Explaining Visual Models by Causal Attribution
Title | Explaining Visual Models by Causal Attribution |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Parafita, Álvaro, Vitrià, Jordi |
Conference Name | 2019 IEEE/CVF International Conference on Computer Vision Workshop (ICCVW) |
Date Published | Oct. 2019 |
Publisher | IEEE |
ISBN Number | 978-1-7281-5023-9 |
Keywords | attribution, Causal, causal attribution, causal counterfactuals, composability, Computational modeling, counterfactuals, data distribution, data handling, Data models, deep, explanation, Face, factor alteration, feature extraction, Generators, Human Behavior, image generative models, intervened causal model, learning, machine learning, Metrics, pubcrawl, Rain, visual models, visualization |
Abstract | Model explanations based on pure observational data cannot compute the effects of features reliably, due to their inability to estimate how each factor alteration could affect the rest. We argue that explanations should be based on the causal model of the data and the derived intervened causal models, that represent the data distribution subject to interventions. With these models, we can compute counterfactuals, new samples that will inform us how the model reacts to feature changes on our input. We propose a novel explanation methodology based on Causal Counterfactuals and identify the limitations of current Image Generative Models in their application to counterfactual creation. |
URL | https://ieeexplore.ieee.org/document/9022607/ |
DOI | 10.1109/ICCVW.2019.00512 |
Citation Key | parafita_explaining_2019 |
- factor alteration
- visualization
- visual models
- Rain
- pubcrawl
- Metrics
- machine learning
- learning
- intervened causal model
- image generative models
- Human behavior
- Generators
- feature extraction
- attribution
- Face
- explanation
- deep
- Data models
- data handling
- data distribution
- counterfactuals
- Computational modeling
- composability
- causal counterfactuals
- causal attribution
- Causal