Abstract

One of the highest ambitions in educational technology is the move towards personalized learning. To this end, computerized adaptive learning (CAL) systems are developed. A popular method to track the development of student ability and item difficulty, in CAL systems, is the Elo Rating System (ERS). The ERS allows for dynamic model parameters by updating key parameters after every response. However, drawbacks of the ERS are that it does not provide standard errors and that it results in rating variance inflation. We identify three statistical issues responsible for both of these drawbacks. To solve these issues we introduce a new tracking system based on urns, where every person and item is represented by an urn filled with a combination of green and red marbles. Urns are updated, by an exchange of marbles after each response, such that the proportions of green marbles represent estimates of person ability or item difficulty. A main advantage of this approach is that the standard errors are known, hence the method allows for statistical inference, such as testing for learning effects. We highlight features of the Urnings algorithm and compare it to the popular ERS in a simulation study and in an empirical data example from a large-scale CAL application.

Highlights

  • IntroductionOne key ambition in educational technology is the move towards personalized learning

  • One key ambition in educational technology is the move towards personalized learning.This development holds the promise of making tailor-made education available to everyone through online systems, allowing each learner to maximally realize their learning potential and improve both the learning process and learning outcomes

  • In Item Response Theory (IRT) skills are conceptualized as continuous variables1 ; This conceptualization of skill is just one of many aspects that guides the choice of suitable learner models; see Pelánek et al (2017) for an overview

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Summary

Introduction

One key ambition in educational technology is the move towards personalized learning This development holds the promise of making tailor-made education available to everyone through online systems, allowing each learner to maximally realize their learning potential and improve both the learning process and learning outcomes. To this end, large-scale computer adaptive learning (CAL) systems are developed. Large-scale computer adaptive learning (CAL) systems are developed These systems are designed to dynamically adjust the level or type of practice and instruction materials based on an individual learner’s performance. In Item Response Theory (IRT) skills are conceptualized as continuous variables ; This conceptualization of skill is just one of many aspects that guides the choice of suitable learner models; see Pelánek et al (2017) for an overview

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