Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it

Objective: Company growth and profitability forecasts are important inputs in the valuation process. Also, mean reversion estimates can serve as inputs in estimating steady-state final value parameters. The main purpose of this study is to test the hypothesis that life cycle-based mean reversion mod...

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Autores principales: Behzad Kardan, Mohammad Hossein Vadiei Nowghabi, Masoumeh Shahsavari
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Lenguaje:FA
Publicado: Shahid Bahonar University of Kerman 2020
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Acceso en línea:https://doaj.org/article/7f16499a8b1742aba9f70c81f5f3b09d
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id oai:doaj.org-article:7f16499a8b1742aba9f70c81f5f3b09d
record_format dspace
institution DOAJ
collection DOAJ
language FA
topic life cycle
forecast
mean reversion
improvement of model accuracy
Accounting. Bookkeeping
HF5601-5689
spellingShingle life cycle
forecast
mean reversion
improvement of model accuracy
Accounting. Bookkeeping
HF5601-5689
Behzad Kardan
Mohammad Hossein Vadiei Nowghabi
Masoumeh Shahsavari
Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it
description Objective: Company growth and profitability forecasts are important inputs in the valuation process. Also, mean reversion estimates can serve as inputs in estimating steady-state final value parameters. The main purpose of this study is to test the hypothesis that life cycle-based mean reversion models provide better results for forecasting profitability and growth compared to the industry-level and economy-wide models. This study also tests the hypothesis that managers realize the benefits of industry and life cycle analysis when making their predictions. Totally, this study compares the variables and factors affecting the accuracy of predictions from mean reversion life cycle-based models with industry-level and economy-wide models.  Methods: The data of 161 companies listed in the Tehran Stock Exchange, TSE, in a 10-year period of 2008-2018 were collected from the software, financial statements, and the TSE official website. To test the research hypotheses, we used statistical tests such as t- student, multivariate regression using SPSS software, econometrics estimation using Eviews. The Dickinson (2011) model was used to determine the different stages of the companies' life cycle, which is consistent with the pattern of cash flows (operating activities, investment, and financing).  Results: Test results of the first hypothesis, in most cases, provided evidence that growth and profitability forecasts derived from industry-level mean reversion models outperform the forecasts of the life cycle and the economy-wide models. By comparing the mean errors in the second hypothesis, the findings of the model are more accurate than other models, indicating that managers realize the importance of the firm's life cycle when predicting profits. The results of the study of factors affecting the accuracy of the life cycle model of prediction compared to other models indicated that the improvement of life cycle growth forecasts lacks significant relationships with systematic and non-systematic risk, beta coefficient, trading volume, the ratio of institutional owners, the market-to-book ratio, and the amount and intensity of the R &D, the volume of intangible assets, and financial leverage. However, for higher profitability scales, improved life cycle forecasts correlate with firm size, assets and equipment, and abnormal (poor) corporate returns. Also, the life cycle approach works best when the percentage of institutional shareholder ownership is high and the company's uncertainty, profitability, and assets are low.  Conclusion: In this study, we investigated the accuracy of a forecast model based on a firm life cycle for predicting future profitability and growth relative to economy-wide and industry-specific forecast models. In general, the results of the research indicate the relative superiority of the predictions of industry-level models over the predictions obtained from the life cycle and the economy-wide models. Although the research findings do not provide evidence of more explanatory power of the life cycle model compared to other models, they suggest that managers have realized the importance of the life cycle of the company when making profit forecasts. This research has important implications that help investors, analysts, managers, and others make better predictions when making financial decisions. Also, this study identifies the drivers of growth and profitability for companies through a low-cost and high employment strategy to achieve the most accurate forecasts.
format article
author Behzad Kardan
Mohammad Hossein Vadiei Nowghabi
Masoumeh Shahsavari
author_facet Behzad Kardan
Mohammad Hossein Vadiei Nowghabi
Masoumeh Shahsavari
author_sort Behzad Kardan
title Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it
title_short Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it
title_full Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it
title_fullStr Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it
title_full_unstemmed Investigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it
title_sort investigating the performance of life cycle based forecasts and determining the components affecting it
publisher Shahid Bahonar University of Kerman
publishDate 2020
url https://doaj.org/article/7f16499a8b1742aba9f70c81f5f3b09d
work_keys_str_mv AT behzadkardan investigatingtheperformanceoflifecyclebasedforecastsanddeterminingthecomponentsaffectingit
AT mohammadhosseinvadieinowghabi investigatingtheperformanceoflifecyclebasedforecastsanddeterminingthecomponentsaffectingit
AT masoumehshahsavari investigatingtheperformanceoflifecyclebasedforecastsanddeterminingthecomponentsaffectingit
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spelling oai:doaj.org-article:7f16499a8b1742aba9f70c81f5f3b09d2021-11-04T19:56:32ZInvestigating the Performance of Life Cycle Based Forecasts and Determining the Components Affecting it2008-89142476-292X10.22103/jak.2020.15360.3182https://doaj.org/article/7f16499a8b1742aba9f70c81f5f3b09d2020-12-01T00:00:00Zhttps://jak.uk.ac.ir/article_2761_776c92091576465ca324f08df90ff09e.pdfhttps://doaj.org/toc/2008-8914https://doaj.org/toc/2476-292XObjective: Company growth and profitability forecasts are important inputs in the valuation process. Also, mean reversion estimates can serve as inputs in estimating steady-state final value parameters. The main purpose of this study is to test the hypothesis that life cycle-based mean reversion models provide better results for forecasting profitability and growth compared to the industry-level and economy-wide models. This study also tests the hypothesis that managers realize the benefits of industry and life cycle analysis when making their predictions. Totally, this study compares the variables and factors affecting the accuracy of predictions from mean reversion life cycle-based models with industry-level and economy-wide models.  Methods: The data of 161 companies listed in the Tehran Stock Exchange, TSE, in a 10-year period of 2008-2018 were collected from the software, financial statements, and the TSE official website. To test the research hypotheses, we used statistical tests such as t- student, multivariate regression using SPSS software, econometrics estimation using Eviews. The Dickinson (2011) model was used to determine the different stages of the companies' life cycle, which is consistent with the pattern of cash flows (operating activities, investment, and financing).  Results: Test results of the first hypothesis, in most cases, provided evidence that growth and profitability forecasts derived from industry-level mean reversion models outperform the forecasts of the life cycle and the economy-wide models. By comparing the mean errors in the second hypothesis, the findings of the model are more accurate than other models, indicating that managers realize the importance of the firm's life cycle when predicting profits. The results of the study of factors affecting the accuracy of the life cycle model of prediction compared to other models indicated that the improvement of life cycle growth forecasts lacks significant relationships with systematic and non-systematic risk, beta coefficient, trading volume, the ratio of institutional owners, the market-to-book ratio, and the amount and intensity of the R &D, the volume of intangible assets, and financial leverage. However, for higher profitability scales, improved life cycle forecasts correlate with firm size, assets and equipment, and abnormal (poor) corporate returns. Also, the life cycle approach works best when the percentage of institutional shareholder ownership is high and the company's uncertainty, profitability, and assets are low.  Conclusion: In this study, we investigated the accuracy of a forecast model based on a firm life cycle for predicting future profitability and growth relative to economy-wide and industry-specific forecast models. In general, the results of the research indicate the relative superiority of the predictions of industry-level models over the predictions obtained from the life cycle and the economy-wide models. Although the research findings do not provide evidence of more explanatory power of the life cycle model compared to other models, they suggest that managers have realized the importance of the life cycle of the company when making profit forecasts. This research has important implications that help investors, analysts, managers, and others make better predictions when making financial decisions. Also, this study identifies the drivers of growth and profitability for companies through a low-cost and high employment strategy to achieve the most accurate forecasts.Behzad KardanMohammad Hossein Vadiei NowghabiMasoumeh ShahsavariShahid Bahonar University of Kermanarticlelife cycleforecastmean reversionimprovement of model accuracyAccounting. BookkeepingHF5601-5689FAمجله دانش حسابداری, Vol 11, Iss 4, Pp 65-96 (2020)