Seeking Evidence for Basing the CS Theory Course on Non-decision Problems (Abstract Only)

J. MacCormick
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引用次数: 2

Abstract

Computational and complexity theory are core components of the computer science curriculum, and in the vast majority of cases they are taught using decision problems as the main paradigm. For experienced practitioners, decision problems are the best tool. But for undergraduates encountering the material for the first time, non-decision problems (such as optimization problems and search problems) may be preferable. This lightning talk will give a brief pointer to some new technical definitions and pedagogical strategies that have been used successfully for teaching the theory course using non-decision problems as the central concept. For example, instead of the familiar complexity classes P and NP, we can define analogous classes of non-decision problems, Poly and NPoly. The key question behind this lightning talk is to ask whether the new definitions and strategies are actually beneficial. Anecdotal evidence and certain theories of learning suggest the new approach should result in superior learning outcomes for students. We are seeking ideas, feedback, and collaborators interested in investigating this hypothesis and obtaining stronger evidence for it. To summarize, our central question is: how can we investigate whether students gain a superior grasp of computational and complexity theory when they are taught primarily using non-decision problems?
基于非决策问题的计算机科学理论课程的证据探索(仅摘要)
计算和复杂性理论是计算机科学课程的核心组成部分,在绝大多数情况下,他们使用决策问题作为主要范例来教授。对于有经验的从业者来说,决策问题是最好的工具。但对于第一次接触材料的本科生,非决策问题(如优化问题和搜索问题)可能更可取。这次闪电演讲将简要介绍一些新的技术定义和教学策略,这些定义和策略已经成功地用于以非决策问题为中心概念的理论课教学。例如,我们可以定义非决策问题的类似类Poly和NPoly,而不是我们熟悉的复杂度类P和NP。这个闪电演讲背后的关键问题是,新的定义和策略是否真的有益。轶事证据和某些学习理论表明,新方法应该会给学生带来更好的学习成果。我们正在寻找想法、反馈,以及有兴趣调查这一假设并为其获得更有力证据的合作者。总而言之,我们的中心问题是:当学生主要使用非决策问题进行教学时,我们如何调查他们是否能更好地掌握计算和复杂性理论?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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