Learning about individuals from group statistics

07/04/2012
by   Hendrik Kuck, et al.
0

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.

READ FULL TEXT

page 6

page 7

page 8

research
08/16/2021

Weakly Supervised Classification Using Group-Level Labels

In many applications, finding adequate labeled data to train predictive ...
research
01/05/2022

Group structure estimation for panel data – a general approach

Consider a panel data setting where repeated observations on individuals...
research
08/11/2017

Learning from Noisy Label Distributions

In this paper, we consider a novel machine learning problem, that is, le...
research
02/25/2022

Towards Learning Causal Representations from Multi-Instance Bags

Although humans can easily identify the object of interest from groups o...
research
07/04/2018

Direct Uncertainty Prediction with Applications to Healthcare

Large labeled datasets for supervised learning are frequently constructe...
research
05/13/2019

Modelling Instance-Level Annotator Reliability for Natural Language Labelling Tasks

When constructing models that learn from noisy labels produced by multip...
research
11/06/2019

An improved binary programming formulation for the secure domination problem

The secure domination problem, a variation of the domination problem wit...

Please sign up or login with your details

Forgot password? Click here to reset