Feature Interaction
Feature interaction research focuses on understanding how multiple input features jointly influence model predictions, aiming to improve model accuracy, interpretability, and efficiency. Current research emphasizes developing methods to detect and quantify these interactions, often employing techniques like Shapley values, transformers, and graph-based approaches within various model architectures (e.g., CNNs, tree-based models). This work is significant because accurately modeling feature interactions is crucial for enhancing the performance and trustworthiness of machine learning models across diverse applications, from recommender systems and medical image analysis to autonomous driving and scientific discovery.
Papers
SPINEX: Similarity-based Predictions and Explainable Neighbors Exploration for Regression and Classification Tasks in Machine Learning
M. Z. Naser, M. K. albashiti, A. Z. Naser
Decomposing Global Feature Effects Based on Feature Interactions
Julia Herbinger, Marvin N. Wright, Thomas Nagler, Bernd Bischl, Giuseppe Casalicchio