How learners produce data from text in classifying clickbait

IF 1.2 Q2 EDUCATION & EDUCATIONAL RESEARCH Teaching Statistics Pub Date : 2023-01-28 DOI:10.1111/test.12339
N. Horton, J. Chao, P. Palmer, W. Finzer
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引用次数: 1

Abstract

Text provides a compelling example of unstructured data that can be used to motivate and explore classification problems. Challenges arise regarding the representation of features of text and student linkage between text representations as character strings and identification of features that embed connections with underlying phenomena. In order to observe how students reason with text data in scenarios designed to elicit certain aspects of the domain, we employed a task‐based interview method using a structured protocol with six pairs of undergraduate students. Our goal was to shed light on students' understanding of text as data using a motivating task to classify headlines as “clickbait” or “news.” Three types of features (function, content, and form) surfaced, the majority from the first scenario. Our analysis of the interviews indicates that this sequence of activities engaged the participants in thinking at both the human‐perception level and the computer‐extraction level and conceptualizing connections between them.
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学习者如何在分类点击诱饵时从文本中生成数据
文本提供了一个引人注目的非结构化数据示例,可用于激励和探索分类问题。挑战出现在文本特征的表示和文本表示与字符串之间的学生联系以及嵌入与潜在现象联系的特征识别方面。为了观察学生如何在旨在引出领域某些方面的场景中对文本数据进行推理,我们采用了基于任务的访谈方法,使用结构化协议对六对本科生进行了访谈。我们的目标是通过一个激励任务,将标题分类为“标题党”或“新闻”,来阐明学生对文本作为数据的理解。出现了三种类型的特性(功能、内容和形式),其中大多数来自第一种场景。我们对访谈的分析表明,这一系列活动使参与者在人类感知水平和计算机提取水平上进行思考,并概念化它们之间的联系。
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来源期刊
Teaching Statistics
Teaching Statistics EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
2.10
自引率
25.00%
发文量
31
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