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 I...
This paper proposes an original and unified toolbox to evaluate financial crisis early-warning syste...
Indicators of financial crisis generally do not have a good track record. This paper presents an ear...
Indicators of financial crisis generally do not have a good track record. This paper presents an ear...
The objective of this study is to scrutinise selected financial distress prediction models across se...
Asia’s financial crisis in July 1997 affects currency, capital market, and real market throughout As...
The financial crisis is a realistic problem that the general enterprise must encounter in the proces...
Abstract: This study conducts an empirical analysis of corporate financial crisis to develop an earl...
The advent of the Asian Financial Crisis (AFC) in the Southeast Asia in 1997 is an appealing case fo...
Traditional financial crisis prediction approaches have a tough time extracting the properties of fi...
Abstract: In order to establish a reasonable and effective financial crisis early warning model, the...
The development of corporate financial disturbance prediction models plays an essential role in the ...
Asia's inancial crisis in July 1997 affects currency, &nbs...
This paper compares six models for forecasting the performance of the ASEAN equity markets of Malays...
In light of the significant costs associated with a financial crisis that affects multiple countries...
This paper aims to investigate the classification power of market variables as predictors in the fin...
This paper proposes an original and unified toolbox to evaluate financial crisis early-warning syste...
Indicators of financial crisis generally do not have a good track record. This paper presents an ear...
Indicators of financial crisis generally do not have a good track record. This paper presents an ear...
The objective of this study is to scrutinise selected financial distress prediction models across se...
Asia’s financial crisis in July 1997 affects currency, capital market, and real market throughout As...
The financial crisis is a realistic problem that the general enterprise must encounter in the proces...
Abstract: This study conducts an empirical analysis of corporate financial crisis to develop an earl...
The advent of the Asian Financial Crisis (AFC) in the Southeast Asia in 1997 is an appealing case fo...
Traditional financial crisis prediction approaches have a tough time extracting the properties of fi...
Abstract: In order to establish a reasonable and effective financial crisis early warning model, the...
The development of corporate financial disturbance prediction models plays an essential role in the ...
Asia's inancial crisis in July 1997 affects currency, &nbs...
This paper compares six models for forecasting the performance of the ASEAN equity markets of Malays...
In light of the significant costs associated with a financial crisis that affects multiple countries...
This paper aims to investigate the classification power of market variables as predictors in the fin...
This paper proposes an original and unified toolbox to evaluate financial crisis early-warning syste...
Indicators of financial crisis generally do not have a good track record. This paper presents an ear...
Indicators of financial crisis generally do not have a good track record. This paper presents an ear...