Learning about individuals from group statistics

We propose a new problem formulation which is similar to, but more informative than, the binary multiple-instance learning problem. In this setting, we are given groups of instances (described by feature vectors) along with estimates of the fraction of positively-labeled instances per group. The tas...

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Main Authors: Kuck, H, de Freitas, N
Format: Conference item
Izdano: AUAI Press 2005
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author Kuck, H
de Freitas, N
author_facet Kuck, H
de Freitas, N
author_sort Kuck, H
collection OXFORD
description We propose a new problem formulation which is similar to, but more informative than, the binary multiple-instance learning problem. In this setting, we are given groups of instances (described by feature vectors) along with estimates of the fraction of positively-labeled instances per group. The task is to learn an instance level classifier from this information. That is, we are trying to estimate the unknown binary labels of individuals from knowledge of group statistics. We propose a principled probabilistic model to solve this problem that accounts for uncertainty in the parameters and in the unknown individual labels. This model is trained with an efficient MCMC algorithm. Its performance is demonstrated on both synthetic and real-world data arising in general object recognition.
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spelling oxford-uuid:2a9663db-d06c-491f-bbab-08d53815df752022-03-26T12:25:56ZLearning about individuals from group statisticsConference itemhttp://purl.org/coar/resource_type/c_5794uuid:2a9663db-d06c-491f-bbab-08d53815df75Department of Computer ScienceAUAI Press2005Kuck, Hde Freitas, NWe propose a new problem formulation which is similar to, but more informative than, the binary multiple-instance learning problem. In this setting, we are given groups of instances (described by feature vectors) along with estimates of the fraction of positively-labeled instances per group. The task is to learn an instance level classifier from this information. That is, we are trying to estimate the unknown binary labels of individuals from knowledge of group statistics. We propose a principled probabilistic model to solve this problem that accounts for uncertainty in the parameters and in the unknown individual labels. This model is trained with an efficient MCMC algorithm. Its performance is demonstrated on both synthetic and real-world data arising in general object recognition.
spellingShingle Kuck, H
de Freitas, N
Learning about individuals from group statistics
title Learning about individuals from group statistics
title_full Learning about individuals from group statistics
title_fullStr Learning about individuals from group statistics
title_full_unstemmed Learning about individuals from group statistics
title_short Learning about individuals from group statistics
title_sort learning about individuals from group statistics
work_keys_str_mv AT kuckh learningaboutindividualsfromgroupstatistics
AT defreitasn learningaboutindividualsfromgroupstatistics