GOBNILP Run started at: 2025-05-07 12:14:47.598217
Command: /home/yryang/miniconda3/bin/python3 /home/yryang/Bayesian_Network/gobnilp_bn/rungobnilp.py /home/yryang/Bayesian_Network/gobnilp_bn/data/Data_25_20000_0.5_0.dat --output_stem output --score GaussianBIC --palim 3 --nsols 1 --verbose 1

C ADTree implementation unavailable, so learning with discrete data may be slow.
ADTree implementation is here: https://bitbucket.org/jamescussens/pyadtree
No module named 'adtree'
Set parameter LicenseID to value 2623789
Set parameter PreCrush to value 1
Set parameter CutPasses to value 100000
Set parameter GomoryPasses to value 100000
Set parameter MIPFocus to value 2
Set parameter ZeroHalfCuts to value 2
Set parameter MIPGap to value 0
Set parameter MIPGapAbs to value 0
95 family variables declared
600 arrow variables declared
300 adj variables declared
25 constraints insisting on exactly one parent set for each variable
10 set packing constraints declared
98 constraints linking arrows to family variables declared
551 arrow variables removed
26 constraints linking arrows to adjs declared
274 adjacency variables removed
(Lazy) "cluster" constraints in use
**********
BN has score -689978.18
**********
0<- -30530.659649874142
1<- -31741.00414129565
10<-16,24 -28601.91993300269
16<- -28136.224940503424
24<- -29164.69046898839
11<- -24271.316878317346
12<- -22203.49068529537
13<- -27234.506527925634
14<- -24705.322281717
15<- -30448.4555632815
17<-18 -18649.8071027863
18<- -41716.13024967563
19<-4 -13947.071652336004
4<- -36545.334694885874
2<-6 -21469.92345476497
6<-20,3 -27837.50765465713
20<- -34900.71876937075
21<-0,1,17 -30362.265961475998
22<- -23442.915705733474
23<-19 -28107.614413050516
3<-9 -28988.71802496567
9<-8 -29568.809482733235
5<- -22645.229283970482
7<-22 -29646.077798852806
8<- -25112.466196170924
**********
bnlearn modelstring = 
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GOBNILP Run completed at: 2025-05-07 12:14:49.370033
