Flexible Models for Microclustering with Application to Entity Resolution - 2016
Center for Language & Speech Processing(CLSP), JHU via YouTube
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Explore a comprehensive lecture on flexible models for microclustering and their application to entity resolution. Delve into the challenges of record linkage and community detection in large, potentially noisy databases. Learn about the limitations of traditional clustering models and discover a new approach that addresses the need for clusters whose sizes grow sublinearly with the dataset. Examine the "microclustering property" and its implications for various fields, including author disambiguation, genetics, official statistics, and human rights conflict analysis. Gain insights from real and simulated data examples presented by Rebecca C. Steorts, Assistant Professor at Duke University. Understand the collaborative research efforts behind this innovative model and its potential impact on handling large-scale entity resolution tasks.
Syllabus
Flexible Models for Microclustering with Application to Entity Resolution -- Rebecca Steorts - 2016
Taught by
Center for Language & Speech Processing(CLSP), JHU