运用统计学进行市场分析和预测

Thanakit Ouanhlee
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摘要

市场分析对任何组织、企业或公司来说都是至关重要的方面,因为它为决策提供了依据。糟糕的市场分析导致糟糕的决策。另一方面,使用高质量的数据进行市场分析可以为明智的决策提供重要的依据。业务部门需要对产品、销售、库存、员工和客户等方面的未来趋势有一个清晰的认识。然而,只有通过预测的统计技术才能确定模式。从本质上讲,使用统计工具进行市场分析预测的知识是必不可少的。本文旨在总结市场预测技术,突出其有趣的发现,并概述在现实生活中的一些实际应用。摘要包括回归分析、特殊事件的处理、季节性的识别、霍尔特-温特斯方法和新产品的预测。关于回归分析,我们发现在实际预测之前,数据清洗是这个分析的一个重要方面。必须对数据进行测试,以满足信度和效度标准,以确保高质量的数据用于预测。关于处理特殊事件的有趣发现是,一些特殊事件具有很大的连锁反应,组织需要对此进行规划。此外,在进行数据分析时,必须考虑到季节性的影响。还确定了Holt-Winters方法的准确性与其使用更平滑的曲线有关,这使得研究人员可以平滑时间序列数据以进行预测。本文进一步说明,Bass扩散模型在预测新产品销售时能够考虑到外部和内部影响,因此比物流模型和Gompertz模型提供了更准确的预测。本研究的应用之一是回归模型可以用于研究产品营销活动中广告平台的有效性。销售公司可以运用季节性预测来了解不同季节对其产品的影响。此外,客户支出模式的数据可以用来预测特殊事件,以帮助适当的计划。因此,任何企业、公司、行业或国家都可以使用预测来预测市场的不同组成部分。
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Using Statistics for Market Analysis Forecasting
Market analysis is a crucial aspect for any organization, business, or company because it provides a ground for decision making. Poor market analysis leads to poor decisions. On the other hand, using quality data to conduct market analysis can provide significant grounds for informed decisions. Business sectors require a clear view of future trends regarding the performance of their products, sales, stocks, employees, and customers, among others. However, defining patterns is possible only through statistical techniques of forecasting. In essence, the knowledge of market analysis forecasting using statistical tools is imperative. This article aims at providing a summary of market forecasting techniques, highlighting their interesting discoveries, and outlining some practical applications in real life. The summary covers regression analysis, handling of special events, identification of seasonality, Holt–Winters method, and forecasting for new products. Regarding regression analysis, it was found that data cleaning is an important aspect of this analysis before the actual forecasting. The data must be tested to meet the reliability and validity criteria to ensure quality data are used for forecasting. The interesting discovery with regard to handling special events was that some special events have great ripple effects, which an organization needs to plan for. Furthermore, when doing an analysis of data, it is essential to take into account the effects of seasonality. It was also ascertained that the accuracy of the Holt–Winters method is associated with its use of smoother curve, which allows a researcher to smooth time series data to make predictions. The article further illustrates that the Bass diffusion model provides more accurate forecasts than logistics and Gompertz models givens its ability to put into consideration the external and internal influence when forecasting sales of new products. One of the applications of this study is that regression models can be used in studying the effectiveness of advertisement platforms during a product marketing campaign. Sales companies can apply seasonality forecasting to understand the influence of different seasons on their products. Moreover, the data on customers’ expenditure patterns can be used to forecast special events to aid in proper planning. Therefore, any business, firm, industry, or country can use forecasting to predict different components of a market.
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