Metadata-Version: 2.1
Name: mliv
Version: 0.0.1
Summary: machine learning for instrumental variable (IV) regression
Home-page: https://github.com/anpwu/mliv.git
Author: anpeng wu
Author-email: anpwu2019@gmail.com
Classifier: Programming Language :: Python
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Operating System :: OS Independent
Requires-Python: >=3.7
Description-Content-Type: text/markdown
License-File: LICENSE

# mliv


```python
from mliv.dataset.demand import gen_data
from mliv.utils import CausalDataset
gen_data()
data = CausalDataset('./Data/Demand/0.5_1.0_0.0_10000/1/')

from mliv.inference import Vanilla2SLS
from mliv.inference import Poly2SLS
from mliv.inference import NN2SLS
from mliv.inference import OneSIV
from mliv.inference import KernelIV
from mliv.inference import DualIV
from mliv.inference import DFL
from mliv.inference import AGMM
from mliv.inference import DeepGMM
from mliv.inference import DFIV
try:
    from mliv.inference import DeepIV
except:
    pass

for mod in [OneSIV,KernelIV,DualIV,DFL,AGMM,DeepGMM,DFIV,Vanilla2SLS,Poly2SLS,NN2SLS]:

    try:
        model = mod()
        model.config['num'] = 100
        model.config['epochs'] = 10
        model.fit(data)

        print(mod)
    except:
        print('Error: ...')

try:
    model = DeepIV()
    model.config['num'] = 100
    model.config['epochs'] = 10
    model.fit(data)

    print(mod)
except:
    print(f'Error: ...{mod}...')


```
