CLApr 29, 2020

Towards Transparent and Explainable Attention Models

arXiv:2004.14243v11029 citationsHas Code
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This work addresses the need for more interpretable attention models in NLP, offering incremental improvements to enhance transparency and explainability for researchers and practitioners.

The paper tackles the problem that current attention mechanisms in LSTM-based encoders fail to provide faithful or plausible explanations for model predictions, due to high conicity in hidden representations. It proposes a modified LSTM cell with a diversity-driven training objective, showing that the resulting attention distributions offer more transparency, better correlate with gradient-based methods, and are rated as plausible in human evaluations.

Recent studies on interpretability of attention distributions have led to notions of faithful and plausible explanations for a model's predictions. Attention distributions can be considered a faithful explanation if a higher attention weight implies a greater impact on the model's prediction. They can be considered a plausible explanation if they provide a human-understandable justification for the model's predictions. In this work, we first explain why current attention mechanisms in LSTM based encoders can neither provide a faithful nor a plausible explanation of the model's predictions. We observe that in LSTM based encoders the hidden representations at different time-steps are very similar to each other (high conicity) and attention weights in these situations do not carry much meaning because even a random permutation of the attention weights does not affect the model's predictions. Based on experiments on a wide variety of tasks and datasets, we observe attention distributions often attribute the model's predictions to unimportant words such as punctuation and fail to offer a plausible explanation for the predictions. To make attention mechanisms more faithful and plausible, we propose a modified LSTM cell with a diversity-driven training objective that ensures that the hidden representations learned at different time steps are diverse. We show that the resulting attention distributions offer more transparency as they (i) provide a more precise importance ranking of the hidden states (ii) are better indicative of words important for the model's predictions (iii) correlate better with gradient-based attribution methods. Human evaluations indicate that the attention distributions learned by our model offer a plausible explanation of the model's predictions. Our code has been made publicly available at https://github.com/akashkm99/Interpretable-Attention

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