This paper has the objective of applying machine learning models to predict the performance of private equity funds, to allow for more effective fund selection for investors in the private markets. Prior research has mainly focused on determining a probability of private equity funds exceeding a pre-defined rate of return, or on examining factors which influence the returns of said funds. We instead utilize the factors previously determined to influence private equity fund returns to train machine learning algorithms predicting the returns investors can expect to receive from the moment of making a primary investment into the fund, until the fund’s liquidation. Due to it being the measure of choice for both general partners (GPs) and...
The master's degree thesis is composed of theoretical and practical parts. The theoretical part desc...
A research report submitted to the Faculty of Engineering and the Built Environment, University of t...
In this research, I show that aggregate information from financial statement analysis helps in predi...
This paper has the objective of applying machine learning models to predict the performance of priv...
This thesis examines the application of machine learning algorithms to predict whether a student wil...
A research report submitted to the Faculty of Commerce, Law and Management, University of the Witwa...
This study aims to address the nationwide gap in AADT data on NFAS roads in U.S. With a Spatial Auto...
This study examines whether the input-output production network affects earnings predictability for ...
This dissertation provides an overview of various valuation approaches, mainly the multiples-based ...
Posterior predictive model checks (PPMC) are one Bayesian model-data fit approach. Thus far, PPMC fo...
abstract: Due to large data resources generated by online educational applications, Educational Data...
Master thesis Business Administration - University of Agder 2016This thesis paper examines the forec...
textThe multilevel model (MLM) is easily parameterized to handle partially clustered data (see, for ...
Having an accurate corn yield prediction is useful because it provides information about production ...
The aim of this thesis is to understand how firms with different payout policies impact the performa...
The master's degree thesis is composed of theoretical and practical parts. The theoretical part desc...
A research report submitted to the Faculty of Engineering and the Built Environment, University of t...
In this research, I show that aggregate information from financial statement analysis helps in predi...
This paper has the objective of applying machine learning models to predict the performance of priv...
This thesis examines the application of machine learning algorithms to predict whether a student wil...
A research report submitted to the Faculty of Commerce, Law and Management, University of the Witwa...
This study aims to address the nationwide gap in AADT data on NFAS roads in U.S. With a Spatial Auto...
This study examines whether the input-output production network affects earnings predictability for ...
This dissertation provides an overview of various valuation approaches, mainly the multiples-based ...
Posterior predictive model checks (PPMC) are one Bayesian model-data fit approach. Thus far, PPMC fo...
abstract: Due to large data resources generated by online educational applications, Educational Data...
Master thesis Business Administration - University of Agder 2016This thesis paper examines the forec...
textThe multilevel model (MLM) is easily parameterized to handle partially clustered data (see, for ...
Having an accurate corn yield prediction is useful because it provides information about production ...
The aim of this thesis is to understand how firms with different payout policies impact the performa...
The master's degree thesis is composed of theoretical and practical parts. The theoretical part desc...
A research report submitted to the Faculty of Engineering and the Built Environment, University of t...
In this research, I show that aggregate information from financial statement analysis helps in predi...