VIANA: character Value-enhanced Intensity Assessment via domain-informed Neural Architecture

arXiv cs.LG / 4/3/2026

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Key Points

  • The study proposes VIANA, a “tri-pillar” deep learning framework for predicting perceived odorant intensity by combining molecular topology (GCNs), semantic odor character embeddings (Principal Odor Map/POM), and biological dose-response logic (Hill’s law).
  • It argues that cross-domain knowledge transfer can harm performance via “information overload,” and shows that applying PCA to retain only the top 95% of semantic variance improves results through “signal distillation.”
  • VIANA reportedly achieves a peak R² of 0.996 with test MSE of 0.19, outperforming baseline structural models by better capturing saturation behavior, detection thresholds, and odor-character nuance.
  • The work positions VIANA as a domain-grounded approach to digital olfaction that bridges molecular informatics and human sensory perception for more realistic simulation.

Abstract

Predicting the perceived intensity of odorants remains a fundamental challenge in sensory science due to the complex, non-linear behavior of their response, as well as the difficulty in correlating molecular structure with human perception. While traditional deep learning models, such as Graph Convolutional Networks (GCNs), excel at capturing molecular topology, they often fail to account for the biological and perceptual context of olfaction. This study introduces VIANA, a novel "tri-pillar" framework that integrates structural graph theory, character value embeddings, and phenomenological behavior. This methodology systematically evaluates knowledge transfer across three distinct domains: molecular structure via GCNs, semantic odor character values via Principal Odor Map (POM) embeddings, and biological dose-response logic via Hill's law. We demonstrate that knowledge transfer is not inherently positive; rather, a balance must be maintained in the volume of information provided to the model. While raw semantic data led to "information overload" in domain-informed models, applying Principal Component Analysis (PCA) to distill the 95% most impactful semantic variance yielded a superior "signal distillation" effect. Results indicate that the synthesis of these three knowledge transfer pillars significantly outperforms baseline structural models, with VIANA achieving a peak R^2 of 0.996 and a test Mean Squared Error (MSE) of 0.19. In this context, VIANA successfully captures the physical ceiling of saturation, the sensitivity of detection thresholds, and the nuance of odor character value expression, providing a domain grounded simulation of the human olfactory experience. This research provides a robust framework for digital olfaction, effectively bridging the gap between molecular informatics and sensory perception.