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Neural Variational Learning for Grounded Language Acquisition

20 July 2021
Nisha Pillai
Cynthia Matuszek
Francis Ferraro
    VLM
    SSL
    GAN
    DRL
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Abstract

We propose a learning system in which language is grounded in visual percepts without specific pre-defined categories of terms. We present a unified generative method to acquire a shared semantic/visual embedding that enables the learning of language about a wide range of real-world objects. We evaluate the efficacy of this learning by predicting the semantics of objects and comparing the performance with neural and non-neural inputs. We show that this generative approach exhibits promising results in language grounding without pre-specifying visual categories under low resource settings. Our experiments demonstrate that this approach is generalizable to multilingual, highly varied datasets.

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