首页> 外文会议>IEEE International Conference on Industrial and Information Systems >Recommending a model to forecast Sri Lanka wholesale price index using big data analytics
【24h】

Recommending a model to forecast Sri Lanka wholesale price index using big data analytics

机译:推荐使用大数据分析预测斯里兰卡批发价格指数的模型

获取原文

摘要

The Whole Sale Price Index (WPI) is a main index, which is used to measure price variance before a product or service release to a consumer. WPI represents the basket of wholesale goods and services on market basket. Sri Lanka WPI is accumulated using Laspeyre's formula considering based year as 1974 and up till now not seasonally adjusted. Data collection, compilation, and Dissemination of WPI are done by Prices, Wedges, and Employment division of the Statistics Department of Central bank of Sri Lanka (CBSL) and releasing to public every month. Forecasting of WPI is necessary to understand the aid primary level economic impact of the country. Big data analysis and Data mining are using for data where it is hard to handle using traditional tools and techniques. Decision makers able to gain valuable insights analyzing that varied and rapidly changing data. Time series analysis compromise method for analyzing time series data in order to extract meaningful statistics and other characteristics of data. This review discusses the way to utilize big data analysis technology to systematically analyze time series based WPI data in Sri Lanka. The time series based forecast technologies ARIMA, ANN, VAR, Moving Average, AFARIMA etc. are reviewed based on previous findings. Based on the result will present the effective model to forecast WPIs in Sri Lanka and will critically evaluate selected WPIs. That selection will coordinate based on the weight and relationship to all items based WPI. WPI will compare with existing Sri Lankan Price Indices based on the relational factors.
机译:整体销售价格指数(WPI)是主要指数,用于衡量在向消费者发布产品或服务之前的价格差异。 WPI代表市场篮子中的批发商品和服务篮子。斯里兰卡的WPI是使用Laspeyre公式计算的,考虑的年份为1974年,到目前为止尚未进行季节性调整。 WPI的数据收集,汇总和分发由斯里兰卡中央银行(CBSL)统计部门的价格,楔子和就业部门完成,并每月向公众发布。 WPI的预测对于了解该国援助对初级经济的影响是必要的。大数据分析和数据挖掘正在用于难以使用传统工具和技术处理的数据。决策者能够通过分析变化迅速的数据获得有价值的见解。时间序列分析折衷方法,用于分析时间序列数据,以提取有意义的统计数据和其他数据特征。这篇评论讨论了利用大数据分析技术来系统分析斯里兰卡基于时间序列的WPI数据的方法。基于以前的发现,对基于时间序列的预测技术ARIMA,ANN,VAR,移动平均线,AFARIMA等进行了回顾。基于结果,将提供有效的模型来预测斯里兰卡的WPI,并将对选定的WPI进行严格评估。该选择将基于权重和与基于WPI的所有项目的关系进行协调。 WPI将根据相关因素与现有的斯里兰卡价格指数进行比较。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号