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Research1 min read

Test Multitreatment

Automated conversion of test-multitreatment.ipynb

Result
user_idx1x2t1t2y
000.3295331.8996731015.022716
11-0.393598-0.905984015.393389
22-1.519506-1.196708107.450544
330.5935990.9655851013.244710
44-1.3952650.968409008.198693
Result

MultiCausalData(df= user_id y x1 x2 t1 t2 0 0 15.022716 0.329533 1.899673 1 0 1 1 5.393389 -0.393598 -0.905984 0 1 2 2 7.450544 -1.519506 -1.196708 1 0 3 3 13.244710 0.593599 0.965585 1 0 4 4 8.198693 -1.395265 0.968409 0 0 .. ... ... ... ... .. .. 995 995 10.520261 0.067139 0.228348 0 0 996 996 7.888513 -0.399725 -0.149097 1 1 997 997 9.764297 -0.835026 0.730775 0 0 998 998 11.690357 -0.602435 -0.525958 1 0 999 999 9.104862 1.444279 -0.691310 0 1

[1000 rows x 6 columns], outcome_name='y', treatment_names=['t1', 't2'], confounders_names=['x1', 'x2'], user_id_name='user_id')