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Main Authors: Malafaia, Mafalda, Schlender, Thalea, Bosman, Peter A. N., Alderliesten, Tanja
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.12183
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author Malafaia, Mafalda
Schlender, Thalea
Bosman, Peter A. N.
Alderliesten, Tanja
author_facet Malafaia, Mafalda
Schlender, Thalea
Bosman, Peter A. N.
Alderliesten, Tanja
contents In the health domain, decisions are often based on different data modalities. Thus, when creating prediction models, multimodal fusion approaches that can extract and combine relevant features from different data modalities, can be highly beneficial. Furthermore, it is important to understand how each modality impacts the final prediction, especially in high-stake domains, so that these models can be used in a trustworthy and responsible manner. We propose MultiFIX: a new interpretability-focused multimodal data fusion pipeline that explicitly induces separate features from different data types that can subsequently be combined to make a final prediction. An end-to-end deep learning architecture is used to train a predictive model and extract representative features of each modality. Each part of the model is then explained using explainable artificial intelligence techniques. Attention maps are used to highlight important regions in image inputs. Inherently interpretable symbolic expressions, learned with GP-GOMEA, are used to describe the contribution of tabular inputs. The fusion of the extracted features to predict the target label is also replaced by a symbolic expression, learned with GP-GOMEA. Results on synthetic problems demonstrate the strengths and limitations of MultiFIX. Lastly, we apply MultiFIX to a publicly available dataset for the detection of malignant skin lesions.
format Preprint
id arxiv_https___arxiv_org_abs_2402_12183
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MultiFIX: An XAI-friendly feature inducing approach to building models from multimodal data
Malafaia, Mafalda
Schlender, Thalea
Bosman, Peter A. N.
Alderliesten, Tanja
Artificial Intelligence
In the health domain, decisions are often based on different data modalities. Thus, when creating prediction models, multimodal fusion approaches that can extract and combine relevant features from different data modalities, can be highly beneficial. Furthermore, it is important to understand how each modality impacts the final prediction, especially in high-stake domains, so that these models can be used in a trustworthy and responsible manner. We propose MultiFIX: a new interpretability-focused multimodal data fusion pipeline that explicitly induces separate features from different data types that can subsequently be combined to make a final prediction. An end-to-end deep learning architecture is used to train a predictive model and extract representative features of each modality. Each part of the model is then explained using explainable artificial intelligence techniques. Attention maps are used to highlight important regions in image inputs. Inherently interpretable symbolic expressions, learned with GP-GOMEA, are used to describe the contribution of tabular inputs. The fusion of the extracted features to predict the target label is also replaced by a symbolic expression, learned with GP-GOMEA. Results on synthetic problems demonstrate the strengths and limitations of MultiFIX. Lastly, we apply MultiFIX to a publicly available dataset for the detection of malignant skin lesions.
title MultiFIX: An XAI-friendly feature inducing approach to building models from multimodal data
topic Artificial Intelligence
url https://arxiv.org/abs/2402.12183