Search Results for author: John Richards

Found 9 papers, 2 papers with code

Quantitative AI Risk Assessments: Opportunities and Challenges

no code implementations13 Sep 2022 David Piorkowski, Michael Hind, John Richards

Although AI-based systems are increasingly being leveraged to provide value to organizations, individuals, and society, significant attendant risks have been identified.

Evaluating a Methodology for Increasing AI Transparency: A Case Study

no code implementations24 Jan 2022 David Piorkowski, John Richards, Michael Hind

The methodology was found to be usable by developers not trained in user-centered techniques, guiding them to creating a documentation template that addressed the specific needs of their consumers while still being reusable across different models and use cases.

Using Document Similarity Methods to create Parallel Datasets for Code Translation

no code implementations11 Oct 2021 Mayank Agarwal, Kartik Talamadupula, Fernando Martinez, Stephanie Houde, Michael Muller, John Richards, Steven I Ross, Justin D. Weisz

However, due to the paucity of parallel data in this domain, supervised techniques have only been applied to a limited set of popular programming languages.

Code Translation Machine Translation +1

Towards evaluating and eliciting high-quality documentation for intelligent systems

no code implementations17 Nov 2020 David Piorkowski, Daniel González, John Richards, Stephanie Houde

In this paper, we propose and evaluate a set of quality dimensions to identify in what ways this type of documentation falls short.

Vocal Bursts Intensity Prediction

A Methodology for Creating AI FactSheets

no code implementations24 Jun 2020 John Richards, David Piorkowski, Michael Hind, Stephanie Houde, Aleksandra Mojsilović

This is the first work to describe a methodology for creating the form of AI documentation we call FactSheets.

Detecting Egregious Conversations between Customers and Virtual Agents

no code implementations NAACL 2018 Tommy Sandbank, Michal Shmueli-Scheuer, Jonathan Herzig, David Konopnicki, John Richards, David Piorkowski

In this paper, we outline an approach to detecting such egregious conversations, using behavioral cues from the user, patterns in agent responses, and user-agent interaction.

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