TY - GEN
T1 - Learning skill equivalencies across platform taxonomies
AU - Li, Zhi
AU - Ren, Cheng
AU - Li, Xianyou
AU - Pardos, Zachary A.
N1 - Publisher Copyright: © 2021 ACM.
PY - 2021/4/12
Y1 - 2021/4/12
N2 - Assessment and reporting of skills is a central feature of many digital learning platforms. With students often using multiple platforms, cross-platform assessment has emerged as a new challenge. While technologies such as Learning Tools Interoperability (LTI) have enabled communication between platforms, reconciling the different skill taxonomies they employ has not been solved at scale. In this paper, we introduce and evaluate a methodology for finding and linking equivalent skills between platforms by utilizing problem content as well as the platform's clickstream data. We propose six models to represent skills as continuous real-valued vectors, and leverage machine translation to map between skill spaces. The methods are tested on three digital learning platforms: ASSISTments, Khan Academy, and Cognitive Tutor. Our results demonstrate reasonable accuracy in skill equivalency prediction from a fine-grained taxonomy to a coarse-grained one, achieving an average recall@5 of 0.8 between the three platforms. Our skill translation approach has implications for aiding in the tedious, manual process of taxonomy to taxonomy mapping work, also called crosswalks, within the tutoring as well as standardized testing worlds.
AB - Assessment and reporting of skills is a central feature of many digital learning platforms. With students often using multiple platforms, cross-platform assessment has emerged as a new challenge. While technologies such as Learning Tools Interoperability (LTI) have enabled communication between platforms, reconciling the different skill taxonomies they employ has not been solved at scale. In this paper, we introduce and evaluate a methodology for finding and linking equivalent skills between platforms by utilizing problem content as well as the platform's clickstream data. We propose six models to represent skills as continuous real-valued vectors, and leverage machine translation to map between skill spaces. The methods are tested on three digital learning platforms: ASSISTments, Khan Academy, and Cognitive Tutor. Our results demonstrate reasonable accuracy in skill equivalency prediction from a fine-grained taxonomy to a coarse-grained one, achieving an average recall@5 of 0.8 between the three platforms. Our skill translation approach has implications for aiding in the tedious, manual process of taxonomy to taxonomy mapping work, also called crosswalks, within the tutoring as well as standardized testing worlds.
KW - Acknowledging prior knowledge
KW - App hand-offs.
KW - Crosswalks
KW - Digital learning platforms
KW - Interoperability
KW - Machine translation
KW - Representation learning
KW - Skill equivalencies
KW - Taxonomies
KW - Transfer models
UR - https://www.scopus.com/pages/publications/85103919452
U2 - 10.1145/3448139.3448173
DO - 10.1145/3448139.3448173
M3 - Conference contribution
T3 - ACM International Conference Proceeding Series
SP - 354
EP - 363
BT - LAK 2021 Conference Proceedings - The Impact we Make
PB - Association for Computing Machinery
T2 - 11th International Conference on Learning Analytics and Knowledge: The Impact we Make: The Contributions of Learning Analytics to Learning, LAK 2021
Y2 - 12 April 2021 through 16 April 2021
ER -