Study of Methods for Constructing Intelligent Learning Models Supported by Artificial Intelligence
DOI:
https://doi.org/10.4108/eetsis.4622Keywords:
Intelligent learning model, Model element extraction, K-means clustering algorithm, Deep compression sparse self-encoderAbstract
INTRODUCTION: As the essential part of intelligent learning, innovative learning model construction is conducive to improving the quality of intelligent new teaching models, thus leading the deep integration of teaching and artificial intelligence and accelerating the change and development of teaching supported by artificial intelligence.
OBJECTIVES: Aiming at the current intelligent teaching evaluation design method, there are problems such as more objectivity, poor precision, and a single method of evaluation indexes.
METHODS: his paper proposes an intelligent learning construction method based on cluster analysis and deep learning algorithms. First of all, the intelligent learning model construction process is sorted out by clarifying the idea of clever learning model construction and extracting model elements; then, the intelligent learning model is constructed through a K-means clustering algorithm and deep compression sparse self-encoder; finally, the effectiveness and high efficiency of the proposed method is verified through simulation experiment analysis.
RESULTS: Solved the problem that the intelligent learning model construction method is not objective enough, has poor accuracy and is not efficient enough.
CONCLUSION: The results show that the proposed method improves the model’s accuracy.
References
Liu W, T, Liu Z, et al.A novel deep learning ensemble model based on two-stage feature selection and intelligent optimization for water quality prediction[J].Environmental Research. Section A, 2023.
Tian T, Tongjia G, Jun C, et al.Graphic Intelligent Diagnosis of Hypoxic-Ischemic Encephalopathy Using MRI-Based Deep Learning Model[J].Neonatology, 2023.
Sofy M A, Khafagy M H, Badry R M . An Intelligent Arabic Model for Recruitment Fraud Detection Using Machine Learning[J].Journal of Advances in Information Technology, 2023.
Ma D, Li X, Lin B, et al.A dynamic, intelligent building retrofit decision-making model in response to climate change[J].Energy and buildings, 2023.
Khan S U, Khan N, Ullah F U M, et al.Towards intelligent building energy management: AI-based framework for power consumption and generation forecasting[J].Energy and buildings, 2023.
Han C, Ma T, Chen S . Asphalt pavement maintenance plans intelligent decision model based on reinforcement learning algorithm[J].Construction and Building Materials, 2021, 299(13):124278.
Zhang J . Potential energy saving estimation for retrofit building with ASHRAE-Great Energy Predictor III using machine learning[J].Proceedings of the 2021 1st International Conference on Control and Intelligent Robotics, 2021
Wang C , Yu Q , Law K H ,et al.Machine Learning-based Regional Scale Intelligent Modeling of Building Information for Natural Hazard Risk Management[J].BM: Bau- und mobelschreiner, 2021.
Rababaah A R, Rababah A M . Intelligent machine vision model for building architectural style classification based on deep learning[J].International Journal of Computer Applications in Technology, 2022.
Goliath L, Yaseen Z M . Development of a hybrid computational intelligent model for daily global solar radiation prediction[J].Expert Systems with Application, 2023.
Constantin A . Intelligent Explorations of the String Theory Landscape[J].arXiv e-prints, 2022.
Li K, Zhang J, Chen X, et al. Building’s hourly electrical load prediction based on data clustering and ensemble learning strategy[J].Energy and Buildings, 2022, 261:111943.
Al-Mhiqani M N, Ahmad R, Abidin Z Z, et al.A new intelligent multilayer framework for insider threat detection[J].Computers & Electrical Engineering, 2022, 97:107597.
Xiao Y, Zhang X, Xu X, et al.Deep Neural Networks With Koopman Operators for Modeling and Control of Autonomous Vehicles[J].IEEE transactions on intelligent vehicles, 2023.
Ang G M, Lim E P . Learning Semantically Rich Network-based Multi-modal Mobile User Interface Embeddings[J].ACM Transactions on Interactive Intelligent Systems, 2022, 12:1 - 29.
Xie J, Xu X, Wang F, et al.Modelling adaptive preview time of driver model for intelligent vehicles based on deep learning[J].Proceedings of the Institution of Mechanical Engineers, Part I. Journal of Systems and Control Engineering, 2022(2):236.
Researchers Submit Patent Application, ‘Systems And Methods For Identifying Processes For Robotic Automation And Building Models Therefor,’ for Approval (USPTO 20220171988)[J].Robotics & Machine Learning Daily News, 2022.
Ratican J, Hutson J, Wright A.A Proposed Meta-Reality Immersive Development Pipeline: Generative AI Models and Extended Reality (XR) Content for the Metaverse[J].Journal of Intelligent Learning Systems and Applications, 2023.
Guan X, Li W, Huang Q, et al.Intelligent colour matching model for wood dyeing using Genetic Algorithm and Extreme learning machine[J].Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology, 2022.
Diana E V, Sumathi M . An Intelligent Deep Learning Architecture Using Multi-scale Residual Network Model for Image Interpolation[J].Journal of Advances in Information Technology, 2023.
Huang Y, Dai H, Tseng V S . Periodic Attention-based Stacked Sequence to Sequence framework for long-term travel time prediction[J].Knowl. Based Syst. 2022, 258:109976.
Ayoub B, Nora T . An optimized Parkinson’s disorder identification through evolutionary fast learning network[J].International Journal of Intelligent Computing and Cybernetics, 2022.
Zhong Zhuo. Research on the Construction and Application of Smart Learning Model Supported by Artificial Intelligence [D]. Northeast Normal University,2023.
Zhang R, Lu S, Wang X, et al.A multi-model fusion soft measurement method for cement clinker f-CaO content based on K-means ++ and EMD-MKRVM[J].Transactions of the Institute of Measurement and Control, 2023, 45(2):287-301.
Burda Y, Grosse R, Salakhutdinov R . Importance Weighted Autoencoders[J].Computer Science, 2015.
Burda Y , Grosse R , Salakhutdinov R .Importance Weighted Autoencoders[J].Computer Science, 2015.
Zhang S , Yao L , Xu X .AutoSVD++: An Efficient Hybrid Collaborative Filtering Model via Contractive Auto-encoders[J].ACM, 2017.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 Lijun Pan
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
This is an open access article distributed under the terms of the CC BY-NC-SA 4.0, which permits copying, redistributing, remixing, transformation, and building upon the material in any medium so long as the original work is properly cited.