Curriculum Recommendations Using Transformer Base Model with InfoNCE Loss And Language Switching Method
Xiaonan Xu, Bin Yuan, Yongyao Mo, Tianbo Song, Shulin Li

TL;DR
This paper introduces a novel curriculum recommendation approach that combines a Transformer base model, InfoNCE loss, and language switching to improve personalized learning and address translation challenges.
Contribution
It presents a new methodology integrating Transformer models, InfoNCE loss, and language switching to enhance curriculum recommendations and overcome translation-related content conflicts.
Findings
Achieved a cross-validation score of 0.66314 with sentence-transformers/LaBSE.
Demonstrated improved content alignment prediction across multiple languages.
Showcased effectiveness in creating equitable and personalized learning experiences.
Abstract
The Curriculum Recommendations paradigm is dedicated to fostering learning equality within the ever-evolving realms of educational technology and curriculum development. In acknowledging the inherent obstacles posed by existing methodologies, such as content conflicts and disruptions from language translation, this paradigm aims to confront and overcome these challenges. Notably, it addresses content conflicts and disruptions introduced by language translation, hindrances that can impede the creation of an all-encompassing and personalized learning experience. The paradigm's objective is to cultivate an educational environment that not only embraces diversity but also customizes learning experiences to suit the distinct needs of each learner. To overcome these challenges, our approach builds upon notable contributions in curriculum development and personalized learning, introducing…
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Taxonomy
TopicsEducational Assessment and Pedagogy
MethodsMulti-Head Attention · Attention Is All You Need · Label Smoothing · Absolute Position Encodings · Layer Normalization · Dropout · Linear Layer · Byte Pair Encoding · Softmax · Adam
