商业智能和知识管理在解决商业问题中的作用

IF 0.7 Q3 ENGINEERING, MULTIDISCIPLINARY TEHNICKI GLASNIK-TECHNICAL JOURNAL Pub Date : 2022-06-23 DOI:10.31803/tg-20220531145604
Eissa Mohammed Ali Qhal
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引用次数: 0

摘要

术语“商业智能”被描述为执行报告、数据分析、数据挖掘、事件处理等操作以改进业务企业或业务实体的生产和增长的计划或策略。另一方面,“知识管理”被解释为对商业组织内资源和信息的良好组织管理,它也可以是一个企业。几乎所有的业务都会有限制和挑战,这也被称为业务问题。一个主要的商业问题是需求,商业计划必须根据消费者的需求工作。分析需求将为诸如业务趋势是什么之类的查询提供解决方案?用户的需求是什么?在生产中应该做些什么改进?企业目前的位置在哪里?谁将成为竞争对手?为了进行预测分析,我们采用了比特币的数据集。研究的主要目的是实施战略,以克服业务问题,主要是需求预测。目的是通过知识管理和商业智能对常见的业务问题进行分析,找出相关的问题和补救措施。该数据集有最低价、最高价、开盘价、收盘价、交易量和市场资本等列。使用的研究方法是使用PCA和K-means聚类算法的预测分析。利用该数据集开发预测图作为已取得的结果,便于使用研究方法进行分析。PCA和K-means是用于准确预测的算法。研究的重要性是预测未来的销售,因为它是非常必要的一个企业发现未来的需求,以便组织可以提高生产。
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Role of Business Intelligence and Knowledge Management in Solving Business Problems
The term “Business intelligence” is described as a plan or a strategy where the operations like reporting, data analysis, data mining, event processing are performed to improve the production and growth of a business enterprise or a business entity. And on the other hand, the “Knowledge management” is explained as well-organized management of resources and information within a commercial organization it can be a business too. Almost all business will have limitations and challenges which can be also known as the business problems. One of the main business problem is demand, the business plans must work according to the demand of the consumers. Analyzing the demand would provide the solutions for queries like what is the business trend? What is the need of the users? What should be the improvement make in the production? Where is the current position of the enterprise? And who all will be the competitors? For the predictive analysis a dataset of bitcoin is taken. The major aim of the study is to implement the strategies to overcome the business problems mainly the demand prediction. And the objective is to find out the relevant issues and the remedies by using knowledge management and business intelligence to the common business problems. The dataset has columns called lowest price, highest price, open price, close price, trading volume and market capital. The research methodology used is predictive analysis using PCA and K-means clustering algorithm. By this dataset predictive plots are developed as achieved results for easy analysis by using research methodology. PCA and K-means are the algorithm used for accurate prediction. The importance of study is to predict the future sale, as it is very essential for a business enterprise to find future demand so that the organization can improve production.
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来源期刊
TEHNICKI GLASNIK-TECHNICAL JOURNAL
TEHNICKI GLASNIK-TECHNICAL JOURNAL ENGINEERING, MULTIDISCIPLINARY-
CiteScore
1.50
自引率
8.30%
发文量
85
审稿时长
15 weeks
期刊最新文献
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