Methodological pathway for instrument validation in engineering research

The process of validating measurement instruments is fundamental to research, especially in engineering, to ensure that the data obtained is reliable. This process consists of two main phases: a qualitative and a quantitative one. The qualitative phase is based on the judgment of experts, who evalua...

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Bibliographic Details
Authors: Abanto Duran, Roger Francisco, Cabrera Sernaque , Flor Rosmery, González Sánchez , José Luis, Ruiz Sirlopu , José Ronald, Rodríguez Moncada , Juan José
Format: article
Status:Published version
Publication Date:2026
Country:Perú
Institution:Universidad Nacional de Jaén
Repository:Pakamuros
Language:Spanish
OAI Identifier:oai:unj:article/835
Online Access:https://revistas.unj.edu.pe/index.php/pakamuros/article/view/835
Access Level:Open access
Keyword:Aiken’s V Coefficient; Cronbach’s Alpha; Normality Test.
coeficiente V de Aiken
alfa de Cronbach
prueba de normalidad
Description
Summary:The process of validating measurement instruments is fundamental to research, especially in engineering, to ensure that the data obtained is reliable. This process consists of two main phases: a qualitative and a quantitative one. The qualitative phase is based on the judgment of experts, who evaluate the instrument's relevance. To quantify this consensus and reduce subjectivity, Aiken's V coefficient is used. Subsequently, the quantitative phase focuses on measuring the instrument's internal reliability using Cronbach's Alpha, with an acceptable value between 0.7 and 0.9. After validation, the normality of the data is evaluated using tests such as Shapiro-Wilk for small samples (less than 50) or Kolmogorov-Smirnov for large samples (50 or more). This evaluation is crucial for selecting the appropriate statistical tests: if the data follows a normal distribution, parametric tests like the t-Student are applied; otherwise, non-parametric tests like the Mann-Whitney U are chosen.