Teaching the Specialized Language of Mathematics with a Data-Driven Approach: What Data Do We Use?
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Abstract:
Numerous studies in Mathematics Education have shown that among the causes of disciplinary learning difficulties are the acquisition and understanding of its specialized language.Data-Driven Learning (DDL) is a didactic approach that treats language as data and sees students as researchers doing guided discovery activities. The exploration of corpora can effectively support reflection on the specialized languages of Mathematics. What data should be used? Students daily use the most recent Large Language Models (LLM) and Google, which can be used for linguistic investigations. However, it must be remembered that there is no total control over the data on which searches are carried out, the results, and the type of language they use. Control over the data is important, especially when teachers want to use these tools to design and deliver didactic activities. This paper presents a recent DDL research activity with 80 secondary school students on the specialized language of Mathematics. The students conducted linguistic investigations on a specially designed corpus and carried out corpus-based activities with automatic formative assessment within a Digital Learning Environment. The results show that the students appreciated the proposed activities. They develop linguistic and mathematical skills and become more aware of the importance of the language they use. Students developed digital skills in browsing, searching, and filtering data, as well as in evaluating data, information, and digital content. LLM, such as ChatGPT, could not be used for the same type of activity, but with appropriate design, they can be used as a starting point for investigation and linguistic reflection. In the future, given the notable diffusion of these AI tools, it is essential to train teachers and students on their strengths and weaknesses and how
they influence teaching and learning.
Tipologia CRIS:
04A-Conference paper in volume
Keywords:
Data-Driven Learning, Large Language Model, Language for Specific Purposes, Mathematics Education
Elenco autori:
Fissore, Cecilia; Floris, Francesco; Conte, Marina Marchisio; Sacchet, Matteo
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Titolo del libro:
Bridging the Gap Between AI and Reality. AISoLA 2023. Lecture Notes in Computer Science
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