Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul

In a data set, an outlier refers to a data point that is considerably different from the others. Detecting outliers provides useful application-specific insights and leads to choosing right prediction models. Outlier detection (also known as anomaly detection or novelty detection) has been studied i...

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Main Authors: Senol Emir, Hasan Dincer, Umit Hacioglu, Serhat Yuksel
Format: Article
Language:English
Published: Ümit Hacıoğlu 2016-04-01
Series:International Journal of Research In Business and Social Science
Online Access:http://ssbfnet.com/ojs/index.php/ijrbs/article/view/462
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spelling doaj-88a55e04ed0d4cac97ab87fb132a42e92020-11-25T02:28:27ZengÜmit HacıoğluInternational Journal of Research In Business and Social Science2147-44782016-04-0144456010.20525/ijrbs.v4i4.462220Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa IstanbulSenol EmirHasan DincerUmit HaciogluSerhat YukselIn a data set, an outlier refers to a data point that is considerably different from the others. Detecting outliers provides useful application-specific insights and leads to choosing right prediction models. Outlier detection (also known as anomaly detection or novelty detection) has been studied in statistics and machine learning for a long time. It is an essential preprocessing step of data mining process. In this study, outlier detection step in the data mining process is applied for identifying the top 20 outlier firms. Three outlier detection algorithms are utilized using fundamental analysis variables of firms listed in Borsa Istanbul for the 2011-2014 period. The results of each algorithm are presented and compared. Findings show that 15 different firms are identified by three different outlier detection methods. KCHOL and SAHOL have the greatest number of appearances with 12 observations among these firms. By investigating the results, it is concluded that each of three algorithms makes different outlier firm lists due to differences in their approaches for outlier detection.http://ssbfnet.com/ojs/index.php/ijrbs/article/view/462
collection DOAJ
language English
format Article
sources DOAJ
author Senol Emir
Hasan Dincer
Umit Hacioglu
Serhat Yuksel
spellingShingle Senol Emir
Hasan Dincer
Umit Hacioglu
Serhat Yuksel
Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul
International Journal of Research In Business and Social Science
author_facet Senol Emir
Hasan Dincer
Umit Hacioglu
Serhat Yuksel
author_sort Senol Emir
title Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul
title_short Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul
title_full Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul
title_fullStr Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul
title_full_unstemmed Comparative Study of Outlier Detection Algorithms via Fundamental Analysis Variables: An Application on Firms Listed in Borsa Istanbul
title_sort comparative study of outlier detection algorithms via fundamental analysis variables: an application on firms listed in borsa istanbul
publisher Ümit Hacıoğlu
series International Journal of Research In Business and Social Science
issn 2147-4478
publishDate 2016-04-01
description In a data set, an outlier refers to a data point that is considerably different from the others. Detecting outliers provides useful application-specific insights and leads to choosing right prediction models. Outlier detection (also known as anomaly detection or novelty detection) has been studied in statistics and machine learning for a long time. It is an essential preprocessing step of data mining process. In this study, outlier detection step in the data mining process is applied for identifying the top 20 outlier firms. Three outlier detection algorithms are utilized using fundamental analysis variables of firms listed in Borsa Istanbul for the 2011-2014 period. The results of each algorithm are presented and compared. Findings show that 15 different firms are identified by three different outlier detection methods. KCHOL and SAHOL have the greatest number of appearances with 12 observations among these firms. By investigating the results, it is concluded that each of three algorithms makes different outlier firm lists due to differences in their approaches for outlier detection.
url http://ssbfnet.com/ojs/index.php/ijrbs/article/view/462
work_keys_str_mv AT senolemir comparativestudyofoutlierdetectionalgorithmsviafundamentalanalysisvariablesanapplicationonfirmslistedinborsaistanbul
AT hasandincer comparativestudyofoutlierdetectionalgorithmsviafundamentalanalysisvariablesanapplicationonfirmslistedinborsaistanbul
AT umithacioglu comparativestudyofoutlierdetectionalgorithmsviafundamentalanalysisvariablesanapplicationonfirmslistedinborsaistanbul
AT serhatyuksel comparativestudyofoutlierdetectionalgorithmsviafundamentalanalysisvariablesanapplicationonfirmslistedinborsaistanbul
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