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Secondary School Students' Academic Risk Taking Behaviors: A Scale Development Study

Yıl 2013, Cilt: 4 Sayı: 2, 1 - 28, 14.01.2013

Öz

 Extended Abstract

Purpose: The present study aims to develop a valid and reliable instrument for measuring secondary school students' mathematics-oriented academic risk taking behavior.
Method: The participants were 553 secondary school students studying in Manisa and Batman in 2011-2012 academic year first semester and comprised three study groups. Expert opinion was consulted with regard to the scale's content and face validity. Exploratory Factor Analysis (EFA) and Confirmatory Factor Analysis (CFA) were performed in order to measure the scale's construct validity. For criterion related validity the correlation Mathematics-Oriented Academic Risk Taking Scale (MOARTS) and Academic Expectations Stress Inventory (AESI) was calculated. The reliability of the MOARTS was tested through such coefficients as internal consistency, split-half and test retest. The item discrimination of the MOARTS was calculated through the corrected item total correlation and a comparison between the top and bottom 27% groups. The validity and reliability analyzes were carried out with SPSS 20.0 and LISREL 8.54
Results: According to first EFA results, a three-factor structure which explained 48.84% of the total variance was obtained. Taking into consideration the items' content and theoretical structure, the primary factor was named Tendency to Difficult Tasks (TDT) the second factor was named Tendency to Negativity Following Failure (TNFF) and the third factor was named Tendency to Recovery Following Failure (TRFF). In order to understand whether the 24 items and three-factor structure obtained as a result of the EFA gives adequate goodness of fit indices, and to obtain further support for construct validity, CFA was performed. The CFA findings from have shown that the scale has adequate goodness of fit indices [χ2/sd=2.54, CFI=.96, NFI=.93, NNFI=95, RFI=.92, IFI=.96, RMSEA=.069 and SRMR=.060]. According to concurrent validity results, there is a negative relationship between AESI and MOARTS; TDT, TRFF [n=119 and respectively, r=-.51, r=-.43, r=-23; p<.001], and there is a positive relationship between AESI and TNFF [n=119, r=.45, p<.001]. These findings have been regarded as proof that MOARTS has concurrent validity. The reliability analysis showed that the internal consistency coefficients were .89, .90, .74 and .80 for the MOARTS, TDT, TNFF and TRFF respectively. On the other hand, the split-half coefficients .74, .90, .74 and .79 for MOARTS, TDT, TNFF and TRFF respectively whereas the test retest coefficients were .95, .96, .90 and .88 for MOARTS, TDT, TNFF and TRFF respectively. The item analysis reported that the corrected item total correlations ranged from .40 and .73 and the differences between the top and bottom 27% groups were significant for all the items included in the scale.
Conclusion: In light of the findings it could be argued that the scale is reliable and valid and can be used in order to test secondary school students' mathematics-oriented academic risk taking behaviors.

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Ortaokul Öğrencilerinin Matematik Odaklı Akademik Risk Alma Davranışları: Bir Ölçek Geliştirme Çalışması

Yıl 2013, Cilt: 4 Sayı: 2, 1 - 28, 14.01.2013

Öz

Bu araştırmada, matematik odaklı akademik risk alma davranışını geçerli ve güvenilir olarak ölçemeye olanak tanıyacak bir ölçme aracının geliştirilmesi amaçlanmaktadır. Araştırmanın katılımcılarını, 2012-2013 Eğitim-Öğretim Yılı Güz Döneminde Manisa ve Batman illerinden toplam 553 ortaokul öğrencisi oluşmaktadır. Araştırmada ölçeğin kapsam ve görünüş geçerliği için uzman görüşüne başvurulmuştur. Ölçeğin yapı geçerliği için Açımlayıcı Faktör Analizi (AFA) ve Doğrulayıcı Faktör Analizi (DFA) uygulanmıştır. AFA’da sonucunda, toplam varyansın %48.84’ünü açıklayan, 24 madde ve üç faktörden oluşan bir yapı elde edilmiştir. Ortaya çıkan faktörler; Güç İşlemleri Tercih Etme Eğilimi (GİTE), Başarısızlık Sonrası Olumsuzluk Eğilimi (BSOE) ve Başarısızlık Sonrası Toparlanma Eğilimi (BSTE) olarak adlandırılmıştır. DFA’dan elde edilen bulgular, MOARAÖ’ye ilişkin 24 madde ve üç faktörden oluşan yapının yeterli uyum indekslerine sahip olduğunu göstermiştir. MOARAÖ’nün uyum geçerliği için, öğrencilerin ölçeğin alt boyutlarından aldıkları puanlar ile Akademik Beklentilere İlişkin Stres Envanteri’nden (ABSE) aldıkları puanlar arasındaki korelasyon hesaplanmıştır. Korelasyon analizinden elde edilen bulgular, ABSE’nin MOARAÖ’nün geneli, GİTE ve BSTE alt ölçekleri ile negatif; BSOE alt ölçeği ile pozitif anlamlı ilişki içersinde olduğunu göstermiştir. Korelasyon analizinden elde edilen bulgular MOARAÖ’nün uyum geçerliğinin sağlandığına yönelik bir kanıt olarak değerlendirilmiştir. MOARAÖ’nün geneli ile GİTE, BSOE ve BSTE alt ölçeklerinin güvenirliği iç tutarlılık, test yarılama ve test tekrar test yöntemleriyle incelenmiştir. Hesaplanan güvenirlik katsayılarının kabul edilebilir sınırlar içerisinde yer aldığı belirlenmiştir. MOARAÖ’de yer alan maddelerin ayırt edicilikleri için düzeltilmiş madde toplam korelasyonu ile %27’lik alt üst grup karşılaştırmalarına yer verilmiştir. Madde analizi sonucunda, düzeltilmiş madde toplam korelasyonlarının .40 ile .73 arasında değiştiği ve %27’lik alt-üst grupların ortalamaları arasındaki farkların ölçekte yer alan tüm maddeler için anlamlı olduğu belirlenmiştir. Bu bulgulara dayanarak, ölçeğin ortaokul öğrencilerinin matematik odaklı akademik risk alma davranışlarını ölçmek amacıyla kullanılabilecek geçerli ve güvenilir bir ölçme aracı olduğu söylenebilir

Kaynakça

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Toplam 124 adet kaynakça vardır.

Ayrıntılar

Birincil Dil Türkçe
Konular Eğitim Üzerine Çalışmalar
Bölüm Eğitim Bilimleri ve Alan Eğitimi Bilimleri
Yazarlar

Arş.grv.mustafa İlhan

Doçdr.bayram Çetin

Yayımlanma Tarihi 14 Ocak 2013
Yayımlandığı Sayı Yıl 2013Cilt: 4 Sayı: 2

Kaynak Göster

APA İlhan, A., & Çetin, D. (2013). Ortaokul Öğrencilerinin Matematik Odaklı Akademik Risk Alma Davranışları: Bir Ölçek Geliştirme Çalışması. E-Uluslararası Eğitim Araştırmaları Dergisi, 4(2), 1-28.

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