UMM Institutional Repository

“MANFAAT LABA DAN ARUS KAS UNTUK MEMPREDIKSI KONDISIFINANCIAL DISTRESS PADA PERUSAHAAN PUBLIKPEMANUFAKTURAN DI INDONESIA”

IMELDA, LILYLILY (2009) “MANFAAT LABA DAN ARUS KAS UNTUK MEMPREDIKSI KONDISIFINANCIAL DISTRESS PADA PERUSAHAAN PUBLIKPEMANUFAKTURAN DI INDONESIA”. Other thesis, University of Muhammadiyah Malang.

[img]
Preview
Text
MANFAAT_LABA_DAN_ARUS_KAS_UNTUK_MEMPREDIKSI_KONDISIFINANCIAL_DISTRESS_PADA_PERUSAHAAN_PUBLIKPEMANUFAKTURAN_DI_INDONESIA.pdf - Published Version

Download (74kB) | Preview

Abstract

Financial distress is a stage of decline in the company's financial condition that occurred before the bankruptcy or liquidation. Information that a company experiencing financial distress condition is very useful, as an early warning for companies to perform preventive actions before the bankruptcy occurred. This study tried to test the accuracy of earnings and cash flows in predicting financial distress of a company. From the testing that was done, it can be concluded that the profits are good predictors of cash flow than in predicting the condition of a company's financial distress. Where is the profit given the success rate for data classification and level of 95.745% correctly predicted profit of 87.234% which compared with cash flow only gives the classification success rate of 72.340% and the level of cash flow prediction is correct for 48.936%

Item Type: Thesis (Other)
Subjects: H Social Sciences > HB Economic Theory
Divisions: Faculty of Economics and Business > Department of Accounting (62201)
Depositing User: Anwar Jasin
Date Deposited: 09 May 2012 04:31
Last Modified: 09 May 2012 04:31
URI : http://eprints.umm.ac.id/id/eprint/4852

Actions (login required)

View Item View Item
UMM Official

© 2008 UMM Library. All Rights Reserved.
Jl. Raya Tlogomas No 246 Malang East Java Indonesia - Phone +62341464318 ext. 150, 151 - Fax +62341464101
E-Mail : repository@umm.ac.id - Website : https://lib.umm.ac.id - Online Catalog : https://laser.umm.ac.id - e-Theses : https://etd.umm.ac.id

Web Analytics

UMM Institutional Repository is powered by :
EPrints Logo