Open In Colab

GAMINet Regression

Installation

# To install the required package, use the following command:
# !pip install modeva

Authentication

# To get authentication, use the following command: (To get full access please replace the token to your own token)
# from modeva.utils.authenticate import authenticate
# authenticate(auth_code='eaaa4301-b140-484c-8e93-f9f633c8bacb')

Import required modules

from modeva import DataSet
from modeva import TestSuite
from modeva.models import MoGAMINetRegressor

Load and prepare dataset

ds = DataSet()
ds.load(name="BikeSharing")
ds.set_random_split()
ds.set_target("cnt")

ds.scale_numerical(features=("cnt",), method="log1p")
ds.scale_numerical(method="minmax")
ds.preprocess()

Train model

model = MoGAMINetRegressor(random_state=0)
model.fit(ds.train_x, ds.train_y.ravel())
MoGAMINetRegressor(device='cpu', name='MoGAMINetRegressor')
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Basic accuracy analysis

ts = TestSuite(ds, model)
results = ts.diagnose_accuracy_table()
results.table
MSE MAE R2
train 0.002645 0.035548 0.949459
test 0.002812 0.036664 0.946704
GAP 0.000167 0.001116 -0.002755


Feature importance analysis

results = ts.interpret_fi()
results.plot()


Local feature importance analysis

results = ts.interpret_local_fi(sample_index=1, centered=True)
results.plot()


Another sample in train set

results = ts.interpret_local_ei(dataset='train', sample_index=1)
results.plot()


Effects interpretation

For numerical feature

results = ts.interpret_effects(features="hr")
results.plot()


For categorical feature

results = ts.interpret_effects(features="yr")
results.plot()


For 2 features

results = ts.interpret_effects(features=("atemp", "hr"))
results.plot()


Total running time of the script: (0 minutes 42.998 seconds)

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