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P-CURVING AS A SAFEGUARD AGAINST P-HACKING IN SLA RESEARCH

A CASE STUDY

Published online by Cambridge University Press:  06 September 2021

Seth Lindstromberg*
Affiliation:
Hilderstone College
*
*Correspondence concerning this article should be addressed to Seth Lindstromberg, Hilderstone College, St Peters Road, Broadstairs, Kent, CT10 2JW, United Kingdom. Email: lindstromberg@gmail.com; sethl@hilderstone.ac.uk

Abstract

It is important to be able to identify research results likely to have been arrived at by means of “p-hacking,” a common term for research and reporting practices (such as the selective reporting of results) that are biased toward finding p < α. This paper discusses and demonstrates “p-curving,” a means of checking a set of primary studies within a specific research stream for signs of p-hacking. A salient feature of p-curving is that it is based entirely on significant p-values. Because of the potential usefulness of p-curving and because it has been little used by SLA researchers, a case study illustrates the construction and analysis of a p-curve as a complement to meta-analysis. The focal p-curve in this study relates to published (quasi)experimental studies that addressed the research hypothesis that for low and middle proficiency learners L1 glosses facilitate vocabulary learning during reading better than L2 glosses do.

Type
Methods Forum
Copyright
© The Author(s), 2021. Published by Cambridge University Press

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Footnotes

I am grateful to the lead authors of Kim et al. (2020) and Yanagisawa et al. (2020) for answering questions and to the lead author of Kim et al. for supplying two papers that I could find no other way of obtaining. At various stages of its development this paper benefited immensely from comments, suggestions, and corrections from Frank Boers, Tessa Woodward, three anonymous reviewers, and an editor.

References

Primary Studies Included in Case Study

Arpaci, D. (2016). The effects of accessing L1 versus L2 definitional glosses on L2 learners’ reading comprehension and vocabulary learning. Eurasian Journal of Applied Linguistics, 2, 1529. https://www.ejal.info/index.php/ejal/issue/view/10 CrossRefGoogle Scholar
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Pishghadam, R., & Ghahari, S. (2011). The impact of glossing on incidental vocabulary learning: A comparative study. Iranian EFL Journal, 7, 829. https://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.965.6528&rep=rep1&type=pdf Google Scholar
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