K-12 年级人工智能教育的数据相关概念

IF 4.1 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Viktoriya Olari, Ralf Romeike
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引用次数: 0

摘要

由于人工智能(AI)的进步,计算机科学教育已迅速开始在 K-12 教育中纳入与人工智能相关的主题。尽管这一发展既及时又重要,但也令人担忧,因为针对 K-12 的人工智能领域的阐述仍在进行之中。目前的努力可能大大低估了作为人工智能系统基本组成部分的数据的作用。如果我们的目标是让学生了解人工智能系统是如何工作的,那么与数据处理相关的关键概念知识就是先决条件,因为数据的收集、准备和工程与人工智能系统的功能密切相关。为了推动这一领域的发展,以下研究全面收集了与 K-12 计算机科学教育相关的关键数据相关概念。这些概念是通过对人工智能领域的理论回顾而确定的,通过对学校教育人工智能课程的回顾而调整的,通过对领域专家和教师的访谈而评估的,并根据数据生命周期进行了分层结构化。计算机科学教育工作者可以将精心设计的结构作为设计学习安排的概念指南,旨在让学生了解人工智能系统是如何创建和运行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-related concepts for artificial intelligence education in K-12

Due to advances in Artificial Intelligence (AI), computer science education has rapidly started to include topics related to AI along K-12 education. Although this development is timely and important, it is also concerning because the elaboration of the AI field for K-12 is still ongoing. Current efforts may significantly underestimate the role of data, the fundamental component of an AI system. If the goal is to enable students to understand how AI systems work, knowledge of key concepts related to data processing is a prerequisite, as data collection, preparation, and engineering are closely linked to the functionality of AI systems. To advance the field, the following research provides a comprehensive collection of key data-related concepts relevant to K-12 computer science education. These concepts were identified through a theoretical review of the AI field, aligned through a review of AI curricula for school education, evaluated through interviews with domain experts and teachers, and structured hierarchically according to the data lifecycle. Computer science educators can use the elaborated structure as a conceptual guide for designing learning arrangements that aim to enable students to understand how AI systems are created and function.

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