Using confidence intervals to determine adequate item sample sizes for vocabulary tests: An essential but overlooked practice

Henrik Gyllstad, Stuart McLean, Jeffrey Stewart

Research output: Contribution to journalArticlepeer-review

25 Citations (Scopus)

Abstract

The last three decades have seen an increase of tests aimed at measuring an individual’s vocabulary level or size. The target words used in these tests are typically sampled from word frequency lists, which are in turn based on language corpora. Conventionally, test developers sample items from frequency bands of 1000 words; different tests employ different sampling ratios. Some have as few as 5 or 10 items representing the underlying population of words, whereas other tests feature a larger number of items, such as 24, 30, or 40. However, very rarely are the sampling size choices supported by clear empirical evidence. Here, using a bootstrapping approach, we illustrate the effect that a sample-size increase has on confidence intervals of individual learner vocabulary knowledge estimates, and on the inferences that can safely be made from test scores. We draw on a unique dataset consisting of adult L1 Japanese test takers’ performance on two English vocabulary test formats, each featuring 1000 words. Our analysis shows that there are few purposes and settings where as few as 5 to 10 sampled items from a 1000-word frequency band (1K) are sufficient. The use of 30 or more items per 1000-word frequency band and tests consisting of fewer bands is recommended.

Original languageEnglish
Pages (from-to)558-579
Number of pages22
JournalLanguage Testing
Volume38
Issue number4
DOIs
Publication statusPublished - Oct 2021

Keywords

  • Assessment
  • bootstrapping
  • confidence intervals
  • statistics
  • testing
  • validity
  • vocabulary

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