This repository contains materials for the NAACL 2021 paper Modeling Framing in Immigration Discourse on Social Media.
-
dataset.zip
contains the full set of tweet IDs used for analysis. Human-annotated data for training frame detection models is located in theannotated_data
folder, and machine-predicted frame labels are located in thepredicted_data
folder. -
codebook.pdf
contains guidelines for frame annotation. It includes detailed descriptions of issue-generic policy, immigration-specific, and episodic/thematic frames. -
code/
contains all code for data collection, assessing annotations, and building and evaluating models -
notebooks/
contain Jupyter notebooks for framing analyses, including regressions and plots
Multilabel RoBERTa classification models for identifying frames, fine-tuned on our full set of immigration-related tweets, can be found here:
- https://huggingface.co/juliamendelsohn/framing_issue_generic
- https://huggingface.co/juliamendelsohn/framing_immigration_specific
- https://huggingface.co/juliamendelsohn/framing_narrative
Please see this Colab notebook for how to use the frame classification models.
@inproceedings{mendelsohn2021modeling,
title={Modeling Framing in Immigration Discourse on Social Media},
author={Mendelsohn, Julia and Budak, Ceren and Jurgens, David},
booktitle={Proceedings of the 2021 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies},
pages={2219--2263},
year={2021}
}
Please email Julia Mendelsohn ([email protected]) with any issues, questions, or comments.