Independent finite approximations for Bayesian nonparametric inference: construction, error bounds, and practical implications

09/22/2020
by   Tin D. Nguyen, et al.
8

Bayesian nonparametrics based on completely random measures (CRMs) offers a flexible modeling approach when the number of clusters or latent components in a dataset is unknown. However, managing the infinite dimensionality of CRMs often leads to slow computation. Practical inference typically relies on either integrating out the infinite-dimensional parameter or using a finite approximation: a truncated finite approximation (TFA) or an independent finite approximation (IFA). The atom weights of TFAs are constructed sequentially, while the atoms of IFAs are independent, which (1) make them well-suited for parallel and distributed computation and (2) facilitates more convenient inference schemes. While IFAs have been developed in certain special cases in the past, there has not yet been a general template for construction or a systematic comparison to TFAs. We show how to construct IFAs for approximating distributions in a large family of CRMs, encompassing all those typically used in practice. We quantify the approximation error between IFAs and the target nonparametric prior, and prove that, in the worst-case, TFAs provide more component-efficient approximations than IFAs. However, in experiments on image denoising and topic modeling tasks with real data, we find that the error of Bayesian approximation methods overwhelms any finite approximation error, and IFAs perform very similarly to TFAs.

READ FULL TEXT
research
01/15/2020

Distributed, partially collapsed MCMC for Bayesian Nonparametrics

Bayesian nonparametric (BNP) models provide elegant methods for discover...
research
05/26/2019

A unified construction for series representations and finite approximations of completely random measures

Infinite-activity completely random measures (CRMs) have become importan...
research
12/02/2010

Conjugate Projective Limits

We characterize conjugate nonparametric Bayesian models as projective li...
research
06/02/2020

Kernel-independent adaptive construction of ℋ^2-matrix approximations

A method for the kernel-independent construction of ℋ^2-matrix approxima...
research
01/03/2016

Dimensionality-Dependent Generalization Bounds for k-Dimensional Coding Schemes

The k-dimensional coding schemes refer to a collection of methods that a...
research
05/17/2020

Truncated Self-Product Measures in Edge-Exchangeable Networks

Edge-exchangeable probabilistic network models generate edges as an i.i....
research
02/27/2018

Nonasymptotic Gaussian Approximation for Linear Systems with Stable Noise [Preliminary Version]

The results of a series of theoretical studies are reported, examining t...

Please sign up or login with your details

Forgot password? Click here to reset