Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms

Investment analysts often used equity valuation multiples to assess the performance of stocks in relation to likely future return to shareholders. Valuation multiples used by analysts are price to earnings, price to book value, price to cash flow and price to sales multiples. However, researchers ha...

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Main Authors: Shittu, Isah, Che Ahmad, Ayoib, Ishak, Zuaini
格式: Article
语言:English
出版: Othman Yeop Abdullah (OYA) Graduate School of Business, Universiti Utara Malaysia 2015
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在线阅读:http://repo.uum.edu.my/18446/1/IPBJ%20%207%202%20%202015%20%2017-26.pdf
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spelling my.uum.repo.184462016-08-01T07:06:26Z http://repo.uum.edu.my/18446/ Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms Shittu, Isah Che Ahmad, Ayoib Ishak, Zuaini HF5601 Accounting Investment analysts often used equity valuation multiples to assess the performance of stocks in relation to likely future return to shareholders. Valuation multiples used by analysts are price to earnings, price to book value, price to cash flow and price to sales multiples. However, researchers have argued that correlation exists between the multiples hence assessing them individually and later merging them to one multiple results to reduplication.This study employed the principal component analysis (PCA) method to condense the four equity valuation multiples (EVM) of 223 randomly selected listed firms in Malaysia for the period of 2008-2013. The PCA result reveals that three (3) components explained 99% of the total variables variance. Suggesting that, the three components (price to earnings, price to book value and price to cash flow multiples) can satisfactorily explain all the EVMs.The implication is that strong correlation exists between EVMs of Malaysian firms.Therefore, the study recommends the application of principal component analysis methodology in the analysis of the equity valuation multiples because of correlation that exists between the valuation multiples. The study is limited to EVMs, entity valuations are not covered in the study.Applying PCA to equity valuation multiples ensures accuracy and reliability of result interpretation due to absence of multicolearity in the decomposed principal component. Othman Yeop Abdullah (OYA) Graduate School of Business, Universiti Utara Malaysia 2015 Article PeerReviewed application/pdf en http://repo.uum.edu.my/18446/1/IPBJ%20%207%202%20%202015%20%2017-26.pdf Shittu, Isah and Che Ahmad, Ayoib and Ishak, Zuaini (2015) Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms. International Postgraduate Business Journal, 7 (2). pp. 17-26. ISSN 2180-2459 http://www.oyagsb.uum.edu.my/images/ipbj/IPBJ_Vol._7_2_2015/2_17to26.pdf
institution Universiti Utara Malaysia
building UUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Utara Malaysia
content_source UUM Institutionali Repository
url_provider http://repo.uum.edu.my/
language English
topic HF5601 Accounting
spellingShingle HF5601 Accounting
Shittu, Isah
Che Ahmad, Ayoib
Ishak, Zuaini
Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms
description Investment analysts often used equity valuation multiples to assess the performance of stocks in relation to likely future return to shareholders. Valuation multiples used by analysts are price to earnings, price to book value, price to cash flow and price to sales multiples. However, researchers have argued that correlation exists between the multiples hence assessing them individually and later merging them to one multiple results to reduplication.This study employed the principal component analysis (PCA) method to condense the four equity valuation multiples (EVM) of 223 randomly selected listed firms in Malaysia for the period of 2008-2013. The PCA result reveals that three (3) components explained 99% of the total variables variance. Suggesting that, the three components (price to earnings, price to book value and price to cash flow multiples) can satisfactorily explain all the EVMs.The implication is that strong correlation exists between EVMs of Malaysian firms.Therefore, the study recommends the application of principal component analysis methodology in the analysis of the equity valuation multiples because of correlation that exists between the valuation multiples. The study is limited to EVMs, entity valuations are not covered in the study.Applying PCA to equity valuation multiples ensures accuracy and reliability of result interpretation due to absence of multicolearity in the decomposed principal component.
format Article
author Shittu, Isah
Che Ahmad, Ayoib
Ishak, Zuaini
author_facet Shittu, Isah
Che Ahmad, Ayoib
Ishak, Zuaini
author_sort Shittu, Isah
title Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms
title_short Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms
title_full Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms
title_fullStr Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms
title_full_unstemmed Application of principal component analysis on equity valuation multiples: Evidence from Malaysian firms
title_sort application of principal component analysis on equity valuation multiples: evidence from malaysian firms
publisher Othman Yeop Abdullah (OYA) Graduate School of Business, Universiti Utara Malaysia
publishDate 2015
url http://repo.uum.edu.my/18446/1/IPBJ%20%207%202%20%202015%20%2017-26.pdf
http://repo.uum.edu.my/18446/
http://www.oyagsb.uum.edu.my/images/ipbj/IPBJ_Vol._7_2_2015/2_17to26.pdf
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score 13.149126