Model-Agnostic Adaptive Testing for Intelligent Education Systems via Meta-learned Gradient Embeddings

Author:

Bi Haoyang1ORCID,Liu Qi2ORCID,Wu Han3ORCID,He Weidong1ORCID,Huang Zhenya2ORCID,Yin Yu1ORCID,Ma Haiping4ORCID,Su Yu5ORCID,Wang Shijin6ORCID,Chen Enhong7ORCID

Affiliation:

1. University of Science and Technology of China, China

2. State Key Laboratory of Cognitive Intelligence, University of Science and Technology of China, China and Hefei Comprehensive National Science Center, China

3. Career Science Lab, Boss Zhipin, China

4. Anhui University, China

5. Hefei Normal University, China and Hefei Comprehensive National Science Center, China

6. iFLYTEK AI Research (Central China), China

7. State Key Laboratory of Cognitive Intelligence, University of Science and Technology of China, China

Abstract

The field of education has undergone a significant revolution with the advent of intelligent systems and technology, which aim to personalize the learning experience, catering to the unique needs and abilities of individual learners. In this pursuit, a fundamental challenge is designing proper test for assessing the students’ cognitive status on knowledge and skills accurately and efficiently. One promising approach, referred to as Computerized Adaptive Testing (CAT), is to administrate computer-automated tests that alternately select the next item for each examinee and estimate their cognitive states given their responses to the selected items. Nevertheless, existing CAT systems suffer from inflexibility in item selection and ineffectiveness in cognitive state estimation, respectively. In this paper, we propose a Model-Agnostic adaptive testing framework via Meta-leaned Gradient Embeddings, MAMGE for short, improving both item selection and cognitive state estimation simultaneously. For item selection, we design a Gradient Embedding based Item Selector (GEIS) which incorporates the concept of gradient embeddings to represent items and selects the best ones that are both informative and representative. For cognitive state estimation, we propose a Meta-learned Cognitive State Estimator (MCSE) to automatically control the estimation process by learning to learn a proper initialization and dynamically inferred updates. Both MCSE and GEIS are inherently model-agnostic, and the two modules have an ingenious connection via meta-learned gradient embeddings. Finally, extensive experiments evaluate the effectiveness and flexibility of MAMGE.

Publisher

Association for Computing Machinery (ACM)

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4. Learning to Forget for Meta-Learning

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