Conditional Generation with a Question-Answering Blueprint

Author:

Narayan Shashi1,Maynez Joshua2,Amplayo Reinald Kim3,Ganchev Kuzman4,Louis Annie5,Huot Fantine6,Sandholm Anders7,Das Dipanjan8,Lapata Mirella9

Affiliation:

1. Google DeepMind, UK. shashinarayan@google.com

2. Google DeepMind, UK. joshuahm@google.com

3. Google DeepMind, UK. reinald@google.com

4. Google DeepMind, UK. kuzman@google.com

5. Google Research. annielouis@google.com

6. Google DeepMind, UK. fantinehuot@google.com

7. Google Research. sandholm@google.com

8. Google DeepMind, UK. dipanjand@google.com

9. Google DeepMind, UK. lapata@google.com

Abstract

AbstractThe ability to convey relevant and faithful information is critical for many tasks in conditional generation and yet remains elusive for neural seq-to-seq models whose outputs often reveal hallucinations and fail to correctly cover important details. In this work, we advocate planning as a useful intermediate representation for rendering conditional generation less opaque and more grounded. We propose a new conceptualization of text plans as a sequence of question-answer (QA) pairs and enhance existing datasets (e.g., for summarization) with a QA blueprint operating as a proxy for content selection (i.e., what to say) and planning (i.e., in what order). We obtain blueprints automatically by exploiting state-of-the-art question generation technology and convert input-output pairs into input-blueprint-output tuples. We develop Transformer-based models, each varying in how they incorporate the blueprint in the generated output (e.g., as a global plan or iteratively). Evaluation across metrics and datasets demonstrates that blueprint models are more factual than alternatives which do not resort to planning and allow tighter control of the generation output.

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

Reference99 articles.

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