The Whole Truth and Nothing But the Truth: Faithful and Controllable Dialogue Response Generation with Dataflow Transduction and Constrained Decoding
In a real-world dialogue system, generated text must be truthful and informative while remaining fluent and adhering to a prescribed style. Satisfying these constraints simultaneously is difficult for the two predominant paradigms in language generation: neural language modeling and rule-based generation. We describe a hybrid architecture for dialogue response generation that combines the strengths of both paradigms. The first component of this architecture is a rule-based content selection model defined using a new formal framework called dataflow transduction, which uses declarative rules to transduce a dialogue agent’s actions and their results (represented as dataflow graphs) into context-free grammars representing the space of contextually acceptable responses. The second component is a constrained decoding procedure that uses these grammars to constrain the output of a neural language model, which selects fluent utterances. Our experiments show that this system outperforms both rule-based and learned approaches in human evaluations of fluency, relevance, and truthfulness.
- Date:
- Haut-parleurs:
- Hao Fang, Harsh Jhamtani
- Affiliation:
- Microsoft Research
-
-
Hao Fang
Principal Researcher
-
Harsh Jhamtani
Sr Researcher
-
-
Regardez suivant
-
Advances in Natural Language Generation for Indian Languages
Speakers:- Dr. Raj Dabre
-
-
Multilingual Evaluation of Generative AI (MEGA)
Speakers:- Kabir Ahuja,
- Stephanie Nyairo,
- Millicent Ochieng