CoLLIE: Continual Learning of Language Grounding from Language-Image
Embeddings
- URL: http://arxiv.org/abs/2111.07993v1
- Date: Mon, 15 Nov 2021 18:54:58 GMT
- Title: CoLLIE: Continual Learning of Language Grounding from Language-Image
Embeddings
- Authors: Gabriel Skantze and Bram Willemsen
- Abstract summary: CoLLIE is a model for continual learning of how language is grounded in vision.
It learns a transformation function that adjusts the language embeddings when needed to accommodate new language use.
We show that CoLLIE can efficiently learn and generalize from only a few examples.
- Score: 2.8478710949588284
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents CoLLIE: a simple, yet effective model for continual
learning of how language is grounded in vision. Given a pre-trained multimodal
embedding model, where language and images are projected in the same semantic
space (in this case CLIP by OpenAI), CoLLIE learns a transformation function
that adjusts the language embeddings when needed to accommodate new language
use. Unlike traditional few-shot learning, the model does not just learn new
classes and labels, but can also generalize to similar language use. We verify
the model's performance on two different tasks of continual learning and show
that it can efficiently learn and generalize from only a few examples, with
little interference with the model's original zero-shot performance.
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