cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability

Health literacy refers to the ability of individuals to obtain and understand health information and use it to maintain and promote their own health. This paper manages to make predictions toward its development degree in society with use of a big data-driven statistical learning method. Actually, s...

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Main Authors: Xiaoyan Zhao, Sanqing Ding
Format: Article
Language:English
Published: AIMS Press 2023-09-01
Series:Mathematical Biosciences and Engineering
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/mbe.2023804?viewType=HTML
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author Xiaoyan Zhao
Sanqing Ding
author_facet Xiaoyan Zhao
Sanqing Ding
author_sort Xiaoyan Zhao
collection DOAJ
description Health literacy refers to the ability of individuals to obtain and understand health information and use it to maintain and promote their own health. This paper manages to make predictions toward its development degree in society with use of a big data-driven statistical learning method. Actually, such results can be analyzed by discovering latent rules from massive public textual contents. As a result, this paper proposes a deep information fusion-based smart prediction approach for health literacy. Specifically, the latent Dirichlet allocation (LDA) and convolutional neural network (CNN) structures are utilized as the basic backbone to understand semantic features of textual contents. The feature learning results of LDA and CNN can be then mapped into prediction results via following multi-dimension computing structures. After constructing the CNN model, we can input health information into the model for feature extraction. The CNN model can automatically learn valuable features from raw health information through multi-layer convolution and pooling operations. These characteristics may include lifestyle habits, physiological indicators, biochemical indicators, etc., reflecting the patient's health status and disease risk. After extracting features, we can train the CNN model through a training set and evaluate the performance of the model using a test set. The goal of this step is to optimize the parameters of the model so that it can accurately predict health information. We can use common evaluation indicators such as accuracy, precision, recall, etc. to evaluate the performance of the model. At last, some simulation experiments are conducted on real-world data collected from famous international universities. The case study analyzes health literacy difference between China of developed countries. Some prediction results can be obtained from the case study. The proposed approach can be proved effective from the discussion of prediction results.
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spelling doaj.art-28095f1a5c3943858857d860dad1124a2023-11-01T01:21:29ZengAIMS PressMathematical Biosciences and Engineering1551-00182023-09-012010181041812210.3934/mbe.2023804 cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stabilityXiaoyan Zhao0Sanqing Ding11. School of Public Policy and Management, China University of Mining and Technology, Xuzhou 221116, China 2. School of Marxism, Bengbu Medical College, Bengbu 233030, China1. School of Public Policy and Management, China University of Mining and Technology, Xuzhou 221116, ChinaHealth literacy refers to the ability of individuals to obtain and understand health information and use it to maintain and promote their own health. This paper manages to make predictions toward its development degree in society with use of a big data-driven statistical learning method. Actually, such results can be analyzed by discovering latent rules from massive public textual contents. As a result, this paper proposes a deep information fusion-based smart prediction approach for health literacy. Specifically, the latent Dirichlet allocation (LDA) and convolutional neural network (CNN) structures are utilized as the basic backbone to understand semantic features of textual contents. The feature learning results of LDA and CNN can be then mapped into prediction results via following multi-dimension computing structures. After constructing the CNN model, we can input health information into the model for feature extraction. The CNN model can automatically learn valuable features from raw health information through multi-layer convolution and pooling operations. These characteristics may include lifestyle habits, physiological indicators, biochemical indicators, etc., reflecting the patient's health status and disease risk. After extracting features, we can train the CNN model through a training set and evaluate the performance of the model using a test set. The goal of this step is to optimize the parameters of the model so that it can accurately predict health information. We can use common evaluation indicators such as accuracy, precision, recall, etc. to evaluate the performance of the model. At last, some simulation experiments are conducted on real-world data collected from famous international universities. The case study analyzes health literacy difference between China of developed countries. Some prediction results can be obtained from the case study. The proposed approach can be proved effective from the discussion of prediction results.https://www.aimspress.com/article/doi/10.3934/mbe.2023804?viewType=HTMLmulti-dimension information fusionintelligent predictionhealth literacytextual mining
spellingShingle Xiaoyan Zhao
Sanqing Ding
cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability
Mathematical Biosciences and Engineering
multi-dimension information fusion
intelligent prediction
health literacy
textual mining
title cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability
title_full cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability
title_fullStr cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability
title_full_unstemmed cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability
title_short cancer chaotic mode, fractal-fractional calculus, existence and uniqueness, Grünwald-Letnikov nonstandard finite difference method, stability
title_sort cancer chaotic mode fractal fractional calculus existence and uniqueness grunwald letnikov nonstandard finite difference method stability
topic multi-dimension information fusion
intelligent prediction
health literacy
textual mining
url https://www.aimspress.com/article/doi/10.3934/mbe.2023804?viewType=HTML
work_keys_str_mv AT xiaoyanzhao cancerchaoticmodefractalfractionalcalculusexistenceanduniquenessgrunwaldletnikovnonstandardfinitedifferencemethodstability
AT sanqingding cancerchaoticmodefractalfractionalcalculusexistenceanduniquenessgrunwaldletnikovnonstandardfinitedifferencemethodstability