Towards a Holistic Approach: Understanding Sociodemographic Biases in NLP Models using an Interdisciplinary Lens
It addresses bias issues in NLP for society, but is incremental as it builds on existing research without introducing new methods or data.
This paper tackles the problem of sociodemographic biases in NLP models by advocating for an interdisciplinary approach to address gaps in current research, such as limited focus beyond race and gender, narrow model-centric analysis, and technocentric implementations, but does not report concrete results or numbers.
The rapid growth in the usage and applications of Natural Language Processing (NLP) in various sociotechnical solutions has highlighted the need for a comprehensive understanding of bias and its impact on society. While research on bias in NLP has expanded, several challenges persist that require attention. These include the limited focus on sociodemographic biases beyond race and gender, the narrow scope of analysis predominantly centered on models, and the technocentric implementation approaches. This paper addresses these challenges and advocates for a more interdisciplinary approach to understanding bias in NLP. The work is structured into three facets, each exploring a specific aspect of bias in NLP.