Graphical Independence Networks


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Documentation for package ‘gRain’ version 1.4.1

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A B C E F G I L M N O P Q R S U V

-- A --

absorbEvidence Set, update and remove evidence.
andtab Conditional probability tables based on logical dependencies
andtable Conditional probability tables based on logical dependencies
as.data.frame.grain_evidence Evidence objects

-- B --

booltab Conditional probability tables based on logical dependencies

-- C --

chest Chest clinic example
chest_cpt Chest clinic example
compile.cpt_grain Compile a graphical independence network (a Bayesian network)
compile.grain Compile a graphical independence network (a Bayesian network)
compile.pot_grain Compile a graphical independence network (a Bayesian network)
compileCPT Compile conditional probability tables / cliques potentials.
compilePOT Compile conditional probability tables / cliques potentials.
compile_cpt Compile conditional probability tables / cliques potentials.
compile_pot Compile conditional probability tables / cliques potentials.
components_extract Extract conditional probabilities and clique potentials from data.
components_gather Compile conditional probability tables / cliques potentials.
compute_p_evidence Propagate a graphical independence network (a Bayesian network)
cpt Create conditional probability tables (CPTs)
cptable Create conditional probability tables (CPTs)

-- E --

evidence Set, update and remove evidence.
evidence.grain Set, update and remove evidence.
evidence<- Set, update and remove evidence.
evidence<-.grain Set, update and remove evidence.
evidence_object Evidence objects
extractCPT Extract conditional probabilities and clique potentials from data.
extractMARG Extract conditional probabilities and clique potentials from data.
extractPOT Extract conditional probabilities and clique potentials from data.
extract_cpt Extract conditional probabilities and clique potentials from data.
extract_marg Extract conditional probabilities and clique potentials from data.
extract_pot Extract conditional probabilities and clique potentials from data.

-- F --

finding Set, retrieve, and retract finding in Bayesian network.

-- G --

generics gRain generics
getEvidence Set, update and remove evidence.
getFinding Set, retrieve, and retract finding in Bayesian network.
get_superset_list Get superset for each element in a list
grain Graphical Independence Network
grain-main Graphical Independence Network
grain-simulate Simulate from an independence network
grain.CPTspec Graphical Independence Network
grain.cpt_spec Graphical Independence Network
grain.dModel Graphical Independence Network
grain.igraph Graphical Independence Network
grain.pot_spec Graphical Independence Network
grain_compile Compile a graphical independence network (a Bayesian network)
grain_evidence Set, update and remove evidence.
grain_joint_evidence Set joint evidence in grain objects
grain_predict Make predictions from a probabilistic network
grain_propagate Propagate a graphical independence network (a Bayesian network)
grass Wet grass example
grass_cpt Wet grass example

-- I --

is.null_evi Evidence objects
isCompiled gRain generics
isCompiled<- gRain generics
isPropagated gRain generics
isPropagated<- gRain generics

-- L --

load-save-hugin Load and save Hugin net files
loadHuginNet Load and save Hugin net files
logical Conditional probability tables based on logical dependencies

-- M --

marg2pot Extract conditional probabilities and clique potentials from data.
mendel Mendelian segregation

-- N --

new_evi Evidence objects
new_jev Set joint evidence in grain objects
nodeNames gRain generics
nodeNames.grain gRain generics
nodeStates gRain generics
nodeStates.grain gRain generics

-- O --

ortab Conditional probability tables based on logical dependencies
ortable Conditional probability tables based on logical dependencies

-- P --

parse_cpt Compile conditional probability tables / cliques potentials.
parse_cpt, Compile conditional probability tables / cliques potentials.
parse_cpt.default Compile conditional probability tables / cliques potentials.
parse_cpt.xtabs, Compile conditional probability tables / cliques potentials.
pEvidence Set, update and remove evidence.
pFinding Set, retrieve, and retract finding in Bayesian network.
pot2marg Extract conditional probabilities and clique potentials from data.
predict.grain Make predictions from a probabilistic network
print.grain_evidence Evidence objects
print.grain_joint_evidence Set joint evidence in grain objects
propagate.grain Propagate a graphical independence network (a Bayesian network)
propagateLS Propagate a graphical independence network (a Bayesian network)
propagateLS__ Propagate a graphical independence network (a Bayesian network)

-- Q --

qgrain Query a network
querygrain Query a network
querygrain.grain Query a network

-- R --

repeatPattern Create repeated patterns in Bayesian networks
repeat_pattern Create repeated patterns in Bayesian networks
replace-cpt Replace CPTs in Bayesian network
replaceCPT Replace CPTs in Bayesian network
replaceCPT.cpt_grain Replace CPTs in Bayesian network
retractEvidence Set, update and remove evidence.
retractFinding Set, retrieve, and retract finding in Bayesian network.
retractJEvidence Set joint evidence in grain objects
rip.grain gRain generics

-- S --

saveHuginNet Load and save Hugin net files
setdiff_evi Evidence objects
setEvidence Set, update and remove evidence.
setFinding Set, retrieve, and retract finding in Bayesian network.
setJEvidence Set joint evidence in grain objects
simplify_query Simplify output query to a Bayesian network
simulate.grain Simulate from an independence network
subset.grain_evidence Evidence objects

-- U --

union_evi Evidence objects
universe gRain generics
universe.grain gRain generics

-- V --

varNames.grainEvidence_ gRain generics
varNames.grain_evidence Evidence objects
vpar.cpt_grain gRain generics
vpar.cpt_spec gRain generics