Comparing Relative and Additive Contents of Return with Cash Recovery Rate
Publish Year: 1396
Type: Journal paper
Language: English
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Document National Code:
JR_AMFA-2-1_003
Index date: 29 September 2021
Comparing Relative and Additive Contents of Return with Cash Recovery Rate abstract
One of the goals of financial reporting is to provide the useful information in order to facilitate the decision making. Accounting information system is of high importance for the users to make specific decisions. The information should be analyzed to present the valuable information to the investors so that in this paper, the relative content and return additive with cash recovery have been addressed in the corporates of Tehran Stock Exchange. This research population includes the accepted corporates by Tehran Stock Exchange during a five year period (2010-2014). Finally, considering the research limitations and using the systematic deletion method, the information related to 109 corporates has been gathered and with respect to the defined goals, this research is regarded as an applied one. In terms of the research design, it is an event one because of background data and its deduction method is an induction and correlation one. Current study involves a primary hypothesis and six secondary hypotheses; here, a linear regression method has been used to examine the hypotheses. In order to analyze the data and test the research hypotheses, the software Eviews has been utilized.
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Comparing Relative and Additive Contents of Return with Cash Recovery Rate authors
Mohammadreza Mehrabanpour
Department of Management, University of Tehran, Tehran, Iran
Mehri Davoudabadi
Department of Accounting, Islamic Azad University, Arak Branch, Arak, Iran
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