Analysis of Statistical Information for Data Trend Forecasting

A. Sherstneva, O. Sherstneva
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Abstract

The article considers organizational principles of the reporting and management system. The indicators are classified by two areas, service level and profitability. Based on these indicators, a conclusion is drawn about the system's productivity. The range of statistics needed to evaluate performance is defined. The relationship between observed statistical indicators and estimated ones is performed. A comparison between observed and estimated waiting times in different groups is shown in graphical form. The detailed processing of the selected process segments is given. In terms of opportunities the article prompts to choose approach for implementation the activity. The article aims to propose an algorithm implementation, estimate performance indicators and data trend forecasting.
数据趋势预测的统计信息分析
本文考虑了报告和管理体系的组织原则。这些指标分为两个方面:服务水平和盈利能力。根据这些指标,得出了系统生产率的结论。定义了评估性能所需的统计范围。将观测到的统计指标与估计的统计指标进行关系分析。不同组中观察到的和估计的等待时间之间的比较以图形形式显示。给出了所选工艺段的具体处理过程。在机会方面,文章提示选择实施活动的方法。本文旨在提出一种算法实现,估计性能指标和数据趋势预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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