Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models

Financial distress predictive models have been established and developed throughout the years as they often play a crucial part in the investing public’s decision-making. Previous researches have tested the predictability of these models using both financial and market data of publicly-listed compan...

Full description

Saved in:
Bibliographic Details
Main Authors: Damgo, Diomyka C., Pascual, Leona Cynthia M., San Juan, Aila Jane, Vitug, Alyssa Mari F., Cuartero, Rene D.
Format: text
Published: Animo Repository 2019
Subjects:
Online Access:https://animorepository.dlsu.edu.ph/faculty_research/9464
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: De La Salle University
id oai:animorepository.dlsu.edu.ph:faculty_research-9737
record_format eprints
spelling oai:animorepository.dlsu.edu.ph:faculty_research-97372023-06-19T01:34:04Z Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models Damgo, Diomyka C. Pascual, Leona Cynthia M. San Juan, Aila Jane Vitug, Alyssa Mari F. Cuartero, Rene D. Financial distress predictive models have been established and developed throughout the years as they often play a crucial part in the investing public’s decision-making. Previous researches have tested the predictability of these models using both financial and market data of publicly-listed companies from different sectors in their respective countries. This has resulted to a body of literature that led to the development of estimated prediction models that best fit the financial environment of mostly developed countries. In light of this, the researchers set out to assess the accuracy of five traditional prediction models (TPM) — Altman (2000) Z-Score Model, Ohlson (1980) O-Score Model, Zmijewski (1984) Probit Model, Shumway (2001) Hazard Model, and Blums (2003) D-Score Model — in predicting the financial distress of 175 non-financial companies listed in the Philippine Stock Exchange (PSE) from 2015 to 2017. Financial and market data were used to compute financial distress scores for every company in order to assess each TPM’s predictive power based on their odds of accuracy. Novel to this research are the two areas in which accuracy were assessed in: (1) at which year prior to experiencing financial distress does a TPM have the most accurate predictive power, and (2) for each year, which of the five TPMs had the most accurate predictive power. Results show that using a wide variety of financial and market data from the Philippines that all five TPMs have differences in prediction accuracy. Shumway’s Hazard Model provides the highest overall accuracy, but also the highest Type I error. Ohlson’s O-Score model provided the highest overall accuracy the closer it is to the year of financial distress. However, the results also showed that the accuracy of the TPMs are low compared to when they were applied to developed markets, showing that there may be a need to design models and assigned coefficient for emerging markets like the Philippines. 2019-11-01T07:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/9464 Faculty Research Work Animo Repository Corporations—Philippines—Finance 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
topic Corporations—Philippines—Finance
Finance and Financial Management
spellingShingle Corporations—Philippines—Finance
Finance and Financial Management
Damgo, Diomyka C.
Pascual, Leona Cynthia M.
San Juan, Aila Jane
Vitug, Alyssa Mari F.
Cuartero, Rene D.
Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models
description Financial distress predictive models have been established and developed throughout the years as they often play a crucial part in the investing public’s decision-making. Previous researches have tested the predictability of these models using both financial and market data of publicly-listed companies from different sectors in their respective countries. This has resulted to a body of literature that led to the development of estimated prediction models that best fit the financial environment of mostly developed countries. In light of this, the researchers set out to assess the accuracy of five traditional prediction models (TPM) — Altman (2000) Z-Score Model, Ohlson (1980) O-Score Model, Zmijewski (1984) Probit Model, Shumway (2001) Hazard Model, and Blums (2003) D-Score Model — in predicting the financial distress of 175 non-financial companies listed in the Philippine Stock Exchange (PSE) from 2015 to 2017. Financial and market data were used to compute financial distress scores for every company in order to assess each TPM’s predictive power based on their odds of accuracy. Novel to this research are the two areas in which accuracy were assessed in: (1) at which year prior to experiencing financial distress does a TPM have the most accurate predictive power, and (2) for each year, which of the five TPMs had the most accurate predictive power. Results show that using a wide variety of financial and market data from the Philippines that all five TPMs have differences in prediction accuracy. Shumway’s Hazard Model provides the highest overall accuracy, but also the highest Type I error. Ohlson’s O-Score model provided the highest overall accuracy the closer it is to the year of financial distress. However, the results also showed that the accuracy of the TPMs are low compared to when they were applied to developed markets, showing that there may be a need to design models and assigned coefficient for emerging markets like the Philippines.
format text
author Damgo, Diomyka C.
Pascual, Leona Cynthia M.
San Juan, Aila Jane
Vitug, Alyssa Mari F.
Cuartero, Rene D.
author_facet Damgo, Diomyka C.
Pascual, Leona Cynthia M.
San Juan, Aila Jane
Vitug, Alyssa Mari F.
Cuartero, Rene D.
author_sort Damgo, Diomyka C.
title Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models
title_short Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models
title_full Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models
title_fullStr Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models
title_full_unstemmed Assessing financial distress predictability among publicly listed non-financial firms in the Philippines: Utilizing five traditional predictive models
title_sort assessing financial distress predictability among publicly listed non-financial firms in the philippines: utilizing five traditional predictive models
publisher Animo Repository
publishDate 2019
url https://animorepository.dlsu.edu.ph/faculty_research/9464
_version_ 1769841905943707648