Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli

During Covid-19, the trend of investing has kept on increasing especially among male and older investors (Ortmann et al., 2020). Investors have invested in various platforms and gold prices have been one of the platforms used to invest. Using past data as a starting point, forecasting is a method th...

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Main Authors: Ahmad Burhan, Nur Afrina, Mokhtar, Nur Nazurah, Rosli, Siti Aisya Najwa
Format: Student Project
Language:en
Published: 2024
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/94901/1/94901.pdf
https://ir.uitm.edu.my/id/eprint/94901/
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author Ahmad Burhan, Nur Afrina
Mokhtar, Nur Nazurah
Rosli, Siti Aisya Najwa
author_facet Ahmad Burhan, Nur Afrina
Mokhtar, Nur Nazurah
Rosli, Siti Aisya Najwa
author_sort Ahmad Burhan, Nur Afrina
building Tun Abdul Razak Library
collection Institutional Repository
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
continent Asia
country Malaysia
description During Covid-19, the trend of investing has kept on increasing especially among male and older investors (Ortmann et al., 2020). Investors have invested in various platforms and gold prices have been one of the platforms used to invest. Using past data as a starting point, forecasting is a method that produces well-informed, predictive estimations for future trend direction. This study focuses research on forecasting gold prices. It aims to solve problems for investors in predicting future values. Time series forecasting is mainly used in this study and Box Jenkins is the chosen model used. This study aims to apply missing value analysis in the missing data; to use the Box Jenkins model in actual gold price data from September 2022 until February 2023; to select the best ARIMA model and to forecast the gold prices data in a year using ARIMA model. The method used in this study is time series forecasting, Box Jenkins model. The applications used in this study are statistical packages for social science (SPSS) and econometric views (EViews). The best ARIMA model that has been selected by comparing Akaike Information Criterion (AIC), Bayes Information Criterion (BIC) and Durbin Watson measures error is ARIMA (2,1,1) for buy and sell of gold price. The forecasting result in EViews shows a positive increase in both buy and sell of gold prices. The result forecast is for one year ahead of time from February 2023 until February 2024. Therefore, all this study objective has been achieved. Accurate gold price projections increase confidence and stability in the financial system overall, which benefits both individual investors and entire economies.
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spelling my.uitm.ir-949012024-05-14T04:48:48Z https://ir.uitm.edu.my/id/eprint/94901/ Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli Ahmad Burhan, Nur Afrina Mokhtar, Nur Nazurah Rosli, Siti Aisya Najwa Dissertations, Academic. Preparation of theses During Covid-19, the trend of investing has kept on increasing especially among male and older investors (Ortmann et al., 2020). Investors have invested in various platforms and gold prices have been one of the platforms used to invest. Using past data as a starting point, forecasting is a method that produces well-informed, predictive estimations for future trend direction. This study focuses research on forecasting gold prices. It aims to solve problems for investors in predicting future values. Time series forecasting is mainly used in this study and Box Jenkins is the chosen model used. This study aims to apply missing value analysis in the missing data; to use the Box Jenkins model in actual gold price data from September 2022 until February 2023; to select the best ARIMA model and to forecast the gold prices data in a year using ARIMA model. The method used in this study is time series forecasting, Box Jenkins model. The applications used in this study are statistical packages for social science (SPSS) and econometric views (EViews). The best ARIMA model that has been selected by comparing Akaike Information Criterion (AIC), Bayes Information Criterion (BIC) and Durbin Watson measures error is ARIMA (2,1,1) for buy and sell of gold price. The forecasting result in EViews shows a positive increase in both buy and sell of gold prices. The result forecast is for one year ahead of time from February 2023 until February 2024. Therefore, all this study objective has been achieved. Accurate gold price projections increase confidence and stability in the financial system overall, which benefits both individual investors and entire economies. 2024 Student Project NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/94901/1/94901.pdf Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli. (2024) [Student Project] (Unpublished)
spellingShingle Dissertations, Academic. Preparation of theses
Ahmad Burhan, Nur Afrina
Mokhtar, Nur Nazurah
Rosli, Siti Aisya Najwa
Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli
title Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli
title_full Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli
title_fullStr Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli
title_full_unstemmed Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli
title_short Time series forecasting of gold prices with missing value analysis / Nur Afrina Ahmad Burhan, Nur Nazurah Mokhtar and Siti Aisya Najwa Rosli
title_sort time series forecasting of gold prices with missing value analysis / nur afrina ahmad burhan, nur nazurah mokhtar and siti aisya najwa rosli
topic Dissertations, Academic. Preparation of theses
url https://ir.uitm.edu.my/id/eprint/94901/1/94901.pdf
https://ir.uitm.edu.my/id/eprint/94901/
url_provider http://ir.uitm.edu.my/