Failure prediction of government funded start-up firms
This study aims to create a prediction model that would forecast the bankruptcy of government funded start-up firms (GFSUs). Also, the financial development patterns of GFSUs are outlined. The dataset consists of 417 Estonian GFSUs, of which 75 have bankrupted before becoming five years old and 312...
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LLC "CPC "Business Perspectives"
2017-08-01
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Online Access: | https://businessperspectives.org/images/pdf/applications/publishing/templates/article/assets/8989/imfi_2017_02cont2_Lukason.pdf |
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doaj-9cd121c8291c437a9b60d711b963b0752020-11-25T02:40:46ZengLLC "CPC "Business Perspectives"Investment Management & Financial Innovations 1810-49671812-93582017-08-0114229630610.21511/imfi.14(2-2).2017.018989Failure prediction of government funded start-up firmsOliver Lukason0Kaspar Käsper1Ph.D., School of Economics and Business Administration, University of TartuMBA, School of Economics and Business Administration, University of TartuThis study aims to create a prediction model that would forecast the bankruptcy of government funded start-up firms (GFSUs). Also, the financial development patterns of GFSUs are outlined. The dataset consists of 417 Estonian GFSUs, of which 75 have bankrupted before becoming five years old and 312 have survived for five years. Six financial ratios have been calculated for one (t+1) and two (t+2) years after firms have become active. Weighted logistic regression analysis is applied to create the bankruptcy prediction models and consecutive factor and cluster analyses are applied to outline the financial patterns. Bankruptcy prediction models obtain average classification accuracies, namely 63.8% for t+1 and 67.8% for t+2. The bankrupt firms are distinguished with a higher accuracy than the survived firms, with liquidity and equity ratios being the useful predictors of bankruptcy. Five financial patterns are detected for GFSUs, but bankrupt GFSUs do not follow any distinct patterns that would be characteristic only to them.https://businessperspectives.org/images/pdf/applications/publishing/templates/article/assets/8989/imfi_2017_02cont2_Lukason.pdfbankruptcyfailure predictiongovernment grantsstart-up firms |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Oliver Lukason Kaspar Käsper |
spellingShingle |
Oliver Lukason Kaspar Käsper Failure prediction of government funded start-up firms Investment Management & Financial Innovations bankruptcy failure prediction government grants start-up firms |
author_facet |
Oliver Lukason Kaspar Käsper |
author_sort |
Oliver Lukason |
title |
Failure prediction of government funded start-up firms |
title_short |
Failure prediction of government funded start-up firms |
title_full |
Failure prediction of government funded start-up firms |
title_fullStr |
Failure prediction of government funded start-up firms |
title_full_unstemmed |
Failure prediction of government funded start-up firms |
title_sort |
failure prediction of government funded start-up firms |
publisher |
LLC "CPC "Business Perspectives" |
series |
Investment Management & Financial Innovations |
issn |
1810-4967 1812-9358 |
publishDate |
2017-08-01 |
description |
This study aims to create a prediction model that would forecast the bankruptcy of government funded start-up firms (GFSUs). Also, the financial development patterns of GFSUs are outlined. The dataset consists of 417 Estonian GFSUs, of which 75 have bankrupted before becoming five years old and 312 have survived for five years. Six financial ratios have been calculated for one (t+1) and two (t+2) years after firms have become active. Weighted logistic regression analysis is applied to create the bankruptcy prediction models and consecutive factor and cluster analyses are applied to outline the financial patterns. Bankruptcy prediction models obtain average classification accuracies, namely 63.8% for t+1 and 67.8% for t+2. The bankrupt firms are distinguished with a higher accuracy than the survived firms, with liquidity and equity ratios being the useful predictors of bankruptcy. Five financial patterns are detected for GFSUs, but bankrupt GFSUs do not follow any distinct patterns that would be characteristic only to them. |
topic |
bankruptcy failure prediction government grants start-up firms |
url |
https://businessperspectives.org/images/pdf/applications/publishing/templates/article/assets/8989/imfi_2017_02cont2_Lukason.pdf |
work_keys_str_mv |
AT oliverlukason failurepredictionofgovernmentfundedstartupfirms AT kasparkasper failurepredictionofgovernmentfundedstartupfirms |
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1724779885301334016 |