Search Results for author: Anaelia Ovalle

Found 12 papers, 1 papers with code

Tokenization Matters: Navigating Data-Scarce Tokenization for Gender Inclusive Language Technologies

no code implementations19 Dec 2023 Anaelia Ovalle, Ninareh Mehrabi, Palash Goyal, Jwala Dhamala, Kai-Wei Chang, Richard Zemel, Aram Galstyan, Yuval Pinter, Rahul Gupta

Our paper is the first to link LLM misgendering to tokenization and deficient neopronoun grammar, indicating that LLMs unable to correctly treat neopronouns as pronouns are more prone to misgender.

Should they? Mobile Biometrics and Technopolicy meet Queer Community Considerations

no code implementations6 Oct 2023 Anaelia Ovalle, Davi Liang, Alicia Boyd

To facilitate these functionalities, smartphones rely on integrated sensors like accelerometers and gyroscopes.

Bound by the Bounty: Collaboratively Shaping Evaluation Processes for Queer AI Harms

no code implementations15 Jul 2023 Organizers Of QueerInAI, Nathan Dennler, Anaelia Ovalle, Ashwin Singh, Luca Soldaini, Arjun Subramonian, Huy Tu, William Agnew, Avijit Ghosh, Kyra Yee, Irene Font Peradejordi, Zeerak Talat, Mayra Russo, Jess de Jesus de Pinho Pinhal

However, these auditing processes have been criticized for their failure to integrate the knowledge of marginalized communities and consider the power dynamics between auditors and the communities.

Factoring the Matrix of Domination: A Critical Review and Reimagination of Intersectionality in AI Fairness

no code implementations16 Mar 2023 Anaelia Ovalle, Arjun Subramonian, Vagrant Gautam, Gilbert Gee, Kai-Wei Chang

Through a critical review of how intersectionality is discussed in 30 papers from the AI fairness literature, we deductively and inductively: 1) map how intersectionality tenets operate within the AI fairness paradigm and 2) uncover gaps between the conceptualization and operationalization of intersectionality.

Fairness

Auditing Algorithmic Fairness in Machine Learning for Health with Severity-Based LOGAN

no code implementations16 Nov 2022 Anaelia Ovalle, Sunipa Dev, Jieyu Zhao, Majid Sarrafzadeh, Kai-Wei Chang

Therefore, ML auditing tools must be (1) better aligned with ML4H auditing principles and (2) able to illuminate and characterize communities vulnerable to the most harm.

Bias Detection Clustering +1

COVID-19 and Big Data: Multi-faceted Analysis for Spatio-temporal Understanding of the Pandemic with Social Media Conversations

no code implementations22 Apr 2021 Shayan Fazeli, Davina Zamanzadeh, Anaelia Ovalle, Thu Nguyen, Gilbert Gee, Majid Sarrafzadeh

We provide a multi-faceted analysis of critical properties exhibited by these conversations on social media regarding the novel coronavirus pandemic.

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