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update docs
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Joaquin Amat committed May 5, 2024
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"cell_type": "markdown",
"metadata": {},
"source": [
"## Global Forecasting Models: Feature Selection\n",
"## Global Forecasting Models: Feature Selection"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"\n",
"`select_features_multiseries` function from the `skforecast.model_selection_multiseries` module is used to select the best subset of features (autoregressive and exogenous variables). This function is compatible with the feature selection methods implemented in the scikit-learn library. The following parameters are available:\n",
"\n",
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6 changes: 3 additions & 3 deletions mkdocs.yml
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- Input data: user_guides/input-data.ipynb
- Recursive multi-step forecasting: user_guides/autoregresive-forecaster.ipynb
- Direct multi-step forecasting: user_guides/direct-multi-step-forecasting.ipynb
- Independent multi-time series forecasting: user_guides/independent-multi-time-series-forecasting.ipynb
- Series with different lengths and different exogenous variables: user_guides/multi-series-with-different-length-and-different_exog.ipynb
- Dependent multivariate series forecasting: user_guides/dependent-multi-series-multivariate-forecasting.ipynb
- "Global Models : Independent multi-time series forecasting": user_guides/independent-multi-time-series-forecasting.ipynb
- "Global Models : Series with different lengths and different exogenous variables": user_guides/multi-series-with-different-length-and-different_exog.ipynb
- "Global Models : Dependent multivariate series forecasting": user_guides/dependent-multi-series-multivariate-forecasting.ipynb
- Deep learning Recurrent Neural Networks: user_guides/forecasting-with-deep-learning-rnn-lstm.ipynb
- ARIMA and SARIMAX forecasting: user_guides/forecasting-sarimax-arima.ipynb
- Foreasting baseline: user_guides/forecasting-baseline.ipynb
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