AI RESEARCH
Investigating the Representation of Backchannels and Fillers in Fine-tuned Language Models
arXiv CS.CL
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ArXi:2509.20237v2 Announce Type: replace Backchannels and fillers are important linguistic expressions in dialogue, but often treated as 'noise' to be bypassed in modern transformer-based language models (LMs). Here, we study how they are represented in LMs using three fine-tuning strategies on three dialogue corpora in English and Japanese, in which backchannels and fillers are both preserved and annotated. This allows us to investigate how fine-tuning can help LMs learn these representations.