Exploring Versatile Generative Language Model Via Parameter-Efficient Transfer Learning
Zhaojiang Lin, Andrea Madotto, Pascale Fung
Abstract
Fine-tuning pre-trained generative language models to down-stream language generation tasks has shown promising results. However, this comes with the cost of having a single, large model for each task, which is not ideal in low-memory/power scenarios (e.g., mobile). In this paper, we propose an effective way to fine-tune multiple down-stream generation tasks simultaneously using a single, large pretrained model. The experiments on five diverse language generation tasks show that by just using an additional 2-3% parameters for each task, our model can maintain or even improve the performance of fine-tuning the whole model 1 .
Topics & Concepts
Computer scienceLanguage modelTask (project management)Generative grammarGenerative modelArtificial intelligenceIdeal (ethics)Transfer of learningTransfer (computing)Machine learningNatural language processingParallel computingPhilosophyEconomicsEpistemologyManagementTopic ModelingNatural Language Processing TechniquesSpeech Recognition and Synthesis