Litcius/Paper detail

Span-ConveRT: Few-shot Span Extraction for Dialog with Pretrained Conversational Representations

Samuel Coope, Tyler Farghly, Daniela Gerz, Ivan Vulić, Matthew Henderson

202044 citationsDOIOpen Access PDF

Abstract

We introduce Span-ConveRT, a light-weight model for dialog slot-filling which frames the task as a turn-based span extraction task. This formulation allows for a simple integration of conversational knowledge coded in large pretrained conversational models such as Con-veRT (Henderson et al., 2019a). We show that leveraging such knowledge in Span-ConveRT is especially useful for few-shot learning scenarios: we report consistent gains over 1) a span extractor that trains representations from scratch in the target domain, and 2) a BERTbased span extractor. In order to inspire more work on span extraction for the slot-filling task, we also release RESTAURANTS-8K, a new challenging data set of 8,198 utterances, compiled from actual conversations in the restaurant booking domain.

Topics & Concepts

Computer scienceSpan (engineering)Dialog boxTask (project management)ExtractorArtificial intelligenceDomain (mathematical analysis)Set (abstract data type)Dialog systemNatural language processingShot (pellet)Speech recognitionEngineeringProgramming languageWorld Wide WebProcess engineeringSystems engineeringMathematical analysisOrganic chemistryChemistryMathematicsCivil engineeringTopic ModelingSpeech and dialogue systemsNatural Language Processing Techniques