Unsupervised Risk Estimation Using Only Conditional Independence Structure

06/16/2016
by   Jacob Steinhardt, et al.
0

We show how to estimate a model's test error from unlabeled data, on distributions very different from the training distribution, while assuming only that certain conditional independencies are preserved between train and test. We do not need to assume that the optimal predictor is the same between train and test, or that the true distribution lies in any parametric family. We can also efficiently differentiate the error estimate to perform unsupervised discriminative learning. Our technical tool is the method of moments, which allows us to exploit conditional independencies in the absence of a fully-specified model. Our framework encompasses a large family of losses including the log and exponential loss, and extends to structured output settings such as hidden Markov models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/11/2018

Nonasymptotic control of the MLE for misspecified nonparametric hidden Markov models

We study the problem of estimating an unknown time process distribution ...
research
05/30/2021

Asymptotic Normality of the Posterior Distributions in a Class of Hidden Markov Models

We show that the posterior distribution of parameters in a hidden Markov...
research
11/15/2017

Kernel Conditional Exponential Family

A nonparametric family of conditional distributions is introduced, which...
research
06/22/2012

Hidden Markov Models with mixtures as emission distributions

In unsupervised classification, Hidden Markov Models (HMM) are used to a...
research
11/02/2019

Model Specification Test with Unlabeled Data: Approach from Covariate Shift

We propose a novel framework of the model specification test in regressi...
research
09/18/2017

Model-Powered Conditional Independence Test

We consider the problem of non-parametric Conditional Independence testi...
research
04/08/2019

Completely Unsupervised Phoneme Recognition By A Generative Adversarial Network Harmonized With Iteratively Refined Hidden Markov Models

Producing a large annotated speech corpus for training ASR systems remai...

Please sign up or login with your details

Forgot password? Click here to reset