ( const NodeId  id) const
inherited

returns the set of nodes with arc outgoing from a given node

Note that the set of arcs returned may be empty if no arc within the ArcGraphPart is outgoing from the given node.

Parameters
idthe node which is the tail of the arcs returned

Definition at line 108 of file DAGmodel_inl.h.

References gum::DAGmodel::_dag, and gum::ArcGraphPart::children().

Referenced by gum::MarkovBlanket::__buildMarkovBlanket(), gum::DAGmodel::parents(), gum::prm::InstanceBayesNet< GUM_SCALAR >::toDot(), and gum::prm::ClassBayesNet< GUM_SCALAR >::toDot().

108  {
109  return _dag.children(id);
110  }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
const NodeSet & children(const NodeId id) const
returns the set of nodes with arc outgoing from a given node
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◆ children() [2/2]

const NodeSet& gum::DAGmodel::children ( const std::string &  name) const
inlineinherited

returns the set of nodes with arc ingoing to a given node

Note that the set of arcs returned may be empty if no arc within the ArcGraphPart is ingoing into the given node.

Parameters
idthe node toward which the arcs returned are pointing

Definition at line 162 of file DAGmodel.h.

References gum::DAGmodel::hasSameStructure(), gum::DAGmodel::idFromName(), gum::DAGmodel::log10DomainSize(), gum::DAGmodel::moralGraph(), gum::DAGmodel::operator=(), gum::DAGmodel::parents(), and gum::DAGmodel::topologicalOrder().

162  {
163  return parents(idFromName(name));
164  };
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
Definition: DAGmodel_inl.h:103
virtual NodeId idFromName(const std::string &name) const =0
Getter by name.
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◆ completeInstantiation()

INLINE Instantiation gum::DAGmodel::completeInstantiation ( ) const
finalvirtualinherited

Get an instantiation over all the variables of the model.

Definition at line 83 of file DAGmodel_inl.h.

References gum::DAGmodel::dag(), and gum::DAGmodel::variable().

83  {
84  Instantiation I;
85 
86  for (const auto node : dag())
87  I << variable(node);
88 
89  return I;
90  }
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variabe given it&#39;s node id.
const DAG & dag() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:60
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◆ cpt()

template<typename GUM_SCALAR>
virtual const Potential< GUM_SCALAR >& gum::IBayesNet< GUM_SCALAR >::cpt ( NodeId  varId) const
pure virtual

Returns the CPT of a variable.

Exceptions
NotFoundIf no variable's id matches varId.

Implemented in gum::BayesNet< GUM_SCALAR >, gum::BayesNet< double >, gum::BayesNetFragment< GUM_SCALAR >, gum::prm::ClassBayesNet< GUM_SCALAR >, and gum::prm::InstanceBayesNet< GUM_SCALAR >.

Referenced by gum::credal::CNMonteCarloSampling< GUM_SCALAR, BNInferenceEngine >::__verticesSampling(), gum::BarrenNodesFinder::barrenPotentials(), and gum::IBayesNet< double >::operator==().

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◆ dag()

◆ dim()

template<typename GUM_SCALAR >
Size gum::IBayesNet< GUM_SCALAR >::dim ( ) const

Returns the dimension (the number of free parameters) in this bayes net.

\( dim(G)=\sum_{i \in nodes} ((r_i-1)\cdot q_i) \) where \( r_i \) is the number of instantiations of node \( i \) and \( q_i \) is the number of instantiations of its parents.

Definition at line 76 of file IBayesNet_tpl.h.

76  {
77  Size dim = 0;
78 
79  for (auto node : nodes()) {
80  Size q = 1;
81 
82  for (auto parent : parents(node))
83  q *= variable(parent).domainSize();
84 
85  dim += (variable(node).domainSize() - 1) * q;
86  }
87 
88  return dim;
89  }
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
Definition: DAGmodel_inl.h:103
virtual Size domainSize() const =0
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variable given it&#39;s node id.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
Size dim() const
Returns the dimension (the number of free parameters) in this bayes net.
Definition: IBayesNet_tpl.h:76
std::size_t Size
In aGrUM, hashed values are unsigned long int.
Definition: types.h:45

◆ empty()

INLINE bool gum::DAGmodel::empty ( ) const
inherited

Retursn true if this Directed Graphical Model is empty.

Definition at line 96 of file DAGmodel_inl.h.

References gum::DAGmodel::size().

96 { return size() == 0; }
Size size() const
Returns the number of variables in this Directed Graphical Model.
Definition: DAGmodel_inl.h:93
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◆ hasSameStructure()

bool gum::DAGmodel::hasSameStructure ( const DAGmodel other)
inherited
Returns
true if all the named node are the same and all the named arcs are the same

Definition at line 119 of file DAGmodel.cpp.

References gum::DAGmodel::arcs(), gum::Set< Key, Alloc >::exists(), gum::DAGmodel::idFromName(), gum::DAGmodel::nodes(), gum::DAGmodel::size(), gum::DAGmodel::sizeArcs(), and gum::DAGmodel::variable().

Referenced by gum::DAGmodel::children().

119  {
120  if (this == &other) return true;
121 
122  if (size() != other.size()) return false;
123 
124  if (sizeArcs() != other.sizeArcs()) return false;
125 
126  for (const auto& nid : nodes()) {
127  try {
128  other.idFromName(variable(nid).name());
129  } catch (NotFound) { return false; }
130  }
131 
132  for (const auto& arc : arcs()) {
133  if (!other.arcs().exists(Arc(other.idFromName(variable(arc.tail()).name()),
134  other.idFromName(variable(arc.head()).name()))))
135  return false;
136  }
137 
138  return true;
139  }
const ArcSet & arcs() const
returns the set of nodes with arc ingoing to a given node
Definition: DAGmodel_inl.h:101
Size sizeArcs() const
Returns the number of arcs in this Directed Graphical Model.
Definition: DAGmodel_inl.h:99
Size size() const
Returns the number of variables in this Directed Graphical Model.
Definition: DAGmodel_inl.h:93
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variabe given it&#39;s node id.
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◆ idFromName()

template<typename GUM_SCALAR>
virtual NodeId gum::IBayesNet< GUM_SCALAR >::idFromName ( const std::string &  name) const
pure virtual

Getter by name.

Exceptions
NotFoundif no such name exists in the graph.

Implements gum::DAGmodel.

Implemented in gum::BayesNet< GUM_SCALAR >, gum::BayesNet< double >, gum::BayesNetFragment< GUM_SCALAR >, gum::prm::ClassBayesNet< GUM_SCALAR >, and gum::prm::InstanceBayesNet< GUM_SCALAR >.

Referenced by gum::IBayesNet< double >::operator==().

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◆ jointProbability()

template<typename GUM_SCALAR >
GUM_SCALAR gum::IBayesNet< GUM_SCALAR >::jointProbability ( const Instantiation i) const

Compute a parameter of the joint probability for the BN (given an instantiation of the vars)

Warning
a variable not present in the instantiation is assumed to be instantiated to 0.

Definition at line 217 of file IBayesNet_tpl.h.

217  {
218  auto value = (GUM_SCALAR)1.0;
219 
220  GUM_SCALAR tmp;
221 
222  for (auto node : nodes()) {
223  if ((tmp = cpt(node)[i]) == (GUM_SCALAR)0) { return (GUM_SCALAR)0; }
224 
225  value *= tmp;
226  }
227 
228  return value;
229  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112

◆ log10DomainSize()

INLINE double gum::DAGmodel::log10DomainSize ( ) const
inherited
Returns
Returns the log10 domain size of the joint probabilty for the Directed Graphical Model

Definition at line 72 of file DAGmodel_inl.h.

References gum::DAGmodel::nodes(), and gum::DAGmodel::variable().

Referenced by gum::DAGmodel::children(), and gum::InfluenceDiagram< GUM_SCALAR >::toString().

72  {
73  double dSize = 0.0;
74 
75  for (const auto node : nodes()) {
76  dSize += std::log10(variable(node).domainSize());
77  }
78 
79  return dSize;
80  }
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variabe given it&#39;s node id.
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◆ log2JointProbability()

template<typename GUM_SCALAR >
GUM_SCALAR gum::IBayesNet< GUM_SCALAR >::log2JointProbability ( const Instantiation i) const

Compute a parameter of the log joint probability for the BN (given an instantiation of the vars)

Compute a parameter of the joint probability for the BN (given an instantiation of the vars)

Warning
a variable not present in the instantiation is assumed to be instantiated to 0.

Definition at line 236 of file IBayesNet_tpl.h.

236  {
237  auto value = (GUM_SCALAR)0.0;
238 
239  GUM_SCALAR tmp;
240 
241  for (auto node : nodes()) {
242  if ((tmp = cpt(node)[i]) == (GUM_SCALAR)0) {
243  return (GUM_SCALAR)(-std::numeric_limits< double >::infinity());
244  }
245 
246  value += log2(cpt(node)[i]);
247  }
248 
249  return value;
250  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112

◆ maxNonOneParam()

template<typename GUM_SCALAR >
GUM_SCALAR gum::IBayesNet< GUM_SCALAR >::maxNonOneParam ( ) const
Returns
the biggest value (not equal to 1) in the CPTs of *this

Definition at line 132 of file IBayesNet_tpl.h.

132  {
133  GUM_SCALAR res = 0.0;
134  for (auto node : nodes()) {
135  auto v = cpt(node).maxNonOne();
136  if (v > res) { res = v; }
137  }
138  return res;
139  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112

◆ maxParam()

template<typename GUM_SCALAR >
GUM_SCALAR gum::IBayesNet< GUM_SCALAR >::maxParam ( ) const
Returns
the biggest value in the CPTs of *this

Definition at line 112 of file IBayesNet_tpl.h.

112  {
113  GUM_SCALAR res = 1.0;
114  for (auto node : nodes()) {
115  auto v = cpt(node).max();
116  if (v > res) { res = v; }
117  }
118  return res;
119  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112

◆ maxVarDomainSize()

template<typename GUM_SCALAR >
Size gum::IBayesNet< GUM_SCALAR >::maxVarDomainSize ( ) const
Returns
the biggest domainSize among the variables of *this

Definition at line 92 of file IBayesNet_tpl.h.

Referenced by gum::ImportanceSampling< GUM_SCALAR >::_onContextualize().

92  {
93  Size res = 0;
94  for (auto node : nodes()) {
95  auto v = variable(node).domainSize();
96  if (v > res) { res = v; }
97  }
98  return res;
99  }
virtual Size domainSize() const =0
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variable given it&#39;s node id.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
std::size_t Size
In aGrUM, hashed values are unsigned long int.
Definition: types.h:45
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◆ minimalCondSet() [1/2]

template<typename GUM_SCALAR >
NodeSet gum::IBayesNet< GUM_SCALAR >::minimalCondSet ( NodeId  target,
const NodeSet soids 
) const

Definition at line 352 of file IBayesNet_tpl.h.

353  {
354  if (soids.contains(target)) return NodeSet({target});
355 
356  NodeSet res;
357  NodeSet alreadyVisitedUp;
358  NodeSet alreadyVisitedDn;
359  alreadyVisitedDn << target;
360  alreadyVisitedUp << target;
361 
362  for (auto fath : _dag.parents(target))
364  fath, soids, res, alreadyVisitedUp, alreadyVisitedDn);
365  for (auto chil : _dag.children(target))
367  chil, soids, res, alreadyVisitedUp, alreadyVisitedDn);
368  return res;
369  }
Set< NodeId > NodeSet
Some typdefs and define for shortcuts ...
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
void __minimalCondSetVisitUp(NodeId node, const NodeSet &soids, NodeSet &minimal, NodeSet &alreadyVisitedUp, NodeSet &alreadyVisitedDn) const
const NodeSet & children(const NodeId id) const
returns the set of nodes with arc outgoing from a given node
void __minimalCondSetVisitDn(NodeId node, const NodeSet &soids, NodeSet &minimal, NodeSet &alreadyVisitedUp, NodeSet &alreadyVisitedDn) const

◆ minimalCondSet() [2/2]

template<typename GUM_SCALAR >
NodeSet gum::IBayesNet< GUM_SCALAR >::minimalCondSet ( const NodeSet targets,
const NodeSet soids 
) const

Definition at line 372 of file IBayesNet_tpl.h.

373  {
374  NodeSet res;
375  for (auto node : targets) {
376  res += minimalCondSet(node, soids);
377  }
378  return res;
379  }
Set< NodeId > NodeSet
Some typdefs and define for shortcuts ...
NodeSet minimalCondSet(NodeId target, const NodeSet &soids) const

◆ minNonZeroParam()

template<typename GUM_SCALAR >
GUM_SCALAR gum::IBayesNet< GUM_SCALAR >::minNonZeroParam ( ) const
Returns
the smallest value (not equal to 0) in the CPTs of *this

Definition at line 122 of file IBayesNet_tpl.h.

Referenced by gum::ImportanceSampling< GUM_SCALAR >::_onContextualize().

122  {
123  GUM_SCALAR res = 1.0;
124  for (auto node : nodes()) {
125  auto v = cpt(node).minNonZero();
126  if (v < res) { res = v; }
127  }
128  return res;
129  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
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◆ minParam()

template<typename GUM_SCALAR >
GUM_SCALAR gum::IBayesNet< GUM_SCALAR >::minParam ( ) const
Returns
the smallest value in the CPTs of *this

Definition at line 102 of file IBayesNet_tpl.h.

102  {
103  GUM_SCALAR res = 1.0;
104  for (auto node : nodes()) {
105  auto v = cpt(node).min();
106  if (v < res) { res = v; }
107  }
108  return res;
109  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112

◆ moralGraph()

const UndiGraph & gum::DAGmodel::moralGraph ( bool  clear = true) const
inherited

The node's id are coherent with the variables and nodes of the topology.

Parameters
clearIf false returns the previously created moral graph.

Definition at line 99 of file DAGmodel.cpp.

References gum::DAGmodel::__moralGraph(), gum::DAGmodel::__mutableMoralGraph, and gum::UndiGraph::clear().

Referenced by gum::prm::SVED< GUM_SCALAR >::__eliminateNodes(), gum::prm::SVE< GUM_SCALAR >::__eliminateNodes(), gum::prm::SVED< GUM_SCALAR >::__eliminateNodesWithEvidence(), gum::prm::SVE< GUM_SCALAR >::__eliminateNodesWithEvidence(), gum::prm::SVED< GUM_SCALAR >::__initLiftedNodes(), gum::prm::SVE< GUM_SCALAR >::__initLiftedNodes(), and gum::DAGmodel::children().

99  {
100  if (clear
101  || (__mutableMoralGraph == nullptr)) { // we have to call _moralGraph
102  if (__mutableMoralGraph == nullptr) {
103  __mutableMoralGraph = new UndiGraph();
104  } else {
105  // clear is True ,__mutableMoralGraph exists
107  }
108 
109  __moralGraph();
110  }
111 
112  return *__mutableMoralGraph;
113  }
virtual void clear()
removes all the nodes and edges from the graph
Definition: undiGraph_inl.h:40
UndiGraph * __mutableMoralGraph
The moral graph of this Directed Graphical Model.
Definition: DAGmodel.h:208
void __moralGraph() const
Returns the moral graph of this DAGModel.
Definition: DAGmodel.cpp:51
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◆ nodeId()

template<typename GUM_SCALAR>
virtual NodeId gum::IBayesNet< GUM_SCALAR >::nodeId ( const DiscreteVariable var) const
pure virtual

Return id node from discrete var pointer.

Exceptions
NotFoundIf no variable matches var.

Implements gum::DAGmodel.

Implemented in gum::BayesNet< GUM_SCALAR >, gum::BayesNet< double >, gum::BayesNetFragment< GUM_SCALAR >, gum::prm::ClassBayesNet< GUM_SCALAR >, and gum::prm::InstanceBayesNet< GUM_SCALAR >.

Referenced by gum::BayesBall::relevantPotentials(), and gum::dSeparation::relevantPotentials().

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◆ nodes()

INLINE const NodeGraphPart & gum::DAGmodel::nodes ( ) const
inherited

Returns a constant reference to the dag of this Bayes Net.

Definition at line 112 of file DAGmodel_inl.h.

References gum::DAGmodel::_dag.

Referenced by gum::credal::CredalNet< GUM_SCALAR >::__bnCopy(), gum::EssentialGraph::__buildEssentialGraph(), gum::MarkovBlanket::__buildMarkovBlanket(), gum::DAGmodel::__moralGraph(), gum::credal::CredalNet< GUM_SCALAR >::__sort_varType(), gum::credal::CNMonteCarloSampling< GUM_SCALAR, BNInferenceEngine >::__verticesSampling(), gum::ImportanceSampling< GUM_SCALAR >::_unsharpenBN(), gum::BayesNetFactory< GUM_SCALAR >::BayesNetFactory(), gum::BayesNetFragment< GUM_SCALAR >::checkConsistency(), gum::MCBayesNetGenerator< GUM_SCALAR, ICPTGenerator, ICPTDisturber >::disturbBN(), gum::Estimator< GUM_SCALAR >::Estimator(), gum::getMaxModality(), gum::DAGmodel::hasSameStructure(), gum::DAGmodel::log10DomainSize(), gum::prm::InstanceBayesNet< GUM_SCALAR >::modalities(), gum::prm::ClassBayesNet< GUM_SCALAR >::modalities(), gum::Estimator< GUM_SCALAR >::setFromBN(), gum::prm::InstanceBayesNet< GUM_SCALAR >::toDot(), gum::prm::ClassBayesNet< GUM_SCALAR >::toDot(), gum::credal::CredalNet< GUM_SCALAR >::toString(), and gum::BayesNetFragment< GUM_SCALAR >::~BayesNetFragment().

112  {
113  return (NodeGraphPart&)_dag;
114  }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
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◆ operator!=()

template<typename GUM_SCALAR>
bool gum::IBayesNet< GUM_SCALAR >::operator!= ( const IBayesNet< GUM_SCALAR > &  from) const
Returns
Returns false if the src and this are equal.

Definition at line 300 of file IBayesNet_tpl.h.

300  {
301  return !this->operator==(from);
302  }
bool operator==(const IBayesNet< GUM_SCALAR > &from) const
This operator compares 2 BNs !

◆ operator=()

template<typename GUM_SCALAR>
IBayesNet< GUM_SCALAR > & gum::IBayesNet< GUM_SCALAR >::operator= ( const IBayesNet< GUM_SCALAR > &  source)

Copy operator.

Definition at line 64 of file IBayesNet_tpl.h.

Referenced by gum::prm::InstanceBayesNet< GUM_SCALAR >::operator=(), and gum::prm::ClassBayesNet< GUM_SCALAR >::operator=().

64  {
65  if (this != &source) { DAGmodel::operator=(source); }
66 
67  return *this;
68  }
DAGmodel & operator=(const DAGmodel &source)
Private copy operator.
Definition: DAGmodel.cpp:76
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◆ operator==()

template<typename GUM_SCALAR>
bool gum::IBayesNet< GUM_SCALAR >::operator== ( const IBayesNet< GUM_SCALAR > &  from) const

This operator compares 2 BNs !

Warning
To identify nodes between BNs, it is assumed that they share the same name.
Returns
true if the src and this are equal.

Definition at line 253 of file IBayesNet_tpl.h.

253  {
254  if (size() != from.size()) { return false; }
255 
256  if (sizeArcs() != from.sizeArcs()) { return false; }
257 
258  // alignment of variables between the 2 BNs
259  Bijection< const DiscreteVariable*, const DiscreteVariable* > alignment;
260 
261  for (auto node : nodes()) {
262  try {
263  alignment.insert(&variable(node),
264  &from.variableFromName(variable(node).name()));
265  } catch (NotFound&) {
266  // a name is not found in from
267  return false;
268  }
269  }
270 
271  for (auto node : nodes()) {
272  NodeId fromnode = from.idFromName(variable(node).name());
273 
274  if (cpt(node).nbrDim() != from.cpt(fromnode).nbrDim()) { return false; }
275 
276  if (cpt(node).domainSize() != from.cpt(fromnode).domainSize()) {
277  return false;
278  }
279 
280  Instantiation i(cpt(node));
281  Instantiation j(from.cpt(fromnode));
282 
283  for (i.setFirst(); !i.end(); i.inc()) {
284  for (Idx indice = 0; indice < cpt(node).nbrDim(); ++indice) {
285  const DiscreteVariable* p = &(i.variable(indice));
286  j.chgVal(*(alignment.second(p)), i.val(*p));
287  }
288 
289  if (std::pow(cpt(node).get(i) - from.cpt(fromnode).get(j), (GUM_SCALAR)2)
290  > (GUM_SCALAR)1e-6) {
291  return false;
292  }
293  }
294  }
295 
296  return true;
297  }
Size sizeArcs() const
Returns the number of arcs in this Directed Graphical Model.
Definition: DAGmodel_inl.h:99
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
Size size() const
Returns the number of variables in this Directed Graphical Model.
Definition: DAGmodel_inl.h:93
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variable given it&#39;s node id.
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
Size NodeId
Type for node ids.
Definition: graphElements.h:97

◆ parents() [1/2]

INLINE const NodeSet & gum::DAGmodel::parents ( const NodeId  id) const
inherited

returns the set of nodes with arc ingoing to a given node

Note that the set of arcs returned may be empty if no arc within the ArcGraphPart is ingoing into the given node.

Parameters
idthe node toward which the arcs returned are pointing

Definition at line 103 of file DAGmodel_inl.h.

References gum::DAGmodel::_dag, and gum::ArcGraphPart::parents().

Referenced by gum::MarkovBlanket::__buildMarkovBlanket(), gum::DAGmodel::__moralGraph(), gum::BayesNetFragment< GUM_SCALAR >::_installCPT(), gum::BayesNetFragment< GUM_SCALAR >::checkConsistency(), gum::DAGmodel::children(), gum::BayesNetFragment< GUM_SCALAR >::installCPT(), gum::DAGmodel::parents(), gum::prm::InstanceBayesNet< GUM_SCALAR >::toDot(), and gum::prm::ClassBayesNet< GUM_SCALAR >::toDot().

103  {
104  return _dag.parents(id);
105  }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
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◆ parents() [2/2]

const NodeSet& gum::DAGmodel::parents ( const std::string &  name) const
inlineinherited

returns the set of nodes with arc ingoing to a given node

Note that the set of arcs returned may be empty if no arc within the ArcGraphPart is ingoing into the given node.

Parameters
idthe node toward which the arcs returned are pointing

Definition at line 153 of file DAGmodel.h.

References gum::DAGmodel::children(), gum::DAGmodel::idFromName(), and gum::DAGmodel::parents().

153  {
154  return parents(idFromName(name));
155  };
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
Definition: DAGmodel_inl.h:103
virtual NodeId idFromName(const std::string &name) const =0
Getter by name.
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◆ property()

INLINE const std::string & gum::DAGmodel::property ( const std::string &  name) const
inherited

Return the value of the property name of this DAGModel.

Exceptions
NotFoundRaised if no name property is found.

Definition at line 34 of file DAGmodel_inl.h.

References gum::DAGmodel::__properties(), and GUM_ERROR.

Referenced by gum::InfluenceDiagram< GUM_SCALAR >::toDot().

34  {
35  try {
36  return __properties()[name];
37  } catch (NotFound&) {
38  std::string msg = "The following property does not exists: ";
39  GUM_ERROR(NotFound, msg + name);
40  }
41  }
HashTable< std::string, std::string > & __properties() const
Return the properties of this Directed Graphical Model and initialize the hash table is necessary...
Definition: DAGmodel_inl.h:63
#define GUM_ERROR(type, msg)
Definition: exceptions.h:52
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◆ propertyWithDefault()

INLINE const std::string & gum::DAGmodel::propertyWithDefault ( const std::string &  name,
const std::string &  byDefault 
) const
inherited

Return the value of the property name of this DAGModel.

return byDefault if the property name is not found

Definition at line 45 of file DAGmodel_inl.h.

References gum::DAGmodel::__properties().

46  {
47  try {
48  return __properties()[name];
49  } catch (NotFound&) { return byDefault; }
50  }
HashTable< std::string, std::string > & __properties() const
Return the properties of this Directed Graphical Model and initialize the hash table is necessary...
Definition: DAGmodel_inl.h:63
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◆ setProperty()

INLINE void gum::DAGmodel::setProperty ( const std::string &  name,
const std::string &  value 
)
inherited

Add or change a property of this DAGModel.

Definition at line 53 of file DAGmodel_inl.h.

References gum::DAGmodel::__properties(), and gum::HashTable< Key, Val, Alloc >::insert().

Referenced by gum::BayesNet< double >::fastPrototype().

53  {
54  try {
55  __properties()[name] = value;
56  } catch (NotFound&) { __properties().insert(name, value); }
57  }
HashTable< std::string, std::string > & __properties() const
Return the properties of this Directed Graphical Model and initialize the hash table is necessary...
Definition: DAGmodel_inl.h:63
value_type & insert(const Key &key, const Val &val)
Adds a new element (actually a copy of this element) into the hash table.
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◆ size()

INLINE Size gum::DAGmodel::size ( ) const
inherited

Returns the number of variables in this Directed Graphical Model.

Definition at line 93 of file DAGmodel_inl.h.

References gum::DAGmodel::dag(), and gum::NodeGraphPart::size().

Referenced by gum::credal::CredalNet< GUM_SCALAR >::__initCNNets(), gum::InfluenceDiagram< GUM_SCALAR >::decisionNodeSize(), gum::DAGmodel::empty(), gum::MarkovBlanket::hasSameStructure(), gum::DAGmodel::hasSameStructure(), gum::IBayesNet< double >::operator==(), gum::prm::InstanceBayesNet< GUM_SCALAR >::toDot(), and gum::prm::ClassBayesNet< GUM_SCALAR >::toDot().

93 { return dag().size(); }
Size size() const
alias for sizeNodes
const DAG & dag() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:60
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◆ sizeArcs()

INLINE Size gum::DAGmodel::sizeArcs ( ) const
inherited

Returns the number of arcs in this Directed Graphical Model.

Definition at line 99 of file DAGmodel_inl.h.

References gum::DAGmodel::_dag, and gum::ArcGraphPart::sizeArcs().

Referenced by gum::MarkovBlanket::hasSameStructure(), gum::DAGmodel::hasSameStructure(), and gum::IBayesNet< double >::operator==().

99 { return _dag.sizeArcs(); }
DAG _dag
The DAG of this Directed Graphical Model.
Definition: DAGmodel.h:200
Size sizeArcs() const
indicates the number of arcs stored within the ArcGraphPart
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◆ toDot()

template<typename GUM_SCALAR >
std::string gum::IBayesNet< GUM_SCALAR >::toDot ( ) const
virtual
Returns
Returns a dot representation of this IBayesNet.

Reimplemented in gum::BayesNetFragment< GUM_SCALAR >, gum::prm::ClassBayesNet< GUM_SCALAR >, and gum::prm::InstanceBayesNet< GUM_SCALAR >.

Definition at line 172 of file IBayesNet_tpl.h.

172  {
173  std::stringstream output;
174  output << "digraph \"";
175 
176  std::string bn_name;
177 
178  try {
179  bn_name = this->property("name");
180  } catch (NotFound&) { bn_name = "no_name"; }
181 
182  output << bn_name << "\" {" << std::endl;
183  output << " graph [bgcolor=transparent,label=\"" << bn_name << "\"];"
184  << std::endl;
185  output << " node [style=filled fillcolor=\"#ffffaa\"];" << std::endl
186  << std::endl;
187 
188  for (auto node : nodes())
189  output << "\"" << variable(node).name() << "\" [comment=\"" << node << ":"
190  << variable(node).toStringWithDescription() << "\"];" << std::endl;
191 
192  output << std::endl;
193 
194  std::string tab = " ";
195 
196  for (auto node : nodes()) {
197  if (children(node).size() > 0) {
198  for (auto child : children(node)) {
199  output << tab << "\"" << variable(node).name() << "\" -> "
200  << "\"" << variable(child).name() << "\";" << std::endl;
201  }
202  } else if (parents(node).size() == 0) {
203  output << tab << "\"" << variable(node).name() << "\";" << std::endl;
204  }
205  }
206 
207  output << "}" << std::endl;
208 
209  return output.str();
210  }
const NodeSet & children(const NodeId id) const
returns the set of nodes with arc outgoing from a given node
Definition: DAGmodel_inl.h:108
const NodeSet & parents(const NodeId id) const
returns the set of nodes with arc ingoing to a given node
Definition: DAGmodel_inl.h:103
const std::string toStringWithDescription() const
string version of *this using description attribute instead of name.
Size size() const
Returns the number of variables in this Directed Graphical Model.
Definition: DAGmodel_inl.h:93
virtual const DiscreteVariable & variable(NodeId id) const =0
Returns a constant reference over a variable given it&#39;s node id.
const std::string & property(const std::string &name) const
Return the value of the property name of this DAGModel.
Definition: DAGmodel_inl.h:34
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
const std::string & name() const
returns the name of the variable

◆ topologicalOrder()

const Sequence< NodeId > & gum::DAGmodel::topologicalOrder ( bool  clear = true) const
inherited

The topological order stays the same as long as no variable or arcs are added or erased src the topology.

Parameters
clearIf false returns the previously created topology.

Definition at line 115 of file DAGmodel.cpp.

References gum::DAGmodel::dag(), and gum::DiGraph::topologicalOrder().

Referenced by gum::EssentialGraph::__buildEssentialGraph(), gum::InfluenceDiagramGenerator< GUM_SCALAR >::__checkTemporalOrder(), gum::DAGmodel::children(), gum::InfluenceDiagram< GUM_SCALAR >::decisionOrderExists(), and gum::InfluenceDiagram< GUM_SCALAR >::getDecisionOrder().

115  {
116  return this->dag().topologicalOrder(clear);
117  }
const Sequence< NodeId > & topologicalOrder(bool clear=true) const
The topological order stays the same as long as no variable or arcs are added or erased src the topol...
Definition: diGraph.cpp:88
const DAG & dag() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:60
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◆ toString()

template<typename GUM_SCALAR >
INLINE std::string gum::IBayesNet< GUM_SCALAR >::toString ( ) const
Returns
Returns a string representation of this IBayesNet.

Definition at line 142 of file IBayesNet_tpl.h.

Referenced by gum::operator<<().

142  {
143  Size param = 0;
144  double dSize = log10DomainSize();
145 
146  for (auto node : nodes())
147  param += cpt(node).content()->realSize();
148 
149  double compressionRatio = log10(1.0 * param) - dSize;
150 
151  std::stringstream s;
152  s << "BN{nodes: " << size() << ", arcs: " << dag().sizeArcs() << ", ";
153 
154  if (dSize > 6)
155  s << "domainSize: 10^" << dSize;
156  else
157  s << "domainSize: " << std::round(std::pow(10.0, dSize));
158 
159  s << ", parameters: " << param << ", compression ratio: ";
160 
161  if (compressionRatio > -3)
162  s << trunc(100.0 - std::pow(10.0, compressionRatio + 2.0));
163  else
164  s << "100-10^" << compressionRatio + 2.0;
165 
166  s << "% }";
167 
168  return s.str();
169  }
virtual const Potential< GUM_SCALAR > & cpt(NodeId varId) const =0
Returns the CPT of a variable.
Size size() const
Returns the number of variables in this Directed Graphical Model.
Definition: DAGmodel_inl.h:93
Size sizeArcs() const
indicates the number of arcs stored within the ArcGraphPart
const NodeGraphPart & nodes() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:112
std::size_t Size
In aGrUM, hashed values are unsigned long int.
Definition: types.h:45
double log10DomainSize() const
Definition: DAGmodel_inl.h:72
const DAG & dag() const
Returns a constant reference to the dag of this Bayes Net.
Definition: DAGmodel_inl.h:60
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◆ variable()

template<typename GUM_SCALAR>
virtual const DiscreteVariable& gum::IBayesNet< GUM_SCALAR >::variable ( NodeId  id) const
pure virtual

Returns a constant reference over a variable given it's node id.

Exceptions
NotFoundIf no variable's id matches varId.

Implements gum::DAGmodel.

Implemented in gum::BayesNet< GUM_SCALAR >, gum::BayesNet< double >, gum::BayesNetFragment< GUM_SCALAR >, gum::prm::ClassBayesNet< GUM_SCALAR >, and gum::prm::InstanceBayesNet< GUM_SCALAR >.

Referenced by gum::credal::CNMonteCarloSampling< GUM_SCALAR, BNInferenceEngine >::__insertEvidence(), gum::credal::CNMonteCarloSampling< GUM_SCALAR, BNInferenceEngine >::__verticesSampling(), gum::Estimator< GUM_SCALAR >::Estimator(), and gum::Estimator< GUM_SCALAR >::setFromBN().

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◆ variableFromName()

template<typename GUM_SCALAR>
virtual const DiscreteVariable& gum::IBayesNet< GUM_SCALAR >::variableFromName ( const std::string &  name) const
pure virtual

Getter by name.

Exceptions
NotFoundif no such name exists in the graph.

Implements gum::DAGmodel.

Implemented in gum::BayesNet< GUM_SCALAR >, gum::BayesNet< double >, gum::BayesNetFragment< GUM_SCALAR >, gum::prm::ClassBayesNet< GUM_SCALAR >, and gum::prm::InstanceBayesNet< GUM_SCALAR >.

Referenced by gum::IBayesNet< double >::operator==().

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◆ variableNodeMap()

template<typename GUM_SCALAR>
virtual const VariableNodeMap& gum::IBayesNet< GUM_SCALAR >::variableNodeMap ( ) const
pure virtual

Member Data Documentation

◆ _dag


The documentation for this class was generated from the following files: