Pranav Narayanan Venkit

Also published as: Pranav Narayanan Venkit


2023

pdf
Nationality Bias in Text Generation
Pranav Narayanan Venkit | Sanjana Gautam | Ruchi Panchanadikar | Ting-Hao Huang | Shomir Wilson
Proceedings of the 17th Conference of the European Chapter of the Association for Computational Linguistics

Little attention is placed on analyzing nationality bias in language models, especially when nationality is highly used as a factor in increasing the performance of social NLP models. This paper examines how a text generation model, GPT-2, accentuates pre-existing societal biases about country-based demonyms. We generate stories using GPT-2 for various nationalities and use sensitivity analysis to explore how the number of internet users and the country’s economic status impacts the sentiment of the stories. To reduce the propagation of biases through large language models (LLM), we explore the debiasing method of adversarial triggering. Our results show that GPT-2 demonstrates significant bias against countries with lower internet users, and adversarial triggering effectively reduces the same.

2022

pdf
A Study of Implicit Bias in Pretrained Language Models against People with Disabilities
Pranav Narayanan Venkit | Mukund Srinath | Shomir Wilson
Proceedings of the 29th International Conference on Computational Linguistics

Pretrained language models (PLMs) have been shown to exhibit sociodemographic biases, such as against gender and race, raising concerns of downstream biases in language technologies. However, PLMs’ biases against people with disabilities (PWDs) have received little attention, in spite of their potential to cause similar harms. Using perturbation sensitivity analysis, we test an assortment of popular word embedding-based and transformer-based PLMs and show significant biases against PWDs in all of them. The results demonstrate how models trained on large corpora widely favor ableist language.