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Research on Block Design of Accounting Experiment Intelligent System Based on Supervised Learning Algorithm

Published:27 January 2023Publication History

ABSTRACT

The intelligent system based on supervised learning algorithm has been used in all walks of life, and its application in the field of education is also popular. Accounting experimental teaching has realized the sharing of real account data of case enterprises based on cloud technology, and students simulate the real accounting process on the teaching terminal through data sharing. However, this data sharing teaching based on cloud technology can only achieve the distribution of the whole class training task, and can not implement differentiated teaching in combination with the learning situation of learners. The purpose of this study is to design the plate of the accounting experimental teaching intelligent system based on cloud technology, and provide theoretical reference for computer software engineers. Through the research of supervised learning regression algorithm using 2018 students' learning data, it is found that the cloud accounting experimental teaching intelligent system should set up feedback modules of student source information, system proficiency and in class practical training, so that teachers can better master students' learning and improve teaching effects. At the same time, this study concludes that the cloud accounting experimental intelligent system should have three parts: human-computer interaction, automation platform and system database.

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  • Published in

    cover image ACM Other conferences
    ICIIP '22: Proceedings of the 7th International Conference on Intelligent Information Processing
    September 2022
    367 pages
    ISBN:9781450396714
    DOI:10.1145/3570236

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    Publication History

    • Published: 27 January 2023

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