This study explores the use of machine learning methods to forecast the likelihood of firm birth and firm abandonment during the first five years of a new business gestation. The predictability of traditional logistic regression is compared with several machine learning methods, including logistic regression, k-nearest neighbors, random forest, extreme gradient boosting, support vector machines, and artificial neural networks. While extreme gradient boosting shows the best overall model performance, neural networks provide good results by correctly classifying entrepreneurs who have not abandoned their business venture in the early stage of the gestation process. In addition, this study provides valuable insights in relation to the start-up...
Die Bedeutung von Startups für die wirtschaftliche Dynamik, Innovation und den Wettbewerb wurde bere...
Understanding uncertainties and assessing the risks surrounding business opportunities is essential ...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
This study explores the use of machine learning methods to forecast the likelihood of firm birth and...
Predicting the success of a new venture has always been a topical issue for both investors and resea...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
The profit earned by a company for aspecific period depends on several factors like howplenty of tim...
A takeover success prediction model aims at predicting the probability that a takeover attempt will ...
This research aims to explore which kinds of metrics are more valuable in making investment decision...
The primary objective is to construct a sustainable machine-learning model that utilizes multiple va...
Venture capital (VC) is the main contributor to entrepreneurial firms' funding and thus plays a cruc...
For equity investors the identification of ventures that most likely will achieve the expected retur...
A North American provider of vehicle parking solutions seeks to predict if a bid will be successful ...
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Sci...
Startups play an increasingly important role in the modern economy. In this thesis, we study startup...
Die Bedeutung von Startups für die wirtschaftliche Dynamik, Innovation und den Wettbewerb wurde bere...
Understanding uncertainties and assessing the risks surrounding business opportunities is essential ...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
This study explores the use of machine learning methods to forecast the likelihood of firm birth and...
Predicting the success of a new venture has always been a topical issue for both investors and resea...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
The profit earned by a company for aspecific period depends on several factors like howplenty of tim...
A takeover success prediction model aims at predicting the probability that a takeover attempt will ...
This research aims to explore which kinds of metrics are more valuable in making investment decision...
The primary objective is to construct a sustainable machine-learning model that utilizes multiple va...
Venture capital (VC) is the main contributor to entrepreneurial firms' funding and thus plays a cruc...
For equity investors the identification of ventures that most likely will achieve the expected retur...
A North American provider of vehicle parking solutions seeks to predict if a bid will be successful ...
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Sci...
Startups play an increasingly important role in the modern economy. In this thesis, we study startup...
Die Bedeutung von Startups für die wirtschaftliche Dynamik, Innovation und den Wettbewerb wurde bere...
Understanding uncertainties and assessing the risks surrounding business opportunities is essential ...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...