For equity investors the identification of ventures that most likely will achieve the expected return on investment is an extremely complex task. To select early-stage companies, venture capitalists and business angels traditionally rely on a mix of assessment criteria and their own experience. However, given the high level of risk with new, innovative companies, the number of financially successful startups within an investment portfolio is generally very low. In this context of uncertainty, a data-driven approach to investment decision-making can provide more effective results. Specifically, the application of machine learning techniques can provide equity investors and scholars in entrepreneurial finance with new insights on patterns com...
Startups play an increasingly important role in the modern economy. In this thesis, we study startup...
The bottleneck of Big Data today is the analysis of large amounts of information, including data min...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
This research aims to explore which kinds of metrics are more valuable in making investment decision...
[EN] In order to support equity investors in their decision-making process, researchers are explori...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Venture capital (VC) is the main contributor to entrepreneurial firms' funding and thus plays a cruc...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
This book aims at providing an empirical understanding of the main drivers affecting investors’ pref...
Since the Finance Industry is, through the years, growing tremendously, the willingness ...
This study explores the use of machine learning methods to forecast the likelihood of firm birth and...
Investing in early-stage companies is incredibly hard, especially when no data are available to supp...
Equity crowdfunding is an increasingly popular means of raising capital for early stage startups. It...
In this research work, an end-to-end systematic investment strategy based on machine learning models...
Predicting the success of a new venture has always been a topical issue for both investors and resea...
Startups play an increasingly important role in the modern economy. In this thesis, we study startup...
The bottleneck of Big Data today is the analysis of large amounts of information, including data min...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
This research aims to explore which kinds of metrics are more valuable in making investment decision...
[EN] In order to support equity investors in their decision-making process, researchers are explori...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Venture capital (VC) is the main contributor to entrepreneurial firms' funding and thus plays a cruc...
This study investigates how modern machine learning (ML) techniques can be used to advance the field...
This book aims at providing an empirical understanding of the main drivers affecting investors’ pref...
Since the Finance Industry is, through the years, growing tremendously, the willingness ...
This study explores the use of machine learning methods to forecast the likelihood of firm birth and...
Investing in early-stage companies is incredibly hard, especially when no data are available to supp...
Equity crowdfunding is an increasingly popular means of raising capital for early stage startups. It...
In this research work, an end-to-end systematic investment strategy based on machine learning models...
Predicting the success of a new venture has always been a topical issue for both investors and resea...
Startups play an increasingly important role in the modern economy. In this thesis, we study startup...
The bottleneck of Big Data today is the analysis of large amounts of information, including data min...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...