WIKINDX

WIKINDX Resources

Kucukkaya, I. E., Sahin, U., & Toraman, C. ARC-NLP at PAN 2023: Transition-Focused Natural Language Inference for Writing Style Detection. 
Resource type: Journal Article
BibTeX citation key: anon.92
View all bibliographic details
Categories: General
Creators: Kucukkaya, Sahin, Toraman
Attachments   URLs   https://www.semant ... c3991523f44c5bbb47
Abstract
The task of multi-author writing style detection aims at finding any positions of writing style change in a given text document by focusing on transitions between paragraphs while truncating input tokens for the task. The task of multi-author writing style detection aims at finding any positions of writing style change in a given text document. We formulate the task as a natural language inference problem where two consecutive paragraphs are paired. Our approach focuses on transitions between paragraphs while truncating input tokens for the task. As backbone models, we employ different Transformer-based encoders with warmup phase during training. We submit the model version that outperforms baselines and other proposed model versions in our experiments. For the easy and medium setups, we submit transition-focused natural language inference based on DeBERTa with warmup training, and the same model without transition for the hard setup.
  
WIKINDX 6.11.0 | Total resources: 209 | Username: -- | Bibliography: WIKINDX Master Bibliography | Style: American Psychological Association (APA)