A B C D F G I L M N O P R S T U W
MXM-package | This is an R package that currently implements feature selection methods for identifying minimal, statistically-equivalent and equally-predictive feature subsets. In addition, two algorithms for constructing the skeleton of a Bayesian network are included. |
acc.mxm | Cross-Validation for SES |
acc_multinom.mxm | Cross-Validation for SES |
apply_ideq | Internal MXM Functions |
apply_ideq.temporal | Internal MXM Functions |
auc.mxm | Cross-Validation for SES |
beta.mxm | Cross-Validation for SES |
bic.fsreg | Variable selection in regression models with forward selection using BIC |
bic.glm.fsreg | Variable selection in generalised linear regression models with forward selection |
cat.ci | Internal MXM Functions |
censIndCR | Conditional independence test for survival data |
censIndWR | Conditional independence test for survival data |
ci.mxm | Cross-Validation for SES |
ciwr.mxm | Cross-Validation for SES |
compare_p_values | Internal MXM Functions |
condi | Internal MXM Functions |
condi.perm | Internal MXM Functions |
CondIndTests | MXM Conditional Independence Tests |
coxph.mxm | Cross-Validation for SES |
cv.ses | Cross-Validation for SES |
dag2eg | Transforms a DAG into an essential graph |
findAncestors | Returns and plots, if asked, the ancestors of a node (or variable) |
findDescendants | Returns and plots, if asked, the descendants of a node (or variable) |
fs.reg | Variable selection in regression models with forward selection |
glm.bsreg | Variable selection in generalised linear regression models with backward selection |
glm.fsreg | Variable selection in generalised linear regression models with forward selection |
glm.mxm | Cross-Validation for SES |
gSquare | G square conditional independence test for discrete data |
IdentifyEquivalence | Internal MXM Functions |
IdentifyEquivalence.temporal | Internal MXM Functions |
identifyTheEquivalent | Internal MXM Functions |
identifyTheEquivalent.temporal | Internal MXM Functions |
InternalMMPC | Internal MXM Functions |
InternalMMPC.temporal | Internal MXM Functions |
InternalSES | Internal MXM Functions |
InternalSES.temporal | Internal MXM Functions |
is.sepset | Internal MXM Functions |
lm.fsreg | Variable selection in linear regression models with forward selection |
lm.mxm | Cross-Validation for SES |
lmrob.mxm | Cross-Validation for SES |
max_min_assoc | Internal MXM Functions |
max_min_assoc.temporal | Internal MXM Functions |
mb | Returns and plots, if asked, the Markov blanket of a node (or variable). |
min_assoc | Internal MXM Functions |
min_assoc.temporal | Internal MXM Functions |
mmhc.skel | The skeleton of a Bayesian network produced by MMHC |
mmmb | mmmb: Feature selection algorithm for identifying multiple minimal, statistically-equivalent and equally-predictive feature signatures. |
MMPC | SES: Feature selection algorithm for identifying multiple minimal, statistically-equivalent and equally-predictive feature signatures. MMPC: Feature selection algorithm for identifying minimal feature subsets. |
MMPC.temporal | SES.temporal: Feature selection algorithm for identifying multiple minimal, statistically-equivalent and equally-predictive feature signatures. MMPC.temporal: Feature selection algorithm for identifying minimal feature subsets. |
MMPC.temporal.output | Class '"MMPC.temporal.output"' |
MMPC.temporal.output-class | Class '"MMPC.temporal.output"' |
MMPCoutput | Class '"MMPCoutput"' |
MMPCoutput-class | Class '"MMPCoutput"' |
model | Regression model(s) obtained from SES |
mse.mxm | Cross-Validation for SES |
multinom.mxm | Cross-Validation for SES |
nb.mxm | Cross-Validation for SES |
nbdev.mxm | Cross-Validation for SES |
nchoosekm | Internal MXM Functions |
nei | Returns and plots, if asked, the node(s) and their neighbour(s), if there are any. |
ordinal.mxm | Cross-Validation for SES |
ord_mae.mxm | Cross-Validation for SES |
pc.con | The skeleton of a Bayesian network produced by the PC algorithm |
pc.or | The orientations part of the PC algorithm. |
pc.skel | The skeleton of a Bayesian network produced by the PC algorithm |
permcor | Permutation based p-value for the Pearson correlation coefficient |
plot-method | Class '"MMPC.temporal.output"' |
plot-method | Class '"MMPCoutput"' |
plot-method | Class '"SES.temporal.output"' |
plot-method | Class '"SESoutput"' |
plota | Plot of an (un)directed graph |
pois.mxm | Cross-Validation for SES |
poisdev.mxm | Cross-Validation for SES |
proc_time-class | Internal MXM Functions |
rdag | G square conditional independence test for discrete data |
reg.fit | Regression modelling |
ridge.plot | Ridge regression |
ridge.reg | Ridge regression |
ridgereg.cv | Cross validation for the ridge regression |
rlm.mxm | Cross-Validation for SES |
rq.mxm | Cross-Validation for SES |
SES | SES: Feature selection algorithm for identifying multiple minimal, statistically-equivalent and equally-predictive feature signatures. MMPC: Feature selection algorithm for identifying minimal feature subsets. |
SES.temporal | SES.temporal: Feature selection algorithm for identifying multiple minimal, statistically-equivalent and equally-predictive feature signatures. MMPC.temporal: Feature selection algorithm for identifying minimal feature subsets. |
SES.temporal.output | Class '"SES.temporal.output"' |
SES.temporal.output-class | Class '"SES.temporal.output"' |
SESoutput | Class '"SESoutput"' |
SESoutput-class | Class '"SESoutput"' |
summary-method | Class '"MMPC.temporal.output"' |
summary-method | Class '"MMPCoutput"' |
summary-method | Class '"SES.temporal.output"' |
summary-method | Class '"SESoutput"' |
tc.plot | Plot of longitudinal data |
testIndBeta | Beta regression conditional independence test for proportions/percentage class dependent variables and mixed predictors |
testIndClogit | Conditional independence test based on conditional logistic regression for case control studies |
testIndFisher | Fisher and Spearman conditional independence test for continuous class variables |
testIndGLMM | Linear mixed models conditional independence test for longitudinal class variables |
testIndLogistic | Conditional independence test for binary, categorical or ordinal class variables |
testIndMVreg | Linear regression conditional independence test for continous univariate and multivariate response variables |
testIndNB | Regression conditional independence test for discrete (counts) class dependent variables |
testIndPois | Regression conditional independence test for discrete (counts) class dependent variables |
testIndReg | Linear regression conditional independence test for continous univariate and multivariate response variables |
testIndRQ | Linear regression conditional independence test for continous univariate and multivariate response variables |
testIndSpearman | Fisher and Spearman conditional independence test for continuous class variables |
testIndSpeedglm | Conditional independence test for continuous, binary and discrete (counts) variables with thousands of observations. |
testIndZIP | Regression conditional independence test for discrete (counts) class dependent variables |
transitiveClosure | Returns the transitive closure of a graph. |
undir.path | Undirected path(s) between two nodes. |
univariateScore | Internal MXM Functions |
univariateScore.temporal | Internal MXM Functions |
weibreg.mxm | Cross-Validation for SES |