The Stock Price Prediction Formula Using the Concept of Equality in the Amount of Data Between the Average Difference of Order One and Two at Levels n and n+1

Stephanus Ivan Goenawan, Kumala Indriati, E. Yosephan, Christanto Milano, Atma Jaya
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Abstract

Technological developments are getting faster, as is the dissemination of existing information, especially on the capital market. In order for investors to avoid losses from the capital market, a method is needed that is able to analyze the movement of the stock price. This study focuses on the application of the Data Scales Analysis (DSA) method which uses a formula with the concept of the same amount of data between the first and second order average differences at levels n and n + 1 for predicting the stock price of issuers, in predicting stock prices in the capital market. The resulting formula is named JIC-FLY 2 which is a new formula used to predict stock prices in the capital market. The population used in this study are issuers who are members of IDX 30 from the banking sub-sector with the sample used is the issuer of BBCA (PT Bank Central Asia Tbk). The results of this study note that the DSA method with this formula is able to produce the best predictive value, namely DSA 12 with an error percentage of 0.035%.
利用n和n+1水平上一阶和二阶平均差的数据量相等概念的股票价格预测公式
技术发展越来越快,现有信息的传播也越来越快,特别是在资本市场上。为了使投资者避免在资本市场上遭受损失,需要一种能够分析股价走势的方法。本研究主要研究数据尺度分析(Data Scales Analysis, DSA)方法在资本市场股票价格预测中的应用,该方法使用一阶和二阶平均差异在n和n + 1水平上具有相同数据量概念的公式来预测发行人的股票价格。所得公式命名为JIC-FLY 2,这是一个用于资本市场股票价格预测的新公式。本研究中使用的人口是IDX 30银行分行业成员的发行人,使用的样本是BBCA (PT Bank Central Asia Tbk)的发行人。本研究结果表明,使用该公式的DSA方法能够产生最佳的预测值,即DSA 12,误差率为0.035%。
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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