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X-WR-CALNAME;VALUE=TEXT:Stevie Chancellor: 	Human-Centered Machine Learning for Dangerous Mental Health Behaviors Online
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SUMMARY:Stevie Chancellor: 	Human-Centered Machine Learning for Dangerous Mental Health Behaviors Online
DESCRIPTION:<p><strong>Title</strong>: Human-Centered Machine Learning for Dangerous Mental Health Behaviors Online</p><p><strong>Abstract</strong>: Research and industry use machine learning to identify and intervene in physically dangerous behaviors discussed on social media, such as advocating for self-injury or violence. There is an urgent need to innovate in data-driven systems to handle the volume and risk of this content in social networks and its propagation to others in the community. However, traditional approaches to prediction have mixed success, in part because technical solutions oversimplify complex behavior and the unique interactions of dangerous communities with both individuals and platforms. The difficulties in computationally handling these circumstances threatens the applications of these techniques to pressing social problems.</p><p><span>In this talk, I will describe my work in&nbsp;</span><em><span>human-centered machine learning,&nbsp;</span></em><span>an approach that refocuses technological innovation on the needs of humans, communities, and stakeholders. I study this through dangerous mental illness behaviors in online communities, like opioid abuse, suicidal ideation, and promoting eating disorders. First, I will talk about my work in building novel and human-centered prediction systems that make robust and accurate assessments of mental illness signals across several conditions. Then, I will discuss recent research on a crucial part of machine learning pipelines - generating labels for training data. I have found alarming gaps in construct validity and rigor that jeopardize the state-of-the-art – and I’ll discuss our current work on how we’re attempting to fix this. Together, these inform an agenda for human-centered machine learning that is scientifically rigorous and more considerate of social contexts in data, providing a pathway for more impactful and ethical problem solving in computer science.</span></p><p><span>Recording of the talk:&nbsp;</span><a href="https://youtu.be/7v5tfxGqoBs"><span>https://youtu.be/7v5tfxGqoBs</span></a></p><p>&nbsp;</p><drupal-media alt="Stevie Chancellor" data-entity-type="media" data-entity-uuid="9f2a0852-5a51-472d-b87f-60c87f054bd1" data-align="left">&nbsp;</drupal-media><p><strong>Bio:</strong>&nbsp;Dr. Stevie Chancellor is the CS + X Postdoctoral Fellow in Computer Science at Northwestern University. Her research combines approaches from human-computer interaction and machine learning to build and critically evaluate human-centered systems, focusing on high-risk health behaviors in online communities. Her work has been featured in The Atlantic, Wired and Gizmodo. Stevie recently received her doctorate in Human-Centered Computing from Georgia Tech, and will start as an Assistant Professor in Computer Science and Engineering at the University of Minnesota in 2021.</p><p>&nbsp;</p>
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DTSTART:20200824T180000Z
DTEND:20200824T180000Z
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