Interpretable Machine Learning Using Partial Linear Models
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DOI: 10.1111/obes.12592
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- Emmanuel Flachaire & Sullivan Hué & Sébastien Laurent & Gilles Hacheme, 2023. "Interpretable Machine Learning Using Partial Linear Models," Post-Print hal-04529011, HAL.
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