English

Improving the output quality of official statistics based on machine learning algorithms

Methodology 2021-03-02 v1

Abstract

National statistical institutes currently investigate how to improve the output quality of official statistics based on machine learning algorithms. A key obstacle is concept drift, i.e., when the joint distribution of independent variables and a dependent (categorical) variable changes over time. Under concept drift, a statistical model requires regular updating to prevent it from becoming biased. However, updating a model asks for additional data, which are not always available. In the literature, we find a variety of bias correction methods as a promising solution. In the paper, we will compare two popular correction methods: the misclassification estimator and the calibration estimator. For prior probability shift (a specific type of concept drift), we investigate the two correction methods theoretically as well as experimentally. Our theoretical results are expressions for the bias and variance of both methods. As experimental result, we present a decision boundary (as a function of (a) model accuracy, (b) class distribution and (c) test set size) for the relative performance of the two methods. Close inspection of the results will provide a deep insight into the effect of prior probability shift on output quality, leading to practical recommendations on the use of machine learning algorithms in official statistics.

Keywords

Cite

@article{arxiv.2103.00834,
  title  = {Improving the output quality of official statistics based on machine learning algorithms},
  author = {Quinten Meertens and Cees Diks and Jaap van den Herik and Frank Takes},
  journal= {arXiv preprint arXiv:2103.00834},
  year   = {2021}
}

Comments

19 pages, 3 figures, submitted to the Journal of Official Statistics on 14 December 2020

R2 v1 2026-06-23T23:36:27.526Z