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Open accessJournal ArticleDOI
Abdul Muin, S H Hanifah, F Diwidian 
01 Jan 2018
10 Citations
CPS model can facilitate development of mathematical adaptive reasoning skills thoroughly.
Open accessJournal ArticleDOI
Abdul Muin, S H Hanifah, F Diwidian 
01 Jan 2018
10 Citations
CPS model can develop student mathematical adaptive reasoning skills.
These studies establish a causal link between logical reasoning and mathematical learning.

Related Questions

What is mathematical logical reasoning?5 answersMathematical logical reasoning refers to the application of mathematical techniques to logic in order to rearrange facts and find desired information. It encompasses both formal and informal aspects of logic, with syntax representing how things are said and semantics representing what is meant. Theoretical foundations of programming for mathematical machines can be established through the synthesis of categorical and linear logic, forming a basis for programming as logical reasoning. Additionally, mathematical logic can involve deductive and quantitative inference, with various logic systems performing tasks known as Quantitative Logic Reasoning. These systems, such as propositional Probabilistic Logic and propositional Łukasiewicz Infinitely-valued Probabilistic Logic, exhibit analogous properties and can be studied using linear algebraic techniques. Mathematical logic also serves as a mathematical model of knowledge, allowing for the study of reasoning, description of the world, and inference of conclusions. It can be used for high-level reasoning with computer code, including self-programming and object-oriented analysis, among other tasks.
Teaching thinking skills, including logical reasoning, is essential in preparing students for the decision making?5 answersTeaching thinking skills, including logical reasoning, is essential in preparing students for decision making. Developing these skills can help students tackle complex problems in the future. The teaching of thinking skills is important for all learners and can be integrated into classroom teaching and learning. In the context of legal education, thinking skills such as legal reasoning, critical thinking, and creative thinking are considered crucial for law graduates. Enhancing students' logical reasoning is a goal in education, and it is important to consider how to teach reasoning skills effectively. A study suggests that teaching a thinking skills syllabus can enhance students' curiosity, inventiveness, discussion skills, lateral thinking, and understanding of the decision-making process. Therefore, teaching thinking skills, including logical reasoning, can have a significant impact on students' ability to make informed decisions.
Do logical thinking skills help students make better decisions?5 answersLogical thinking skills can help students make better decisions. Studying mathematics and logic can improve one's logical reasoning skills. Previous studies have found that students who have previous experience in logic show significant improvement in abstract conditional reasoning skills. The Group Assessment of Logical Thinking (GALT) has been found to be a reliable measure of logical reasoning abilities. Enhancing critical thinking and reasoning skills in mathematics education can lead to confident critical thinkers. Teaching logical reasoning skills can be integrated into different subjects, including mathematics, to enhance students' logical reasoning abilities. Therefore, developing logical thinking skills through education can contribute to better decision-making abilities in students.
How do I develop my numeracy skills?7 answers
How do you develop critical reasoning skills?3 answers
How do you develop verbal reasoning skills?8 answers

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