Challenge: despite natural language variation, automatic speech recognition systems perform worse on non-standardised and marginalised language varieties.
Approach: They propose a re-framing of language resources as (public) infrastructure for speech communities . authors propose rethinking of algorithms to address the origins and harms of bias .
Outcome: The proposed approach aims to understand the origins and harms of algorithmic bias and how it can be mitigated.

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Bias and Fairness in Natural Language Processing (D19-2)

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Challenge: a tutorial will review the history of bias and fairness studies in machine learning and language processing .
Approach: This tutorial reviews the history of bias and fairness studies in machine learning and language processing . it presents recent community effort to quantify and mitigat bias in natural language processing models .
Outcome: This tutorial reviews the history of bias and fairness studies in machine learning and language processing . it aims to quantify and mitigate bias in natural language processing models for a wide spectrum of tasks .
Language-specific Effects on Automatic Speech Recognition Errors for World Englishes (2022.coling-1)

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Challenge: Existing systems are not able to meet the needs of speakers of different demographic groups.
Approach: They propose to analyze the performance of Otter’s automatic captioning system on native and non-native English speakers of different language background through a linguistic analysis of segment-level errors.
Outcome: The proposed system predicts certain errors from the phonological structure of a speaker’s native language.
Should We Ban English NLP for a Year? (2022.emnlp-main)

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Challenge: aaron carroll: two thirds of NLP research is devoted to developing technology for speakers of English . carroll says this bias feeds into consumer technologies to widen existing inequality gaps . he says we need to consider more concrete measures to mitigate climate change .
Approach: a new paper argues that NLP is contributing to global inequalities through a digital language divide . a carbon tax, cap-and-trade and car-free Sundays are examples of measures to mitigate climate change .
Outcome: a new paper argues that NLP is contributing to global inequalities through a digital language divide . a carbon tax, cap-and-trade and car-free Sundays are examples of measures to mitigate climate change .
Predictive Biases in Natural Language Processing Models: A Conceptual Framework and Overview (2020.acl-main)

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Challenge: a growing number of studies address the effect of bias on predictions, but no unifying framework exists . a general phenomenon of biased predictive models in NLP is not recent, authors say .
Approach: They propose a unifying framework for identifying and reducing bias in natural language processing . they propose to differentiate two consequences of bias and four potential origins of bias .
Outcome: The proposed framework provides an overview of predictive bias in natural language processing . it differentiates two consequences of bias and four potential origins of bias: label bias, selection bias, model overamplification, and semantic bias.
Language (Technology) is Power: A Critical Survey of “Bias” in NLP (2020.acl-main)

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Challenge: 146 papers analyzing "bias" in NLP systems lack normative reasoning, we find . authors propose three recommendations for work analyzing “bias” in Nlp systems .
Approach: They propose three recommendations for analyzing "bias" in NLP systems . they propose to focus on what kinds of system behaviors are harmful, in what ways, to whom, and why .
Outcome: The proposed methods for measuring or mitigating “bias” are poorly matched to their motivations and do not engage critically with literature outside of NLP.
Do Neural Language Models Overcome Reporting Bias? (2020.coling-main)

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Challenge: Recent studies show that pre-trained language models can overcome reporting bias by estimating the plausibility of rare but unspoken facts.
Approach: They revisit the experiments conducted by Gordon and Van Durme (2013) . they find that pre-trained language models overestimate the very rare .
Outcome: The proposed approach overestimates the rare at the expense of the rare, while minimizing reporting bias.
Systematic Inequalities in Language Technology Performance across the World’s Languages (2022.acl-long)

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Challenge: Recent studies have revealed that NLP is limited to a subset of the world’s 6,500 languages.
Approach: They propose a framework for estimating the global utility of language technologies as revealed in a comprehensive snapshot of recent publications in NLP.
Outcome: The proposed framework estimates the global utility of language technologies as revealed in a comprehensive snapshot of recent publications in NLP.
Lost in Transcription: Identifying and Quantifying the Accuracy Biases of Automatic Speech Recognition Systems Against Disfluent Speech (2024.naacl-long)

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Challenge: Automatic speech recognition systems fail to accurately interpret speech patterns deviating from typical fluency, leading to critical usability issues and misinterpretations.
Approach: They evaluate six leading automatic speech recognition systems based on a real-world dataset and a synthetic dataset derived from the widely-used LibriSpeech benchmark.
Outcome: The six leading speech recognition systems were evaluated on a real-world dataset and a synthetic dataset derived from the widely-used LibriSpeech benchmark.
Mind Your Bias: A Critical Review of Bias Detection Methods for Contextual Language Models (2022.findings-emnlp)

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Challenge: Existing methods for detection of biases in contextual language models are inconsistent and inconclusive.
Approach: They propose to use word embedding association test to detect biases in contextual language models to compare them with other methods.
Outcome: The proposed methods are inconsistent and inconclusive for language models with word embeddings.
Societal Biases in Language Generation: Progress and Challenges (2021.acl-long)

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Challenge: Language generation techniques can produce undesirable societal biases that can negatively impact marginalized populations.
Approach: They propose to examine how decoding techniques contribute to biases in language generation . they also conduct experiments to quantify the effects of these techniques .
Outcome: The proposed methods can reduce biases and improve user experience, the authors argue . they also show that the proposed techniques can reduce societal biase .

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