Using Multiple Samples to Learn Mixture Models

11/28/2013
by   Jason D. Lee, et al.
0

In the mixture models problem it is assumed that there are K distributions θ_1,...,θ_K and one gets to observe a sample from a mixture of these distributions with unknown coefficients. The goal is to associate instances with their generating distributions, or to identify the parameters of the hidden distributions. In this work we make the assumption that we have access to several samples drawn from the same K underlying distributions, but with different mixing weights. As with topic modeling, having multiple samples is often a reasonable assumption. Instead of pooling the data into one sample, we prove that it is possible to use the differences between the samples to better recover the underlying structure. We present algorithms that recover the underlying structure under milder assumptions than the current state of art when either the dimensionality or the separation is high. The methods, when applied to topic modeling, allow generalization to words not present in the training data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/23/2015

On The Identifiability of Mixture Models from Grouped Samples

Finite mixture models are statistical models which appear in many proble...
research
11/04/2016

Generalized Topic Modeling

Recently there has been significant activity in developing algorithms wi...
research
06/30/2016

An Operator Theoretic Approach to Nonparametric Mixture Models

When estimating finite mixture models, it is common to make assumptions ...
research
09/22/2019

Probabilistic Fitting of Topological Structure to Data

We define a class of probability distributions that we call simplicial m...
research
01/19/2020

Algebraic and Analytic Approaches for Parameter Learning in Mixture Models

We present two different approaches for parameter learning in several mi...
research
11/03/2022

Statistical Inference for Scale Mixture Models via Mellin Transform Approach

This paper deals with statistical inference for the scale mixture models...
research
11/30/2019

Dis-entangling Mixture of Interventions on a Causal Bayesian Network Using Aggregate Observations

We study the problem of separating a mixture of distributions, all of wh...

Please sign up or login with your details

Forgot password? Click here to reset