Learning Interpretable Queries for Explainable Image Classification with Information Pursuit (2312.11548v1)
Abstract: Information Pursuit (IP) is an explainable prediction algorithm that greedily selects a sequence of interpretable queries about the data in order of information gain, updating its posterior at each step based on observed query-answer pairs. The standard paradigm uses hand-crafted dictionaries of potential data queries curated by a domain expert or a LLM after a human prompt. However, in practice, hand-crafted dictionaries are limited by the expertise of the curator and the heuristics of prompt engineering. This paper introduces a novel approach: learning a dictionary of interpretable queries directly from the dataset. Our query dictionary learning problem is formulated as an optimization problem by augmenting IP's variational formulation with learnable dictionary parameters. To formulate learnable and interpretable queries, we leverage the latent space of large vision and LLMs like CLIP. To solve the optimization problem, we propose a new query dictionary learning algorithm inspired by classical sparse dictionary learning. Our experiments demonstrate that learned dictionaries significantly outperform hand-crafted dictionaries generated with LLMs.
- Stefan Kolek (7 papers)
- Aditya Chattopadhyay (8 papers)
- Kwan Ho Ryan Chan (15 papers)
- Hector Andrade-Loarca (7 papers)
- Gitta Kutyniok (120 papers)
- Réne Vidal (1 paper)