The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems

With the surge in the amount of data in the internal and external environment, the collection, analysis, processing, and storage of the increasing data sources and data volume, as well as the problems of big data management, are the current situation and dilemmas of data management faced by enterpri...

Full description

Saved in:
Bibliographic Details
Main Author: Yangfan Li
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2022/2761661
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832552799015010304
author Yangfan Li
author_facet Yangfan Li
author_sort Yangfan Li
collection DOAJ
description With the surge in the amount of data in the internal and external environment, the collection, analysis, processing, and storage of the increasing data sources and data volume, as well as the problems of big data management, are the current situation and dilemmas of data management faced by enterprises today. Cognitive science and big data technology can provide good auxiliary support for enterprise management decision-making. This study takes the business information management of cold chain logistics enterprises as an example, aiming at the characteristics of business intelligence data in real applications, based on cognitive science and big data technology, from low-cost and high-performance storage, security management, and big data analysis. This paper is mainly through the research of big data processing theory and key technologies. Based on analyzing the logistics industry’s data access rules and characteristics, this study proposes a hot data prediction model for multilayer hybrid storage systems. It is verified that the prediction model has good accuracy, robustness, and universality. For the application scenario of multitenant distributed data access, a data transparent security management model is proposed. Simulation experiments show that this method can realize data security management when the performance loss is controlled within an acceptable range. Based on the real-time computing technology of massive data, the label optimization scheme of collaborative filtering and reinforcement learning is used to realize the logistics distribution recommendation model and to solve the accuracy and real-time problems of logistics service distribution analysis.
format Article
id doaj-art-aa87fc89d71645c3bf2b42d8f4ee82ce
institution Kabale University
issn 1687-5699
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Advances in Multimedia
spelling doaj-art-aa87fc89d71645c3bf2b42d8f4ee82ce2025-02-03T05:57:55ZengWileyAdvances in Multimedia1687-56992022-01-01202210.1155/2022/2761661The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management SystemsYangfan Li0School of Art and DesignWith the surge in the amount of data in the internal and external environment, the collection, analysis, processing, and storage of the increasing data sources and data volume, as well as the problems of big data management, are the current situation and dilemmas of data management faced by enterprises today. Cognitive science and big data technology can provide good auxiliary support for enterprise management decision-making. This study takes the business information management of cold chain logistics enterprises as an example, aiming at the characteristics of business intelligence data in real applications, based on cognitive science and big data technology, from low-cost and high-performance storage, security management, and big data analysis. This paper is mainly through the research of big data processing theory and key technologies. Based on analyzing the logistics industry’s data access rules and characteristics, this study proposes a hot data prediction model for multilayer hybrid storage systems. It is verified that the prediction model has good accuracy, robustness, and universality. For the application scenario of multitenant distributed data access, a data transparent security management model is proposed. Simulation experiments show that this method can realize data security management when the performance loss is controlled within an acceptable range. Based on the real-time computing technology of massive data, the label optimization scheme of collaborative filtering and reinforcement learning is used to realize the logistics distribution recommendation model and to solve the accuracy and real-time problems of logistics service distribution analysis.http://dx.doi.org/10.1155/2022/2761661
spellingShingle Yangfan Li
The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems
Advances in Multimedia
title The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems
title_full The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems
title_fullStr The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems
title_full_unstemmed The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems
title_short The Role of Cognitive Science and Big Data Technology in the Design of Business Information Management Systems
title_sort role of cognitive science and big data technology in the design of business information management systems
url http://dx.doi.org/10.1155/2022/2761661
work_keys_str_mv AT yangfanli theroleofcognitivescienceandbigdatatechnologyinthedesignofbusinessinformationmanagementsystems
AT yangfanli roleofcognitivescienceandbigdatatechnologyinthedesignofbusinessinformationmanagementsystems