The integration algorithm of digital resources in business administration based on cluster analysis

Ruohan Zhou, Wei Chen, Congjin Xie
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Abstract

The field of business management involves a large amount of data and information sources, including market data, customer data, supply chain data, etc. In order to quantify and analyze different resources, help enterprises better plan and allocate resources, and improve resource utilization efficiency, a clustering analysis based digital resource integration algorithm for business management is studied. Build a business management digital resource integration framework, including data layer, integration layer, and storage layer, to integrate and store data from different sources of business management databases, thereby facilitating unified management and utilization of digital resources by enterprises. The data layer collects data from different business management databases and stores it in the database according to different sources; The integration layer preprocesses the collected data, simply fixes errors and missing information in the data, and improves data quality. Adopting a feature extraction method based on the projection direction uncorrelation strategy of the labeled power set conversion method, the useful feature information of digital resources in enterprise management can be effectively extracted; Based on the two-step clustering analysis method, business management digital resources are clustered according to similar characteristics to complete the classification and integration of business management digital resources, and improve the efficiency of resource utilization; The storage layer adopts the Security Information Diffusion Algorithm (IDA) storage model to store integrated and classified digital resources managed by enterprises, ensuring data security and effectively preventing data leakage and illegal access. The experimental results show that the digital resource structure of business management integrated by this algorithm is clear, with a data redundancy of less than 8% and a difference of less than 11% . The time consumption for data integration is less than 2.11 minutes, indicating good resource integration ability.
基于聚类分析的工商管理数字资源整合算法
企业管理领域涉及大量的数据和信息源,包括市场数据、客户数据、供应链数据等。为了对不同资源进行量化分析,帮助企业更好地规划和配置资源,提高资源利用效率,研究了一种基于聚类分析的企业管理数字资源整合算法。构建业务管理数字资源整合框架,包括数据层、集成层和存储层,对不同来源的业务管理数据库数据进行整合和存储,从而方便企业对数字资源进行统一管理和利用。数据层从不同的业务管理数据库中采集数据,并按照不同的来源存储到数据库中;集成层对采集到的数据进行预处理,简单修正数据中的错误和缺失信息,提高数据质量。采用基于投影方向非相关策略的标记幂集转换方法的特征提取方法,有效提取企业管理数字资源的有用特征信息;基于两步聚类分析方法,将企业管理数字资源按照相似特征进行聚类,完成企业管理数字资源的分类和整合,提高资源利用效率;存储层采用安全信息扩散算法(IDA)存储模型,存储整合分类后的企业管理数字资源,确保数据安全,有效防止数据泄露和非法访问。实验结果表明,该算法整合的企业管理数字资源结构清晰,数据冗余度小于 8%,差异度小于 11%。数据整合耗时小于 2.11 分钟,显示了良好的资源整合能力。
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