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Mathematical model that can support in solving real world probem? 


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Mathematical modeling can support in solving real-world problems by providing a framework for understanding and addressing complex situations. It helps in translating real-world problems into mathematical problems, making mathematical learning more meaningful for students . Mathematical modeling also enables students to develop problem-solving competencies and obtain patterns of problem-solving competence . Teacher education efforts and professional development opportunities play a crucial role in supporting the implementation of mathematical modeling in the curriculum . Research projects aim to identify factors that enable students to effectively apply mathematical modeling to real-world situations, leading to the development of principles for designing tasks that support students' development as modellers . Additionally, advances in convex optimization have made complex problems tractable and applicable in various fields, including operations research and data science, but more research is needed in the area of data representation and analysis .

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The paper discusses the use of convex optimization models to solve real-world optimization problems.
The paper discusses the role of "enablers" in helping secondary students effectively apply mathematical modeling to solve real-world problems. It does not specifically mention a mathematical model that can support in solving real-world problems.
The paper discusses efforts in teacher education and research on solving problems in real-world contexts, including mathematical modelling. It provides insights into the challenges and implications for teacher education and the advancement of mathematical modelling in the mathematics curriculum. However, it does not specifically mention a mathematical model that can support in solving real-world problems.
Open access
Tandin Wangdi, Sonam Pelden 
07 Oct 2020
1 Citations
The paper discusses the use of mathematical modeling as an intervention to help students solve real-world word problems in mathematics.
The paper discusses the design of support material for promoting mathematical modeling as real-world problem solving, but it does not specifically mention a mathematical model that can support in solving real-world problems.

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