The use of data mining algorithms for applied practice is becoming commonplace in many industries. The application of these models to the domain of educational data and practice could provide significant gains in understanding and implementation of prediction in the classroom. The wealth of data collected from students as they progress through a traditional education track could benefit greatly from machine learning and data mining. The present dissertation is designed to examine the usefulness, when compared to Multilevel Logistic Regression, of Artificial Neural Networks and Gradient Boosted Decision Trees, at predicting college enrollment using data collected as students progressed through high school. Because of the immense amount of da...
The representation of 2 Satisfiability problem or 2SAT is increasingly viewed as a significant logic...
The reliability estimation of products has crucial applications in various industries, particularly ...
Recent advances in machine learning have allowed for the use of natural language responses to predic...
Business are increasingly analyzing streaming data in real time to achieve business objectives such ...
Predictive statistical modeling shows promise in accurately predicting academic performance for stud...
The need for computers to make educated decisions is growing. Various methods have been developed fo...
Predictive statistical modeling shows promise in accurately predicting academic performance for stud...
Predictive statistical modeling shows promise in accurately predicting academic performance for stud...
The ultimate recovery factor is strongly affected by petrophysical parameters, engineering data, str...
Understanding the reasoning behind the low enrollment and retention rates of Underrepresented Minori...
A primary goal of universities is to maximize student enrollment by improving course curriculum and ...
The master's degree thesis is composed of theoretical and practical parts. The theoretical part desc...
This thesis explores the influence of image features on the predictive performance of hedonic price ...
Recent breakthroughs in deep learning have made possible the learning of deep layered hierarchical r...
Machine learning models have achieved impressive predictive performance in various applications such...
The representation of 2 Satisfiability problem or 2SAT is increasingly viewed as a significant logic...
The reliability estimation of products has crucial applications in various industries, particularly ...
Recent advances in machine learning have allowed for the use of natural language responses to predic...
Business are increasingly analyzing streaming data in real time to achieve business objectives such ...
Predictive statistical modeling shows promise in accurately predicting academic performance for stud...
The need for computers to make educated decisions is growing. Various methods have been developed fo...
Predictive statistical modeling shows promise in accurately predicting academic performance for stud...
Predictive statistical modeling shows promise in accurately predicting academic performance for stud...
The ultimate recovery factor is strongly affected by petrophysical parameters, engineering data, str...
Understanding the reasoning behind the low enrollment and retention rates of Underrepresented Minori...
A primary goal of universities is to maximize student enrollment by improving course curriculum and ...
The master's degree thesis is composed of theoretical and practical parts. The theoretical part desc...
This thesis explores the influence of image features on the predictive performance of hedonic price ...
Recent breakthroughs in deep learning have made possible the learning of deep layered hierarchical r...
Machine learning models have achieved impressive predictive performance in various applications such...
The representation of 2 Satisfiability problem or 2SAT is increasingly viewed as a significant logic...
The reliability estimation of products has crucial applications in various industries, particularly ...
Recent advances in machine learning have allowed for the use of natural language responses to predic...