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Data-driven Humanitarian Mapping, KDD 2021 — MIT Media Lab

Data-driven Humanitarian Mapping: Harnessing Human-Machine Intelligence for High-Stake Public Policy and Resiliency Planning, KDD 2021 Neil Gaikwad (@neilsgaikwad), a doctoral scholar from the Space Enabled Research Group, is co-organizing the 2nd KDD conference workshop on Data-driven Humanitarian Mapping with  Shankar Iyer (Core Data Science, Facebook Research),  Dalton Lunga (Oak Ridge National Laboratory), and Elizabeth Bondi (Harvard University).   Call for Participation Societal challenges such as climate change-induced threats, the COVID-19 coronavirus pandemic, poor air quality, natural disasters, economic inequalities, racial-and-gender violence, and human conflicts disproportionately impact vulnerable populations worldwide.  The 2nd KDD Workshop on Data-driven Humanitarian Mapping envisions scientific and community-based solutions to address these pressing issues.  The workshop brings together a global community of researchers and practitioners to advan

沒錶沒手機!7女8男洞穴同居40天 帶出來竟喊:還想住 | 新奇 | 三立新聞網 SETN COM

沒錶沒手機!7女8男洞穴同居40天 帶出來竟喊:還想住 | 新奇 | 三立新聞網 SETN COM
setn.com - get the latest breaking news, showbiz & celebrity photos, sport news & rumours, viral videos and top stories from setn.com Daily Mail and Mail on Sunday newspapers.

Machine learning for health and equity, and health and equity for ML

Sponsored by: Computer Science Department Intended Audience(s): Public Categories: Lectures & Seminars Abstract: As machine learning methods become embedded in society, it has become clear that the data used, objectives selected, and questions we ask are all critical. My work looks at data and machine learning from a public health and equity lens. First, this motivates the design and development of data mining and machine learning methods to address challenges related to data and goals of public health, such as generating better hyper-local features to represent environmental attributes addressing challenges of sparsity, irregularity and representativeness of data. Second, principles of community and equity inspire innovations in machine learning. In this realm my work has leveraged causal models and machine learning to address realistic challenges of data collection and model use across environments, such as domain adaptation that improves prediction in under-represented populati

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