Optimal Distributed Subsampling for Maximum Quasi-Likelihood Estimators with Massive Data

05/21/2020
by   Jun Yu, et al.
0

Nonuniform subsampling methods are effective to reduce computational burden and maintain estimation efficiency for massive data. Existing methods mostly focus on subsampling with replacement due to its high computational efficiency. If the data volume is so large that nonuniform subsampling probabilities cannot be calculated all at once, then subsampling with replacement is infeasible to implement. This paper solves this problem using Poisson subsampling. We first derive optimal Poisson subsampling probabilities in the context of quasi-likelihood estimation under the A- and L-optimality criteria. For a practically implementable algorithm with approximated optimal subsampling probabilities, we establish the consistency and asymptotic normality of the resultant estimators. To deal with the situation that the full data are stored in different blocks or at multiple locations, we develop a distributed subsampling framework, in which statistics are computed simultaneously on smaller partitions of the full data. Asymptotic properties of the resultant aggregated estimator are investigated. We illustrate and evaluate the proposed strategies through numerical experiments on simulated and real data sets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/17/2022

Sampling with replacement vs Poisson sampling: a comparative study in optimal subsampling

Faced with massive data, subsampling is a commonly used technique to imp...
research
02/03/2017

Optimal Subsampling for Large Sample Logistic Regression

For massive data, the family of subsampling algorithms is popular to dow...
research
01/06/2023

Optimal subsampling algorithm for composite quantile regression with distributed data

For massive data stored at multiple machines, we propose a distributed s...
research
05/23/2019

Divide-and-Conquer Information-Based Optimal Subdata Selection Algorithm

The information-based optimal subdata selection (IBOSS) is a computation...
research
06/18/2018

Optimal Subsampling Algorithms for Big Data Generalized Linear Models

To fast approximate the maximum likelihood estimator with massive data, ...
research
06/05/2023

A unified analysis of likelihood-based estimators in the Plackett–Luce model

The Plackett–Luce model is a popular approach for ranking data analysis,...
research
07/21/2019

Some New Results for Poisson Binomial Models

We consider a problem of ecological inference, in which individual-level...

Please sign up or login with your details

Forgot password? Click here to reset