LGCVMay 27, 2022

Neural Basis Models for Interpretability

Meta AI
arXiv:2205.14120v475 citationsh-index: 34Has Code
Originality Highly original
AI Analysis

This addresses the need for interpretable models in real-world applications, offering a scalable solution with incremental improvements over existing GAMs.

The paper tackles the problem of interpretability in machine learning by proposing Neural Basis Models (NBMs), a new subfamily of Generalized Additive Models that use basis decomposition to improve scalability and accuracy, achieving state-of-the-art results on tabular and image datasets.

Due to the widespread use of complex machine learning models in real-world applications, it is becoming critical to explain model predictions. However, these models are typically black-box deep neural networks, explained post-hoc via methods with known faithfulness limitations. Generalized Additive Models (GAMs) are an inherently interpretable class of models that address this limitation by learning a non-linear shape function for each feature separately, followed by a linear model on top. However, these models are typically difficult to train, require numerous parameters, and are difficult to scale. We propose an entirely new subfamily of GAMs that utilizes basis decomposition of shape functions. A small number of basis functions are shared among all features, and are learned jointly for a given task, thus making our model scale much better to large-scale data with high-dimensional features, especially when features are sparse. We propose an architecture denoted as the Neural Basis Model (NBM) which uses a single neural network to learn these bases. On a variety of tabular and image datasets, we demonstrate that for interpretable machine learning, NBMs are the state-of-the-art in accuracy, model size, and, throughput and can easily model all higher-order feature interactions. Source code is available at https://github.com/facebookresearch/nbm-spam.

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