Information Leakage in Embedding Models
Congzheng Song, Ananth Raghunathan
Abstract
Embeddings are functions that map raw input data to low-dimensional vector representations, while preserving important semantic information about the inputs. Pre-training embeddings on a large amount of unlabeled data and fine-tuning them for downstream tasks is now a de facto standard in achieving state of the art learning in many domains.
Topics & Concepts
EmbeddingComputer scienceRaw dataLeakage (economics)Information leakageDe factoData miningArtificial intelligenceData modelingTheoretical computer scienceDatabaseProgramming languageLawEconomicsPolitical scienceMacroeconomicsComputer networkAdversarial Robustness in Machine LearningTopic ModelingPrivacy-Preserving Technologies in Data