Many Sparse
Many Sparse research focuses on developing efficient methods for handling sparse data and models, primarily aiming to reduce computational costs and memory consumption while maintaining or improving performance. Current efforts concentrate on sparse neural network architectures (including Mixture-of-Experts models and various pruning techniques), sparse attention mechanisms in transformers, and sparse representations for various data types (e.g., point clouds, images). This work is significant for advancing machine learning applications in resource-constrained environments and enabling the scaling of large models to previously intractable sizes and complexities.
Papers
Forecasting with Sparse but Informative Variables: A Case Study in Predicting Blood Glucose
Harry Rubin-Falcone, Joyce Lee, Jenna Wiens
Leveraging sparse and shared feature activations for disentangled representation learning
Marco Fumero, Florian Wenzel, Luca Zancato, Alessandro Achille, Emanuele Rodolà, Stefano Soatto, Bernhard Schölkopf, Francesco Locatello