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Class frequency estimation

Project description

freq-e = (class) frequency estimation

Frequency estimation of classes. This is also known as prevalence estimation (in statistics and epidemiology), quantification (in data mining), and class prior estimation (in machine learning).

This software accompanies the paper "Uncertainty-aware generative models for inferring document class prevalence" by Katherine Keith and Brendan O'Connor published in EMNLP 2018.

Contact

Contact the software authors with any questions: Katherine Keith (kkeith@cs.umass.edu) and Brendan O'Connor (brenocon@cs.umass.edu).

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