Author/Authors :
?zda?o?lu G. نويسنده Dept. of Business Administration, Faculty of Business, Dokuz Eylül University, T?naztepe Campus, Buca, ?zmir, Turkey. , ?zda?o?lu A. نويسنده Dept. of Business Administration, Faculty of Business, Dokuz Eylül University, T?naztepe Campus, Buca, ?zmir, Turkey. , Gümü? Y. نويسنده Dept. of Tourism Management, Reha Midilli Foça Tourism Faculty, Dokuz Eylul University, Foça, ?zmir, Turkey. , Kurt-Gümü? G. نويسنده Dept. of International Business and Trade, Faculty of Business, Dokuz Eylül University, T?naztepe Campus, Buca, ?zmir, Turkey.
Abstract :
Predicting financially false statements to detect frauds in companies has an increasing trend in recent studies.
The manipulations in financial statements can be discovered by auditors when related financial records and
indicators are analyzed in depth together with the experience of auditors in order to create knowledge to
develop a decision support system to classify firms. Auditors may annotate the firms’ statements as “correct”
or “incorrect” to add their experience, and then these annotations with related indicators can be used for the
learning process to generate a model. Once the model is learned and tested for validation, it can be used for
new firms to predict their class values. In this research, we attempted to reveal this benefit in the framework
of Turkish firms. In this regard, the study aims at classifying financially correct and false statements of
Turkish firms listed on Borsa ?stanbul, using their particular financial ratios as indicators of a success or a
manipulation. The dataset was selected from a particular period after the crisis (2009 to 2013). Commonly
used three classification methods in data mining were employed for the classification: decision tree, logistic
regression, and artificial neural network, respectively. According to the results, although all three methods
are performed well, the latter had the best performance, and it outperforms other two classical methods. The
common ground of the selected methods is that they pointed out the Z-score as the first distinctive indicator
for classifying financial statements under consideration.