STORM: Strategic Orchestration of Modalities for Rare Event Classification
- URL: http://arxiv.org/abs/2412.02805v1
- Date: Tue, 03 Dec 2024 20:17:39 GMT
- Title: STORM: Strategic Orchestration of Modalities for Rare Event Classification
- Authors: Payal Kamboj, Ayan Banerjee, Sandeep K. S. Gupta,
- Abstract summary: We introduce an entropy-based algorithm to solve the modality selection problem for rare event.
By selecting useful subset of modalities, our approach paves the way for more efficient AI-driven biomedical analyses.
- Score: 5.691753509745111
- License:
- Abstract: In domains such as biomedical, expert insights are crucial for selecting the most informative modalities for artificial intelligence (AI) methodologies. However, using all available modalities poses challenges, particularly in determining the impact of each modality on performance and optimizing their combinations for accurate classification. Traditional approaches resort to manual trial and error methods, lacking systematic frameworks for discerning the most relevant modalities. Moreover, although multi-modal learning enables the integration of information from diverse sources, utilizing all available modalities is often impractical and unnecessary. To address this, we introduce an entropy-based algorithm STORM to solve the modality selection problem for rare event. This algorithm systematically evaluates the information content of individual modalities and their combinations, identifying the most discriminative features essential for rare class classification tasks. Through seizure onset zone detection case study, we demonstrate the efficacy of our algorithm in enhancing classification performance. By selecting useful subset of modalities, our approach paves the way for more efficient AI-driven biomedical analyses, thereby advancing disease diagnosis in clinical settings.
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