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Generalizing Neural Additive Models via Statistical Multimodal Analysis

Publication ,  Journal Article
Kim, YK; Matías Di Martino, J; Sapiro, G
Published in: Transactions on Machine Learning Research
January 1, 2024

Interpretable models are gaining increasing attention in the machine learning community, and significant progress is being made to develop simple, interpretable, yet powerful deep learning approaches. Generalized Additive Models (GAM) and Neural Additive Models (NAM) are prime examples. Despite these methods’ great potential and popularity in critical applications, e.g., medical applications, they fail to generalize to distributions with more than one mode (multimodal1). The main reason behind this limitation is that these "all-fit-one" models collapse multiple relationships by being forced to fit the data unimodally. We address this critical limitation by proposing interpretable multimodal network frameworks capable of learning a Mixture of Neural Additive Models (MNAM). The proposed MNAM learns relationships between input features and outputs in a multimodal fashion and assigns a probability to each mode. The proposed method shares similarities with Mixture Density Networks (MDN) while keeping the interpretability that characterizes GAM and NAM. We demonstrate how the proposed MNAM balances between rich representations and interpretability with numerous empirical observations and pedagogical studies. We present and discuss different training alternatives and provided extensive practical evaluation to assess the proposed framework. The code is available at https://github.com/youngkyungkim93/MNAM.

Duke Scholars

Published In

Transactions on Machine Learning Research

EISSN

2835-8856

Publication Date

January 1, 2024

Volume

2024
 

Citation

APA
Chicago
ICMJE
MLA
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Kim, Y. K., Matías Di Martino, J., & Sapiro, G. (2024). Generalizing Neural Additive Models via Statistical Multimodal Analysis. Transactions on Machine Learning Research, 2024.
Kim, Y. K., J. Matías Di Martino, and G. Sapiro. “Generalizing Neural Additive Models via Statistical Multimodal Analysis.” Transactions on Machine Learning Research 2024 (January 1, 2024).
Kim YK, Matías Di Martino J, Sapiro G. Generalizing Neural Additive Models via Statistical Multimodal Analysis. Transactions on Machine Learning Research. 2024 Jan 1;2024.
Kim, Y. K., et al. “Generalizing Neural Additive Models via Statistical Multimodal Analysis.” Transactions on Machine Learning Research, vol. 2024, Jan. 2024.
Kim YK, Matías Di Martino J, Sapiro G. Generalizing Neural Additive Models via Statistical Multimodal Analysis. Transactions on Machine Learning Research. 2024 Jan 1;2024.

Published In

Transactions on Machine Learning Research

EISSN

2835-8856

Publication Date

January 1, 2024

Volume

2024