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Methods/NAM

NAM

Neural Additive Model

GeneralIntroduced 200018 papers
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Description

Neural Additive Models (NAMs) make restrictions on the structure of neural networks, which yields a family of models that are inherently interpretable while suffering little loss in prediction accuracy when applied to tabular data. Methodologically, NAMs belong to a larger model family called Generalized Additive Models (GAMs).

NAMs learn a linear combination of networks that each attend to a single input feature: each f_if\_{i}f_i in the traditional GAM formulationis parametrized by a neural network. These networks are trained jointly using backpropagation and can learn arbitrarily complex shape functions. Interpreting NAMs is easy as the impact of a feature on the prediction does not rely on the other features and can be understood by visualizing its corresponding shape function (e.g., plotting f_i(x_i)f\_{i}\left(x\_{i}\right)f_i(x_i) vs. x_ix\_{i}x_i).

Papers Using This Method

NAM: A Normalization Attention Model for Personalized Product Search In Fliggy2025-06-10Minimally Supervised Hierarchical Domain Intent Learning for CRS2025-05-04MT-NAM: An Efficient and Adaptive Model for Epileptic Seizure Detection2025-03-11Advancing NAM-to-Speech Conversion with Novel Methods and the MultiNAM Dataset2024-12-25Towards Improving NAM-to-Speech Synthesis Intelligibility using Self-Supervised Speech Models2024-07-26Explainable Automatic Grading with Neural Additive Models2024-05-01Gaussian Process Neural Additive Models2024-02-19No-Service Rail Surface Defect Segmentation via Normalized Attention and Dual-scale Interaction2023-06-27Minimizing Energy Consumption in MU-MIMO via Antenna Muting by Neural Networks with Asymmetric Loss2023-06-08Improving Neural Additive Models with Bayesian Principles2023-05-26Neural Attention Memory2023-02-18Extending the Neural Additive Model for Survival Analysis with EHR Data2022-11-15Higher-order Neural Additive Models: An Interpretable Machine Learning Model with Feature Interactions2022-09-30Neural Additive Models for Nowcasting2022-05-20Physics to the Rescue: Deep Non-line-of-sight Reconstruction for High-speed Imaging2022-05-03Sparse Neural Additive Model: Interpretable Deep Learning with Feature Selection via Group Sparsity2022-02-25SurvNAM: The machine learning survival model explanation2021-04-18Neural Additive Models: Interpretable Machine Learning with Neural Nets2020-04-29