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Schedule
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With an exciting line-up of engaging speakers and diverse topics about trust, ethics, and integrity, you will not want to miss anything! Do you have a busy day, or an upcoming deadline? We get it. That is why the Zoom event is an open-house format with sessions throughout the day and breaks in between sessions. You can even sit down with us during lunchtime for an informative panel discussion. |
SESSION MATERIALS
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Session recordings and presentation slides are posted below for most of the sessions in case you were not able to attend a session, or would like to watch it again. |
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A Gold Mining Adventure – Using Natural Language Processing and Machine Learning to find Gold in Unstructured DataPresenter: Chris Schilstra Presentation: Join us to "dig for gold" in sizeable textual data sets to uncover stakeholder themes and sentiment, with industry-standard accuracy rates. We will compare two thematic/sentiment model visualizations with a presentation and demo and explore the importance of incorporating Human-Centered Design (HCD) with Artificial Intelligence (AI). Areas of interest: Data, Design, Policy, Technology Session materials: Unavailable at this time.
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Catch Me if You Can – How to Fight Fraud, Waste and Abuse using Machine Learning AND Machine TEACHING (by human)Presenter: Cupid Chan Plenary Session: Machine Learning (ML) is often the focus of an Artificial Intelligence (AI) discussion, but Machine TEACHING is just as important. This session will intersect a technical conversation with a real business context: Fraud, Waste, and Abuse. Areas of interest: this is the morning plenary session, and we encourage everyone to attend. Session materials: Slides: WUD_Chan.pdf
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How Humans Make AI WorkPresenters: Ian Lowrie and Stephanie Warren Presentation: “Artificially intelligent” systems rely on complex combinations of humans and machines to produce the desired user experiences, posing challenges for service design and ultimately affecting overall user trust and user experience. This session will explore systems like chatbots and provide practical guidance for UX professionals working with or curious about Artificial Intelligence (AI). Areas of interest: Data, Design, Product, Technology Session materials: Slides: WUD_Warren_Lowrie.pdf
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Capabilities and Challenges for Machine Learning focused on Preserving Privacy and CMS Healthcare GoalsPresenters: Keith McFarland (moderator) and panelists: Combiz Abdolrahimi, Steve Geller, Harlan Krumholz, MD, Darryl Marshall and Bin Shao, Ph.D. Panel Discussion: Machine Learning (ML) can support patient care improvement while managing costs, but there are risks involved. Join us for a panel discussion on how a ML approach can be implemented without compromising reliability, trustworthiness, and safety. The panel of professionals will share their knowledge in areas including Human-Centered Design (HCD), Health Privacy, Data, and more. Areas of interest: this is a panel discussion, and we encourage everyone to attend Session materials:
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Intermission ActivitiesWatch Satisfy the Cat to learn more about HCD. Have fun with AI with Akinator. |
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Federated Learning to Collect Mobile Patient-Reported OutcomesPresenters: Dr. Rachele Hendricks-Sturrup and Dr. Sara Jordan Plenary Session: Health data requires unique privacy and governance protections, and patient-reported outcomes measures (PROs/PROMs) data is no exception. We will discuss what it takes to ensure patient privacy in federated learning architectures. Areas of interest: this is our afternoon plenary session, everyone is encouraged to attend. Session materials: Slides: WUD_Jordan_HendricksSturrup.pdf
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Using Human-Centered Machine-Learning (HCML) to Improve Data Quality & Data Governance ProjectsPresenter: Edward F. O'Connor Presentation: Are you interested in understanding the components of a real-world and complex Machine Learning (ML) project? Join us as we walk through the implementation process of combining Human-Centered Design (HCD) techniques into a ML project. Areas of interest: Data, Design, Product, Strategy, Technology Session materials: Slides: WUD_OConner.pdf
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ContactIf you have any questions about World Usability Day or to learn more about the HCD CoE, please contact us today. For the HCQIS Community: Visit our HCD Confluence Site -or- For all other visitors, please feel free to email us at: hcd@hcqis.org |