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Cross-National Measurement of Mathematics Intrinsic Motivation: An Investigate of Measurement Invariance with MG-CFA and Aligment Method Across Fourteen Countries

Year 2024, Volume: 17 Issue: 1, 1 - 27, 28.01.2024
https://doi.org/10.30831/akukeg.1207350

Abstract

One of the main objectives of international large-scale assessments is to make comparisons between different countries, education policies, education systems, or subgroups. One of the main criteria for making comparisons between different groups is to ensure measurement invariance. The purpose of this study was to test the measurement invariance of the mathematics intrinsic motivation scale across 14 countries. For this purpose, the "students like learning mathematics" scale, which measures intrinsic motivation for mathematics, was included in the TIMSS 2019 cycle. The study sample consisted of a total of 152992 students, 70192 4th grade and 82800 8th grade students from 14 different countries participating in the TIMSS 2019 cycle. Measurement invariance was tested with Multi-Group Confirmatory Factor Analysis (MG-CFA) and Alignment Method. The mathematics intrinsic motivation scale provides only configural invariance according to MG-CFA at the 4th grade level, whereas the scale provides approximate invariance according to the alignment method. At the 8th grade level, the scale provides configural and metric invariance according to MG-CFA, whereas the scale provides approximate invariance according to the alignment method. The results indicate that the mathematics intrinsic motivation scale provides approximate measurement invariance at both grade levels and that comparisons can be made between the scores of the identified countries.

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Matematikte İçsel Motivasyonun Ülkeler Arası Ölçümü: On Dört Ülkede MG-CFA ve Hizalama Yöntemi ile Ölçme Değişmezliğinin İncelenmesi

Year 2024, Volume: 17 Issue: 1, 1 - 27, 28.01.2024
https://doi.org/10.30831/akukeg.1207350

Abstract

Geniş ölçekli uluslararası değerlendirmelerin temel amaçlarından biri, farklı ülkeler, eğitim politikaları, eğitim sistemleri veya alt gruplar arasında karşılaştırmalar yapmaktır. Farklı gruplar arasında karşılaştırma yapmanın temel ölçütlerinden biri de ölçme değişmezliğinin sağlanmasıdır. Bu çalışmanın amacı, matematik içsel motivasyon ölçeğinin 14 ülke arasında ölçme değişmezliğini test etmektir. Bu amaçla, matematiğe yönelik içsel motivasyonu ölçen "öğrenciler matematik öğrenmeyi sever" ölçeği TIMSS 2019 döngüsüne dahil edilmiştir. Çalışmanın örneklemi TIMSS 2019 döngüsüne katılan 14 farklı ülkeden 70192 4. sınıf ve 82800 8. sınıf öğrencisi olmak üzere toplam 152992 öğrenciden oluşmaktadır. Ölçme değişmezliği, Çok Gruplu Doğrulayıcı Faktör Analizi (MG-CFA) ve Hizalama Yöntemi ile test edilmiştir. Matematik içsel motivasyon ölçeği, 4. sınıf düzeyinde MG-CFA'ya göre sadece yapısal değişmezliği sağlarken, hizalama yöntemine göre yaklaşık değişmezliği sağlamaktadır. 8. sınıf düzeyinde ise ölçek, MG-CFA'ya göre konfigüral ve metrik değişmezliği sağlarken, hizalama yöntemine göre yaklaşık değişmezliği sağlamaktadır. Sonuçlar, matematik içsel motivasyon ölçeğinin her iki sınıf düzeyinde de yaklaşık ölçme değişmezliğini sağladığını ve belirlenen ülkelerin puanları arasında karşılaştırmalar yapılabileceğini göstermektedir.

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  • Ertürk, Z., & Erdinç-Akan, O. (2018). TIMSS 2015 matematik başarısı ile ilgili bazı değişkenlerin cinsiyete göre ölçme değişmezliğinin incelenmesi. Journal of Theoretical Educational Science, 204-226.
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  • Forero, C. G., Maydeu-Olivares, A., & Gallardo-Pujol, D. (2009). Factor analysis with ordinal indicators: A Monte Carlo study comparing DWLS and ULS estimation. Structural Equation Modeling: A Multidisciplinary Journal, 16(4), 625–641. https://doi.org/10.1080/10705510903203573
  • Freiberger, V., Steinmayr, R., & Spinath, B. (2012). Competence beliefs and perceived ability evaluations: How do they contribute to intrinsic motivation and achievement?. Learning and individual differences, 22(4), 518-522. doi: https://doi.org/10.1016/j.lindif.2012.02.004
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  • He, J., Barrera-Pedemonte, F., & Buchholz, J. (2019). Cross-cultural comparability of noncognitive constructs in TIMSS and PISA. Assessment in Education Principles Policy and Practice, 26(4), 369–385. https://doi.org/10.1080/0969594x.2018.1469467
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  • Hooper, M., Mullis, I. V., Martin, M. O., & Fishbein, B. (2020). TIMSS 2019 context questionnaire framework. TIMSS, 59-78.
  • Horn, J. L., & McArdle, J. J. (1992). A practical and theoretical guide to measurement invariance in aging research. Experimental Aging Research, 18(3–4), 117–144. https://doi.org/10.1080/03610739208253916
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  • Ilter, İ. (2021). The relationship between academic amotivation and academic achievement: A study on middle school students. Kuramsal Eğitimbilim Dergisi, 14(3), 389–410. https://doi.org/10.30831/akukeg.847145
  • İlhan, M., & Çetin, B. (2013). Matematik odaklı epistemolojik inanç ölçeği (MOEİÖ): Geçerlik ve güvenirlik çalışması. Kurumsal Eğitimbilim Dergisi, 362-368.
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Details

Primary Language English
Subjects Specialist Studies in Education (Other)
Journal Section Articles
Authors

Mahmut Sami Yiğiter 0000-0002-2896-0201

Early Pub Date January 12, 2024
Publication Date January 28, 2024
Submission Date November 19, 2022
Published in Issue Year 2024 Volume: 17 Issue: 1

Cite

APA Yiğiter, M. S. (2024). Cross-National Measurement of Mathematics Intrinsic Motivation: An Investigate of Measurement Invariance with MG-CFA and Aligment Method Across Fourteen Countries. Journal of Theoretical Educational Science, 17(1), 1-27. https://doi.org/10.30831/akukeg.1207350