Topological Interpretability for Deep-Learning
- URL: http://arxiv.org/abs/2305.08642v2
- Date: Thu, 11 Apr 2024 19:00:41 GMT
- Title: Topological Interpretability for Deep-Learning
- Authors: Adam Spannaus, Heidi A. Hanson, Lynne Penberthy, Georgia Tourassi,
- Abstract summary: Deep learning (DL) models cannot quantify the certainty of their predictions.
This work presents a method to infer prominent features in two DL classification models trained on clinical and non-clinical text.
- Score: 0.30806551485143496
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the growing adoption of AI-based systems across everyday life, the need to understand their decision-making mechanisms is correspondingly increasing. The level at which we can trust the statistical inferences made from AI-based decision systems is an increasing concern, especially in high-risk systems such as criminal justice or medical diagnosis, where incorrect inferences may have tragic consequences. Despite their successes in providing solutions to problems involving real-world data, deep learning (DL) models cannot quantify the certainty of their predictions. These models are frequently quite confident, even when their solutions are incorrect. This work presents a method to infer prominent features in two DL classification models trained on clinical and non-clinical text by employing techniques from topological and geometric data analysis. We create a graph of a model's feature space and cluster the inputs into the graph's vertices by the similarity of features and prediction statistics. We then extract subgraphs demonstrating high-predictive accuracy for a given label. These subgraphs contain a wealth of information about features that the DL model has recognized as relevant to its decisions. We infer these features for a given label using a distance metric between probability measures, and demonstrate the stability of our method compared to the LIME and SHAP interpretability methods. This work establishes that we may gain insights into the decision mechanism of a DL model. This method allows us to ascertain if the model is making its decisions based on information germane to the problem or identifies extraneous patterns within the data.
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