2011
DOI: 10.1080/00131881.2011.552241
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The potential of multivariate analysis in assessing students' attitude to curriculum subjects

Abstract: Background: Understanding student attitudes to curriculum subjects is central to providing evidence-based options to policy makers in education. Purpose: We illustrate how quantitative approaches used in the social sciences and based on multivariate analysis (categorical Principal Components Analysis, Clustering Analysis and General Linear Modelling), can complement qualitative analysis to support this need. Sample: Our example involved an attitude survey of 128 students from five high schools across Botswana … Show more

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Cited by 9 publications
(6 citation statements)
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“…Third, an unconstrained principal component analysis (PCA) was conducted with the coping appraisal variables in order to present the Euclidean distance between the combinations in an ordination plot. PCA is a method often used in ecology, but increasingly also in the social sciences, to reduce the dimensionality of the data, extracting its most important information and revealing patterns of similarity . To display the groups in the most representative way, a group overlay was passed to the plot (Fig.…”
Section: Hypotheses Case Studies Data and Methodsmentioning
confidence: 99%
“…Third, an unconstrained principal component analysis (PCA) was conducted with the coping appraisal variables in order to present the Euclidean distance between the combinations in an ordination plot. PCA is a method often used in ecology, but increasingly also in the social sciences, to reduce the dimensionality of the data, extracting its most important information and revealing patterns of similarity . To display the groups in the most representative way, a group overlay was passed to the plot (Fig.…”
Section: Hypotheses Case Studies Data and Methodsmentioning
confidence: 99%
“…By performing the PCA, data from the questionnaires was arranged and parameterized along the principal factors that describe attitudes of girls towards Design and Technology. In the PCA, objects or variables that are similar to each other have similar scores on each factor (or axis), while dissimilar ones are far apart (Gaotlhobogwe et al, 2011). This visual understanding from the PCA provided inference on the patterns of attitudes of girls towards Design and Technology in Botswana and Swaziland.…”
Section: Data Analysis: Identifying Factors That Influence Girls' Attmentioning
confidence: 99%
“…The short history of Design and Technology in Southern Africa and its association with notions of craft have made it an unpopular subject in schools because neither teachers nor students are familiar with it. Gaotlhobogwe, Laugharne, and Durance (2011) noted that in Europe and the USA 20 years ago, as in Africa today, technology education was new in the curriculum and had evolved from craft-based subjects aimed at less academically oriented students and this appeared to be the main reason why students did not perceive the subject as an important one to choose. Becker and Maunasaiyat (2002) observed that through PATT studies around the world, it became evident that students had incomplete and vague concepts of technology.…”
Section: Literature Reviewmentioning
confidence: 99%
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“…Factor analysis is a method commonly used in educational research that categorizes sets of statements by correlations apparent between responses to individual statements, and has been particularly utilized with attitudinal surveys (e.g., Gaothlobogwe et al, 2011). In both steps of the analysis, a principle components analysis with a direct oblimin rotation is used.…”
Section: Categorizationmentioning
confidence: 99%