vec2text with Round-Trip Translations
We investigate models that can generate arbitrary natural language text (e.g. all English sentences) from a bounded, convex and well-behaved control space. We call them universal vec2text models. Such models would allow making semantic decisions in the vector space (e.g. via reinforcement learning)...
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Zusammenfassung: | We investigate models that can generate arbitrary natural language text (e.g.
all English sentences) from a bounded, convex and well-behaved control space.
We call them universal vec2text models. Such models would allow making semantic
decisions in the vector space (e.g. via reinforcement learning) while the
natural language generation is handled by the vec2text model. We propose four
desired properties: universality, diversity, fluency, and semantic structure,
that such vec2text models should possess and we provide quantitative and
qualitative methods to assess them. We implement a vec2text model by adding a
bottleneck to a 250M parameters Transformer model and training it with an
auto-encoding objective on 400M sentences (10B tokens) extracted from a massive
web corpus. We propose a simple data augmentation technique based on round-trip
translations and show in extensive experiments that the resulting vec2text
model surprisingly leads to vector spaces that fulfill our four desired
properties and that this model strongly outperforms both standard and denoising
auto-encoders. |
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DOI: | 10.48550/arxiv.2209.06792 |