Accuracy when inferential statistics are used as measurement tools

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Accuracy when inferential statistics are used as measurement tools. / Bradley, Michael T; Brand, Andrew.
In: BMC Research Notes, Vol. 9, 241, 26.04.2016, p. 487-489.

Research output: Contribution to journalArticlepeer-review

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Bradley, MT & Brand, A 2016, 'Accuracy when inferential statistics are used as measurement tools', BMC Research Notes, vol. 9, 241, pp. 487-489.

APA

Bradley, M. T., & Brand, A. (2016). Accuracy when inferential statistics are used as measurement tools. BMC Research Notes, 9, 487-489. Article 241.

CBE

Bradley MT, Brand A. 2016. Accuracy when inferential statistics are used as measurement tools. BMC Research Notes. 9:487-489.

MLA

Bradley, Michael T and Andrew Brand. "Accuracy when inferential statistics are used as measurement tools". BMC Research Notes. 2016, 9. 487-489.

VancouverVancouver

Bradley MT, Brand A. Accuracy when inferential statistics are used as measurement tools. BMC Research Notes. 2016 Apr 26;9:487-489. 241.

Author

Bradley, Michael T ; Brand, Andrew. / Accuracy when inferential statistics are used as measurement tools. In: BMC Research Notes. 2016 ; Vol. 9. pp. 487-489.

RIS

TY - JOUR

T1 - Accuracy when inferential statistics are used as measurement tools

AU - Bradley, Michael T

AU - Brand, Andrew

PY - 2016/4/26

Y1 - 2016/4/26

N2 - Background: Inferential statistical tests that approximate measurement are called acceptance procedures. The procedure includes type 1 error, falsely rejecting the null hypothesis, and type 2 error, failing to reject the null hypothesis when the alternative should be supported. This approach involves repeated sampling from a distribution with established parameters such that the probabilities of these errors can be ascertained. With low error probabilities the procedure has the potential to approximate measurement. How close this procedure approximates measurement was examined. Findings: A Monte Carlo procedure set the type 1 error at p = 0.05 and the type 2 error at either p = 0.20 or p = 0.10 for effect size values of d = 0.2, 0.5, and 0.8. The resultant values are approximately 15 and 6.25 % larger than the effect sizes entered into the analysis depending on a type 2 error rate of p < 0.20, or p < 0.10 respectively. Conclusions: Acceptance procedures approximate values wherein a decision could be made. In a health district a deviation at a particular level could signal a change in health. The approximations could be reasonable in some circumstances, but if more accurate measures are desired a deviation could be reduced by the percentage appropriate for the power. The tradeoff for such a procedure is an increase in type 1 error rate and a decrease in type 2 errors

AB - Background: Inferential statistical tests that approximate measurement are called acceptance procedures. The procedure includes type 1 error, falsely rejecting the null hypothesis, and type 2 error, failing to reject the null hypothesis when the alternative should be supported. This approach involves repeated sampling from a distribution with established parameters such that the probabilities of these errors can be ascertained. With low error probabilities the procedure has the potential to approximate measurement. How close this procedure approximates measurement was examined. Findings: A Monte Carlo procedure set the type 1 error at p = 0.05 and the type 2 error at either p = 0.20 or p = 0.10 for effect size values of d = 0.2, 0.5, and 0.8. The resultant values are approximately 15 and 6.25 % larger than the effect sizes entered into the analysis depending on a type 2 error rate of p < 0.20, or p < 0.10 respectively. Conclusions: Acceptance procedures approximate values wherein a decision could be made. In a health district a deviation at a particular level could signal a change in health. The approximations could be reasonable in some circumstances, but if more accurate measures are desired a deviation could be reduced by the percentage appropriate for the power. The tradeoff for such a procedure is an increase in type 1 error rate and a decrease in type 2 errors

M3 - Article

VL - 9

SP - 487

EP - 489

JO - BMC Research Notes

JF - BMC Research Notes

SN - 1756-0500

M1 - 241

ER -