Feedback

HEC-Ecole de gestion de l'Université de Liège
HEC-Ecole de gestion de l'Université de Liège
MASTER THESIS
VIEW 57 | DOWNLOAD 61

Does the real economy still forecast technology stock returns in the United States listed companies? Evidence in an age of digital economy and crises

Download
Paschal, Alexi ULiège
Promotor(s) : Hambuckers, Julien ULiège
Date of defense : 18-Jun-2024/25-Jun-2024 • Permalink : http://hdl.handle.net/2268.2/19857
Details
Title : Does the real economy still forecast technology stock returns in the United States listed companies? Evidence in an age of digital economy and crises
Translated title : [fr] L'économie réelle permet-elle encore de prévoir les rendements des actions technologiques dans les sociétés cotées aux États-Unis ? Preuves à l'ère de l'économie numérique et des crises.
Author : Paschal, Alexi ULiège
Date of defense  : 18-Jun-2024/25-Jun-2024
Advisor(s) : Hambuckers, Julien ULiège
Committee's member(s) : Crucil, Romain ULiège
Language : English
Number of pages : 106
Keywords : [en] equity premium
[en] real economy
[en] technology sector
Discipline(s) : Business & economic sciences > Finance
Target public : Researchers
Professionals of domain
Institution(s) : Université de Liège, Liège, Belgique
Degree: Master en ingénieur de gestion, à finalité spécialisée en Financial Engineering
Faculty: Master thesis of the HEC-Ecole de gestion de l'Université de Liège

Abstract

[en] This thesis investigates whether the real economy continues to provide predictive signals for
technology stock returns in U.S. companies during the digital era and economic crises. The study
updates and extends previous research by focusing on modern economic indicators and their
forecasting power amidst the evolving market landscape influenced by technological advancements
and recent economic disruptions.
The research explores the viability of historical economic indicators in forecasting stock returns,
particularly in the U.S. technology sector. It questions whether these indicators, which proved useful
in past decades, still hold predictive power in a radically transformed economic and technological
environment.
The thesis adopts a mixed-methods approach, combining quantitative analyses with econometric
modelling. The data spans several decades, focusing on periods marked by significant economic events,
such as the dot-com bubble, the 2008 financial crisis, and the COVID-19 pandemic, to assess the
robustness of forecasting models under different economic conditions.
The study replicates and extends previous methodologies using RStudio, allowing for a comparison
between past and current forecasting abilities of various economic indicators under different
economic conditions. Leveraging Google Colab and Python, the thesis incorporates machine learning
techniques to examine the predictive power of traditional and newly proposed economic indicators.
This analysis aims to uncover complex nonlinear relationships that might be missed by conventional
econometric models.
The findings suggest that the traditional indicators have diminished in predictive power. The discussion
delves into the implications of the findings for investors and policymakers, emphasising the need for
adaptive strategies that account for the rapid technological changes and their impact on the economic
landscape. The thesis concludes that the real economy continues to provide valuable insights into
technology stock returns, even if the predictive power has diminished. It calls for ongoing research to
refine these indicators and adapt forecasting models to the changing economic and technological
environment.
Suggestions for future research include exploring additional digital economy indicators and extending
the analysis to global technology markets to validate the findings and enhance the generalizability of
the forecasting models. This study contributes to the literature by updating forecasting models with
contemporary economic indicators and by demonstrating the evolving relationship between the real
economy and technology stock returns in the face of digital transformation and economic crises.


File(s)

Document(s)

File
Access Alexi_Paschal_Master_Thesis_S193974.pdf
Description:
Size: 4.01 MB
Format: Adobe PDF

Annexe(s)

File
Access PowerBI_fin.xlsx
Description:
Size: 37.81 kB
Format: Microsoft Excel XML
File
Access 50-50_fin.ipynb
Description:
Size: 98.34 kB
Format: Unknown
File
Access 60-40_fin.ipynb
Description:
Size: 24.56 kB
Format: Unknown
File
Access 70-30_fin.ipynb
Description:
Size: 23.9 kB
Format: Unknown
File
Access 80-20_fin.ipynb
Description:
Size: 100.34 kB
Format: Unknown
File
Access 90-10_fin.ipynb
Description:
Size: 143.49 kB
Format: Unknown
File
Access machinelearning.csv
Description:
Size: 14.01 kB
Format: Unknown
File
Access dataset.xlsx
Description:
Size: 33.18 kB
Format: Microsoft Excel XML
File
Access Forecasts_quarterly_log_version21_fin.R
Description:
Size: 25.56 kB
Format: Unknown
File
Access Forecasts_quarterly_log_version22_fin.R
Description:
Size: 25.56 kB
Format: Unknown
File
Access Forecasts_quarterly_log_version23_fin.R
Description:
Size: 25.56 kB
Format: Unknown
File
Access Forecasts_quarterly_version21_fin.R
Description:
Size: 22.97 kB
Format: Unknown
File
Access Forecasts_quarterly_version22_fin.R
Description:
Size: 22.99 kB
Format: Unknown
File
Access Forecasts_quarterly_version23_fin.R
Description:
Size: 22.99 kB
Format: Unknown
File
Access nchoosek.R
Description:
Size: 1.07 kB
Format: Unknown
File
Access nwest.R
Description:
Size: 2.39 kB
Format: Unknown
File
Access perform_asset_allocation.R
Description:
Size: 1.29 kB
Format: Unknown
File
Access zscore.R
Description:
Size: 118 B
Format: Unknown
File
Access Results.xlsx
Description:
Size: 154.65 kB
Format: Microsoft Excel XML

Author

  • Paschal, Alexi ULiège Université de Liège > Master ing. gest., fin. spéc. fin. engineering

Promotor(s)

Committee's member(s)

  • Total number of views 57
  • Total number of downloads 61










All documents available on MatheO are protected by copyright and subject to the usual rules for fair use.
The University of Liège does not guarantee the scientific quality of these students' works or the accuracy of all the information they contain.