Sciweavers

CORR
1998
Springer

Bayesian Stratified Sampling to Assess Corpus Utility

13 years 11 months ago
Bayesian Stratified Sampling to Assess Corpus Utility
This paper describes a method for asking statistical questions about a large text corpus. We exemplify the method by addressing the question, "What percentage of Federal Register documents are real documents, of possible interest to a text researcher or analyst?" We estimate an answer to this question by evaluating 200 documents selected from a corpus of 45,820 Federal Register documents. Stratified sampling is used to reduce the sampling uncertainty of the estimate from over 3100 documents to fewer than 11300. The stratification is based on observed characteristics of real documents, while the sampling procedure incorporates a Bayesian version of Neyrnan allocation. A possible application of the method is to establish baseline statistics used to estimate recall rates for information retrieval systems.
Judith Hochberg, Clint Scovel, Timothy Thomas, Sam
Added 22 Dec 2010
Updated 22 Dec 2010
Type Journal
Year 1998
Where CORR
Authors Judith Hochberg, Clint Scovel, Timothy Thomas, Sam Hall
Comments (0)