Research on performance forecasting bias in start-up companies

If a company’s corporate performance forecasting bias is not zero and it continues to over- or under-predict actual performance, capital investments and employment will deviate from their expected levels. Therefore, forecast bias is a very important issue for a company’s management. However, few emp...

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Bibliographic Details
Main Author: Yukiko Konno
Format: Article
Language:English
Published: Taylor & Francis Group 2022-12-01
Series:Cogent Economics & Finance
Subjects:
Online Access:https://www.tandfonline.com/doi/10.1080/23322039.2022.2118680
Description
Summary:If a company’s corporate performance forecasting bias is not zero and it continues to over- or under-predict actual performance, capital investments and employment will deviate from their expected levels. Therefore, forecast bias is a very important issue for a company’s management. However, few empirical studies exist on corporate performance forecasting bias in start-up companies, given the data limitations. Most existing studies have primarily analysed listed companies, and few studies particularly targeted small, medium and micro or start-up companies. Therefore, this study uses data from start-up companies that received loans from the Japan Finance Corporation (JFC) to investigate how new start-up companies’ performance forecasting bias is affected by their attributes and past performance forecasts. The results of the analysis showed that company size, profitability and optimism of past performance forecasts had a positive impact on performance forecasting bias. The results of this research contribute to the elaboration of corporate performance forecasts and are expected to be useful for corporate management when formulating management strategies and engaging in resource allocation, stakeholder decision making and policymaking.
ISSN:2332-2039