实现天然气行业短期财务数据预测模型

Rialdi Azhar, S. Sembiring, M. Muslimin, F. Kesumah
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引用次数: 0

摘要

财务数据特别是天然气行业的预测数据必须具有较高的准确性。问题:这些数据是时间序列数据,包含异方差,因此需要低错误率的预测模型。研究中使用的数据是2014年至2019年天然气的日常财务数据。短期预测模型(GARCH)具有对异方差数据进行建模的优点。AR1、GARCH 1.1短期预报模型是一种具有建模数据精度高的优点的模型。预测模型可以被各方用于发现即将到来的信息的准确性,从而使规划决策已经准备好并准备好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPLEMENTATION OF SHORT-TERM FORECASTING MODELS IN THE NATURAL GAS INDUSTRY FINANCIAL DATA
Financial data especially the natural gas industry that will be projected must have high accuracy. Problems: These data are time-series data and contain heteroscedasticity so that they require forecasting models with low error rates. The data used in the study are daily financial data from natural gas from 2014 to 2019. Short-term forecasting model (GARCH) which has the advantage of modeling data with heteroscedasticity. AR1, GARCH 1.1 short-term forecasting model is stated as a model that has the advantage of modeling data with a high degree of accuracy. The forecasting model can be used by various parties in finding the accuracy of information to come so that planning decisions have been prepared and prepared.
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