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cs students. volume 33, pages 125–180, USA, 2001.
The result of this work is a framework proposal for CT in ACM New York.
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The future work should be oriented toward implementing powerful ideas. Basic Books, Inc, USA, 1980.
computer programming artefact based on proposed CTF.
The envisioned outcome of further research might be the [13] D. Parnas. On the criteria to be used in decomposing
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computer programming tasks within the higher education USA, 1972. ACM.
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[14] M. S. Peteranetz, L.-K. Soh, and E. Ingraham.
Furthermore, the proposed CTF should stimulate further Building computational creativity in an online course
research in the context of success or failure of novices in in- for non-majors. pages 442–448, Minneapolis, USA,
troductory programming in higher education, often referred 2019. ACM New York.
as “CS1 dropout rate”. The researchers observed that the
dropout rate problem can be divided to the following two [15] G. Rambally. Integrating computational thinking in
categories: language problem and design problem [11]. If discrete structures. pages 99–119, Switzerland, 2017.
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foundation for CT assessment, a potential predictor for the [16] M. Romero, A. Lepage, and B. Lille. Computational
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in higher education. volume 14, pages 1–15, 2017.
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