A Comparison of Spoken and Written Language Use in Traditional and Technology-Mediated Learning Environments

Q3 Social Sciences
Kristopher Kyle, Ann Tai Choe, Masaki Eguchi, Geoff LaFlair, Nicole Ziegler
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引用次数: 1

Abstract

A key piece of a validity argument for a language assessment tool is clear overlap between assessment tasks and the target language use (TLU) domain (i.e., the domain description inference). The TOEFL 2000 Spoken and Written Academic Language (T2K-SWAL) corpus, which represents a variety of academic registers and disciplines in traditional learning environments (e.g., lectures, office hours, textbooks, course packs), has served as an important foundation for the TOEFL iBT® test's domain description inference for more than 15 years. There are, however, signs that the characteristics of the registers that students encounter may be changing. Increasingly, typical university courses include technology-mediated learning environments (TMLEs), such as those represented by course management software and other online educational tools. To ensure that the characteristics of TOEFL iBT test tasks continue to align with the TLU domain, it is important to analyze the registers that are typically encountered in TMLEs. In this study, we address this issue by collecting a relatively large (4.5 million words) corpus of spoken and written TMLE registers across the six primary disciplines represented in T2K-SWAL. This corpus was subsequently tagged for a wide variety of linguistic features, and a multidimensional analysis was conducted to compare and contrast written and spoken language in TMLE and T2K-SWAL. The results indicate that although some similarities exist across spoken and written texts in traditional learning environments and TMLEs, language use also differs across learning environments (and modes) with regard to key linguistic dimensions.

Abstract Image

传统和技术媒介学习环境中口语和书面语使用的比较
语言评估工具有效性论证的一个关键部分是评估任务和目标语言使用(TLU)领域(即领域描述推理)之间的明显重叠。托福2000口语和书面学术语言(T2K-SWAL)语料库代表了传统学习环境(例如,讲座,办公时间,教科书,课程包)中的各种学术注册和学科,已作为托福iBT®考试领域描述推理的重要基础超过15年。然而,有迹象表明,学生们遇到的注册表的特征可能正在发生变化。典型的大学课程越来越多地包括以技术为媒介的学习环境(TMLEs),例如以课程管理软件和其他在线教育工具为代表的学习环境。为了确保托福网考任务的特点继续与TLU领域保持一致,分析tml中通常遇到的寄存器是很重要的。在本研究中,我们通过收集T2K-SWAL所代表的六个主要学科中相对较大(450万字)的口头和书面TMLE语域语料库来解决这一问题。随后,该语料库被标记为各种各样的语言特征,并进行了多维分析,以比较和对比TMLE和T2K-SWAL的书面和口头语言。结果表明,尽管传统学习环境和TMLEs中口语和书面语存在一些相似性,但在关键的语言维度上,语言使用在不同的学习环境(和模式)中也存在差异。
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来源期刊
ETS Research Report Series
ETS Research Report Series Social Sciences-Education
CiteScore
1.20
自引率
0.00%
发文量
17
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