LGDec 1, 2021

Inducing Causal Structure for Interpretable Neural Networks

arXiv:2112.00826v2108 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of making neural networks more interpretable by incorporating causal insights, which is incremental as it builds on existing methods for model alignment.

The authors tackled the problem of integrating known causal structures into neural networks to improve interpretability, introducing Interchange Intervention Training (IIT) which achieved the best results in experiments on vision, language, and inference tasks compared to multi-task training and data augmentation.

In many areas, we have well-founded insights about causal structure that would be useful to bring into our trained models while still allowing them to learn in a data-driven fashion. To achieve this, we present the new method of interchange intervention training (IIT). In IIT, we (1) align variables in a causal model (e.g., a deterministic program or Bayesian network) with representations in a neural model and (2) train the neural model to match the counterfactual behavior of the causal model on a base input when aligned representations in both models are set to be the value they would be for a source input. IIT is fully differentiable, flexibly combines with other objectives, and guarantees that the target causal model is a causal abstraction of the neural model when its loss is zero. We evaluate IIT on a structural vision task (MNIST-PVR), a navigational language task (ReaSCAN), and a natural language inference task (MQNLI). We compare IIT against multi-task training objectives and data augmentation. In all our experiments, IIT achieves the best results and produces neural models that are more interpretable in the sense that they more successfully realize the target causal model.

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