Interactive Visualization
Interactive visualization aims to enhance understanding and analysis of complex data through dynamic, user-controlled visual representations. Current research emphasizes developing tools tailored to specific data types (e.g., medical images, genomic data, textual narratives) and incorporating advanced techniques like machine learning models (e.g., variational autoencoders, transformers) for data processing and feature extraction to improve visualization clarity and interpretability. This field is crucial for making complex scientific findings accessible, facilitating model explainability in machine learning, and enabling more effective data-driven decision-making across diverse domains.
Papers
Affective Medical Estimation and Decision Making via Visualized Learning and Deep Learning
Mohammad Eslami, Solale Tabarestani, Ehsan Adeli, Glyn Elwyn, Tobias Elze, Mengyu Wang, Nazlee Zebardast, Nassir Navab, Malek Adjouadi
Visualization of Decision Trees based on General Line Coordinates to Support Explainable Models
Alex Worland, Sridevi Wagle, Boris Kovalerchuk