Dialect Diversity in Text Summarization on Twitter
Vijay Keswani, L. Elisa Celis

TL;DR
This paper addresses dialect bias in Twitter text summarization by proposing a blackbox framework that enhances dialect diversity in summaries without requiring dialect labels, improving representation of different social groups.
Contribution
It introduces a novel dialect diversification method for extractive summarization that does not depend on dialect labels or classification models, applicable to any existing summarization algorithm.
Findings
Improved dialect diversity in Twitter summaries
Method effective across different social groups
Enhances representation without dialect labels
Abstract
Discussions on Twitter involve participation from different communities with different dialects and it is often necessary to summarize a large number of posts into a representative sample to provide a synopsis. Yet, any such representative sample should sufficiently portray the underlying dialect diversity to present the voices of different participating communities representing the dialects. Extractive summarization algorithms perform the task of constructing subsets that succinctly capture the topic of any given set of posts. However, we observe that there is dialect bias in the summaries generated by common summarization approaches, i.e., they often return summaries that under-represent certain dialects. The vast majority of existing "fair" summarization approaches require socially salient attribute labels (in this case, dialect) to ensure that the generated summary is fair with…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Authorship Attribution and Profiling
