706 resources

  • demzsky
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    document
    demzsky
  • J. H. Fife
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    journalArticle
    J. H. Fife

    This report provides an introduction to the m-rater™ engine, ETS’s automated scoring engine for computer-delivered constructed-response items when the response is a number, an equation (or mathematical expression), or a graph. This introduction is intended to acquaint the reader with the types of items that m-rater can score, the requirements for authoring these items onscreen, the methods m-rater uses to score these items, and the features these items must possess to be reliably scored....

  • Harsh Kumar, David M. Rothschild, Daniel...
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    journalArticle
    Harsh Kumar, David M. Rothschild, Daniel...

    The widespread availability of large language models (LLMs) has provoked both fear and excitement in the domain of education. On one hand, there is the concern that students will offload their coursework to LLMs, limiting what they themselves learn. On the other hand, there is the hope that LLMs might serve as scalable, personalized tutors. Here we conduct a large, pre-registered experiment involving 1200 participants to investigate how exposure to LLM-based explanations affect learning. In...

  • Susan Lottridge, Amy Burkhardt, Christop...
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    journalArticle
    Susan Lottridge, Amy Burkhardt, Christop...

    Every year, millions of middle-school students write argumentative essays that are evaluated against a scoring rubric. However, the scores they receive don’t necessarily offer clear guidance on how to improve their essay or what they’ve done well. With advancements in natural language processing technology, we now have the capability to provide more detailed feedback. At this juncture, we’ve developed an artificial intelligence-supported editing tool to assist students in revising their...

  • E Prihar, M Lee, M Hopman
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    journalArticle
    E Prihar, M Lee, M Hopman
  • Yiqiu Zhou, Maciej Pankiewicz, Luc Paque...
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    journalArticle
    Yiqiu Zhou, Maciej Pankiewicz, Luc Paque...

    This study examines how Large Language Model (LLM) feedback generated for compiler errors impacts learners’ persistence in programming tasks within a system for automated assessment of programming assignments. Persistence, the ability to maintain effort in the face of challenges, is crucial for academic success but can sometimes lead to unproductive "wheel spinning" when students struggle without progress. We investigated how additional LLM feedback based on the GPT-4 model, provided for...

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