Variationist: Exploring Multifaceted Variation and Bias in Written Language Data
Alan Ramponi, Camilla Casula, Stefano Menini

TL;DR
Variationist is a versatile, modular tool that visualizes and analyzes language variation and bias across multiple variables, aiding researchers in uncovering insights and biases in language data.
Contribution
It introduces a customizable, task-agnostic Python tool that visualizes complex language variation and bias across multiple dimensions, filling a significant gap in NLP research tools.
Findings
Enables multi-dimensional visualization of language variation.
Facilitates detection of biases and associations in language data.
Proven effective through case studies in dialectology, labeling, and text generation.
Abstract
Exploring and understanding language data is a fundamental stage in all areas dealing with human language. It allows NLP practitioners to uncover quality concerns and harmful biases in data before training, and helps linguists and social scientists to gain insight into language use and human behavior. Yet, there is currently a lack of a unified, customizable tool to seamlessly inspect and visualize language variation and bias across multiple variables, language units, and diverse metrics that go beyond descriptive statistics. In this paper, we introduce Variationist, a highly-modular, extensible, and task-agnostic tool that fills this gap. Variationist handles at once a potentially unlimited combination of variable types and semantics across diversity and association metrics with regards to the language unit of choice, and orchestrates the creation of up to five-dimensional interactive…
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Code & Models
Videos
Taxonomy
TopicsNatural Language Processing Techniques
