The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model

This paper attempts to explore the relationship between four macroeconomic variables on Bursa Stock Exchange using the Machine Learning method. Quarterly data has been used from 2015 quarter 1 until 2022 quarter 4 for all the variables like, overnight policy rate, industrial production index, consum...

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Main Author: Kok, Yu Chen
Format: Dissertation (University of Nottingham only)
Language:English
Published: 2024
Online Access:https://eprints.nottingham.ac.uk/76056/
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author Kok, Yu Chen
author_facet Kok, Yu Chen
author_sort Kok, Yu Chen
building Nottingham Research Data Repository
collection Online Access
description This paper attempts to explore the relationship between four macroeconomic variables on Bursa Stock Exchange using the Machine Learning method. Quarterly data has been used from 2015 quarter 1 until 2022 quarter 4 for all the variables like, overnight policy rate, industrial production index, consumer sentiment index, and unemployment rate. Then, the machine learning method, SHapley Additive Explanation (SHAP) was used to calculate the impact value between stock price and macroeconomic variables. After calculating the impact value, technical indicators were used to test the contribution of macroeconomic variables across the 13 sectors. Results showed all variables evolve differently in the different phases of the economic cycle. The value of the impact of each sector on the index of industrial production is different. Some sectors show a positive impact value on the overnight policy rate, while the rest of the sectors show the opposite. During the strong economy, almost all sectors show divergence. However, during the pandemic, most of the sectors have had an almost neutral or positive impact on the unemployment rate. Whereas, the consumer sentiment index has an almost neutral impact value on all sectors.
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spelling nottingham-760562024-03-12T02:51:13Z https://eprints.nottingham.ac.uk/76056/ The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model Kok, Yu Chen This paper attempts to explore the relationship between four macroeconomic variables on Bursa Stock Exchange using the Machine Learning method. Quarterly data has been used from 2015 quarter 1 until 2022 quarter 4 for all the variables like, overnight policy rate, industrial production index, consumer sentiment index, and unemployment rate. Then, the machine learning method, SHapley Additive Explanation (SHAP) was used to calculate the impact value between stock price and macroeconomic variables. After calculating the impact value, technical indicators were used to test the contribution of macroeconomic variables across the 13 sectors. Results showed all variables evolve differently in the different phases of the economic cycle. The value of the impact of each sector on the index of industrial production is different. Some sectors show a positive impact value on the overnight policy rate, while the rest of the sectors show the opposite. During the strong economy, almost all sectors show divergence. However, during the pandemic, most of the sectors have had an almost neutral or positive impact on the unemployment rate. Whereas, the consumer sentiment index has an almost neutral impact value on all sectors. 2024-03-09 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/76056/1/The%20impact%20of%20Macroeconomic%20Variables%20on%20Brusa%20Stock%20Exchange%20using%20Machine%20Learning%20Model.pdf Kok, Yu Chen (2024) The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model. [Dissertation (University of Nottingham only)]
spellingShingle Kok, Yu Chen
The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model
title The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model
title_full The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model
title_fullStr The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model
title_full_unstemmed The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model
title_short The impact of macroeconomic variables on Brusa Stock Exchange using machine learning model
title_sort impact of macroeconomic variables on brusa stock exchange using machine learning model
url https://eprints.nottingham.ac.uk/76056/