(cache)AI-based College Course Selection Recommendation System: Performance Prediction and Curriculum Suggestion | IEEE Conference Publication | IEEE Xplore

AI-based College Course Selection Recommendation System: Performance Prediction and Curriculum Suggestion

Publisher: IEEE

Abstract:

Recent advances of AI applications in various of industries have led to remarkable performance and efficiency. Driven by the great success of datasets and experience shar...View more

Abstract:

Recent advances of AI applications in various of industries have led to remarkable performance and efficiency. Driven by the great success of datasets and experience sharing, people are exploring more precious datasets with diverse features and longer time range. The promising reasoning information of well-curated student grade datasets is expected to assist young students to find the best of themselves and then improve their learning outcome and study experience. Through data and experience sharing, young students can have a better understanding of their learning condition and possible learning outcomes. Existing course selection systems in Taiwan which offer limited basic enrolling functions fail to provide performance prediction and course arrangement guidance based on their own learning condition. Students now selecting courses with unawareness of their expecting performance. A personalized guide for students on course selection is crucial for how they structure professional knowledge and arrange study schedule. In this paper, we first analyzed what factors can be used on defining learning curve, and discovered the difference between students with different properties and background. Second, we developed a recommendation system based on great amount of grade datasets of past students, and the system can give students suggestions on how to assign their credits based on their own learning curve and students that had similar learning curve. The result of our research demonstrates the feasibility of a new approach on applying big data and AI technology on learning analysis and course selection.
Date of Conference: 13-16 November 2020
Date Added to IEEE Xplore: 08 April 2021
ISBN Information:
Publisher: IEEE
Conference Location: Taichung City, Taiwan

I. Introduction

Artificial intelligence (AI), has been applied in numerous fields and industries in today's society, including marketing, education, security, healthcare, and more. Some AI applications was designed to assist making decisions. Since accumulating experience and extracting formation were very time consuming, we rely on AI to organize huge amount of data and produce a concentrated conclusion [11]. Also, the society has built many platforms for data sharing and information transmission, which allow the accessible data to have more diversity and time range. With the development of AI technology and the accumulation of data, the actual experience sharing is imaginable in the near future.

References

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