An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries

To mitigate the impact of the crisis on larger and more liquid markets such as the banking and currency sector, this study focused on targeting a market that initially reacts to unforeseen events - the equity markets. This study aimed to evaluate the predictive ability of Logistic Regression and Ran...

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Main Authors: del Rosario, Allister James R, Guzman, Anne Ysobel P., Kohzai, Michelle O., Zape, Jay Ruel B.
Format: text
Language:English
Published: Animo Repository 2023
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Online Access:https://animorepository.dlsu.edu.ph/etdb_finman/77
https://animorepository.dlsu.edu.ph/context/etdb_finman/article/1069/viewcontent/An_Evaluation_of_Logistic_Regression_and_Random_Forest_Model_as_E.pdf
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etdb_finman-10692023-08-30T00:43:34Z An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries del Rosario, Allister James R Guzman, Anne Ysobel P. Kohzai, Michelle O. Zape, Jay Ruel B. To mitigate the impact of the crisis on larger and more liquid markets such as the banking and currency sector, this study focused on targeting a market that initially reacts to unforeseen events - the equity markets. This study aimed to evaluate the predictive ability of Logistic Regression and Random Forest Model as early warning system models, and the key indicators influencing a near-term equity market crisis in ASEAN-5 + 3 countries. The study employed the Confusion Matrix, ROC Curve, and Gini Index to examine the performance of the models using a monthly sample period from January 2005 to December 2022. The empirical results showed that the most occurring key indicators that influence an equity market crisis were Consumer Confidence Index (CCI), Real Effective Exchange Rate (REER), and the S&P 500. Moreover, the findings also showed that the Random Forest Model significantly outperformed Logistic Regression in all performance measures. This study contributed to early warning systems literature in several ways as it first addressed the limited studies that examined the equity market crises on its own and in the ASEAN context. Second, this study addressed the need for a hybrid model capable enough to capture the dynamic nature of financial market crises. Furthermore, this study contributed to the growing body of research on the development of efficient and accurate early warning systems through emerging machine learning and fourth-generational models. Keywords: ASEAN-5 + 3 Countries; Logistic Regression; Random Forest Model; Early Warning System; Equity Market Crisis; Confusion Matrix; ROC Curve; Gini Index 2023-07-29T07:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/etdb_finman/77 https://animorepository.dlsu.edu.ph/context/etdb_finman/article/1069/viewcontent/An_Evaluation_of_Logistic_Regression_and_Random_Forest_Model_as_E.pdf Financial Management Bachelor's Theses English Animo Repository Stock exchanges—Southeast Asia Stock exchanges—East Asia Finance and Financial Management
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Stock exchanges—Southeast Asia
Stock exchanges—East Asia
Finance and Financial Management
spellingShingle Stock exchanges—Southeast Asia
Stock exchanges—East Asia
Finance and Financial Management
del Rosario, Allister James R
Guzman, Anne Ysobel P.
Kohzai, Michelle O.
Zape, Jay Ruel B.
An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries
description To mitigate the impact of the crisis on larger and more liquid markets such as the banking and currency sector, this study focused on targeting a market that initially reacts to unforeseen events - the equity markets. This study aimed to evaluate the predictive ability of Logistic Regression and Random Forest Model as early warning system models, and the key indicators influencing a near-term equity market crisis in ASEAN-5 + 3 countries. The study employed the Confusion Matrix, ROC Curve, and Gini Index to examine the performance of the models using a monthly sample period from January 2005 to December 2022. The empirical results showed that the most occurring key indicators that influence an equity market crisis were Consumer Confidence Index (CCI), Real Effective Exchange Rate (REER), and the S&P 500. Moreover, the findings also showed that the Random Forest Model significantly outperformed Logistic Regression in all performance measures. This study contributed to early warning systems literature in several ways as it first addressed the limited studies that examined the equity market crises on its own and in the ASEAN context. Second, this study addressed the need for a hybrid model capable enough to capture the dynamic nature of financial market crises. Furthermore, this study contributed to the growing body of research on the development of efficient and accurate early warning systems through emerging machine learning and fourth-generational models. Keywords: ASEAN-5 + 3 Countries; Logistic Regression; Random Forest Model; Early Warning System; Equity Market Crisis; Confusion Matrix; ROC Curve; Gini Index
format text
author del Rosario, Allister James R
Guzman, Anne Ysobel P.
Kohzai, Michelle O.
Zape, Jay Ruel B.
author_facet del Rosario, Allister James R
Guzman, Anne Ysobel P.
Kohzai, Michelle O.
Zape, Jay Ruel B.
author_sort del Rosario, Allister James R
title An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries
title_short An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries
title_full An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries
title_fullStr An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries
title_full_unstemmed An evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in ASEAN-5 + 3 countries
title_sort evaluation of logistic regression and random forest model as early warning system models for assessing an equity market crisis in asean-5 + 3 countries
publisher Animo Repository
publishDate 2023
url https://animorepository.dlsu.edu.ph/etdb_finman/77
https://animorepository.dlsu.edu.ph/context/etdb_finman/article/1069/viewcontent/An_Evaluation_of_Logistic_Regression_and_Random_Forest_Model_as_E.pdf
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