@inproceedings{hosseini-etal-2023-empirical,
    title = "An Empirical Study of Metrics to Measure Representational Harms in Pre-Trained Language Models",
    author = "Hosseini, Saghar  and
      Palangi, Hamid  and
      Awadallah, Ahmed Hassan",
    editor = "Ovalle, Anaelia  and
      Chang, Kai-Wei  and
      Mehrabi, Ninareh  and
      Pruksachatkun, Yada  and
      Galystan, Aram  and
      Dhamala, Jwala  and
      Verma, Apurv  and
      Cao, Trista  and
      Kumar, Anoop  and
      Gupta, Rahul",
    booktitle = "Proceedings of the 3rd Workshop on Trustworthy Natural Language Processing (TrustNLP 2023)",
    month = jul,
    year = "2023",
    address = "Toronto, Canada",
    publisher = "Association for Computational Linguistics",
    url = "https://preview.aclanthology.org/ingest-emnlp/2023.trustnlp-1.11/",
    doi = "10.18653/v1/2023.trustnlp-1.11",
    pages = "121--134",
    abstract = "Large-scale Pre-Trained Language Models (PTLMs) capture knowledge from massive human-written data which contains latent societal biases and toxic contents. In this paper, we leverage the primary task of PTLMs, i.e., language modeling, and propose a new metric to quantify manifested implicit representational harms in PTLMs towards 13 marginalized demographics. Using this metric, we conducted an empirical analysis of 24 widely used PTLMs. Our analysis provides insights into the correlation between the proposed metric in this work and other related metrics for representational harm. We observe that our metric correlates with most of the gender-specific metrics in the literature. Through extensive experiments, we explore the connections between PTLMs architectures and representational harms across two dimensions: depth and width of the networks. We found that prioritizing depth over width, mitigates representational harms in some PTLMs. Our code and data can be found at [place holder]."
}Markdown (Informal)
[An Empirical Study of Metrics to Measure Representational Harms in Pre-Trained Language Models](https://preview.aclanthology.org/ingest-emnlp/2023.trustnlp-1.11/) (Hosseini et al., TrustNLP 2023)
ACL