We design several algorithms representing evaluation processes of different complexity, ranging from basic environments based on a predetermined number of features to complex structures involving alternatives defined through decision trees whose number of nodes is determined by the cardinality of the respective power sets. The sequential structure of these evaluation processes builds on the information retrieval behavior of users in online search environments. The algorithms generate two strings of data, namely, numerical evaluations determining the retrieval behavior of users and the subsequent choices made by the latter. The way the output obtained from the algorithms is inputted within the vectors summarizing the complexity of the evalua...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
Pattern recognition (PR) is the study of how machines can examine the environment, learn to distingu...
Pattern recognition (PR) is the study of how machines can examine the environment, learn to distingu...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
The data are recorded digitally throughout the process of data mining, and the computer either entir...
The increasing availability of data gatherable from various sources and in several contexts, is forc...
Abstract: Machine learning is important because it gives us accurate predictions based on data. It c...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
The research presented in this thesis addresses machine learning techniques and their application in...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
Features play a crucial role in several computational tasks. Feature values are input to machine lea...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
Pattern recognition (PR) is the study of how machines can examine the environment, learn to distingu...
Pattern recognition (PR) is the study of how machines can examine the environment, learn to distingu...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
The data are recorded digitally throughout the process of data mining, and the computer either entir...
The increasing availability of data gatherable from various sources and in several contexts, is forc...
Abstract: Machine learning is important because it gives us accurate predictions based on data. It c...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
The research presented in this thesis addresses machine learning techniques and their application in...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
Features play a crucial role in several computational tasks. Feature values are input to machine lea...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
Machine learning is an established method of selecting algorithms to solve hard search problems. Des...
Pattern recognition (PR) is the study of how machines can examine the environment, learn to distingu...
Pattern recognition (PR) is the study of how machines can examine the environment, learn to distingu...