
Handbook of Mixed Membership Models and Their Applications
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Reviews / Votes
"The editors of this volume have notably worked at the forefront of research in various subfields of mixed membershi modeling since the field's inception. . . . The strength of their collaboration in editing this volume can be seen in the book's organization. . . .One of the main strengths of the book, fulfilling the promise of its title, is the wealth of applications described therein . . . We believe this book sets the stage for a rich body of future work."~Trevor Campbell and Tamara Broderick, Massachusetts Institute of Technology "The editors of this volume have notably worked at the forefront of research in various subfields of mixed membershi modeling since the field's inception. . . . The strength of their collaboration in editing this volume can be seen in the book's organization. . . .One of the main strengths of the book, fulfilling the promise of its title, is the wealth of applications described therein . . . We believe this book sets the stage for a rich body of future work."
~Trevor Campbell and Tamara Broderick, Massachusetts Institute of Technology
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Persons
David M. Blei is a professor of statistics and computer science at Columbia University. Dr. Blei's research is in statistical machine learning involving probabilistic topic models, Bayesian nonparametric methods, and approximate posterior inference.
Elena A. Erosheva is an associate professor of statistics and social work at the University of Washington, where she is a core member of the Center for Statistics and the Social Sciences. Dr. Erosheva's research focuses on the development and application of modern statistical methods to address important issues in the social, medical, and health sciences.
Stephen E. Fienberg is the Maurice Falk University Professor of Statistics and Social Science at Carnegie Mellon University, where he is co-director of the Living Analytics Research Centre and a member of the Department of Statistics, the Machine Learning Department, the Heinz College, and Cylab. Dr. Fienberg's research includes the development of statistical methods for categorical data analysis and network data analysis.
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