Cash flow forecast for South African firms (original) (raw)

Li, Yun ORCID logoORCID: https://orcid.org/0000-0002-6575-1839, Moutinho, Luiz, Opong, Kwaku K. and Pang, Yang(2015) Cash flow forecast for South African firms.Review of Development Finance, 5(1), pp. 24-33. (doi: 10.1016/j.rdf.2014.11.001)

Abstract

This paper applies models in the extant literature that have been used to forecast operating cash flows to predict the cash flows of South African firms listed on the Johannesburg Stock Exchange. Out-of-sample performance is examined for each model and compared between them. The reported results show that some accrual terms, i.e. depreciation and changes in inventory do not enhance cash flow prediction for the average South African firm in contrast to the reported results of studies in USA and Australia. Inclusion of more explanatory variables does not necessarily improve the models, according to the out-of-sample results. The paper proposes the application of moving average model in panel data, and vector regressive model for multi-period-ahead prediction of cash flows for South Africa firms.

Item Type: Articles
Status: Published
Refereed: Yes
Glasgow Author(s) Enlighten ID: Li, Professor Yun and Opong, Professor Kwaku and Moutinho, Professor Luiz and Pang, Mr Yang
Authors: Li, Y., Moutinho, L., Opong, K. K., and Pang, Y.
College/School: College of Science and Engineering > School of Engineering > Systems Power and EnergyCollege of Social Sciences > Adam Smith Business School > Accounting and FinanceCollege of Social Sciences > Adam Smith Business School > Management
Journal Name: Review of Development Finance
Publisher: Africagrowth Institute
ISSN: 1879-9337
Copyright Holders: Copyright © 2014 The Authors
First Published: First published in Review of Development Finance 5(1):24-33
Publisher Policy: Reproduced under a Creative Commons License

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Deposit and Record Details

ID Code: 100956
Depositing User: Miss Dawn Pike
Datestamp: 06 Jan 2015 12:47
Last Modified: 02 May 2025 04:33
Date of first online publication: June 2015
Date Deposited: 15 December 2015
Data Availability Statement: No