“Machine learning is the process of discovering and interpreting meaningful information, such as new correlations, patterns and trends by sifting through large amounts of data stored in repositories, using pattern recognition technologies as well as statistical and mathematical techniques” (Larose, 2005). From my understanding, machine learning is a process of using different analysis techniques to observe previously unknown, potentially meaningful information, and discover strong patterns and relationships from a large dataset. Professor Kasabov (2007b) classified computational models into three categories (e.g. global, local, and personalised) which have been widespread and used in the areas of data analysis and decision support in gen...
Feature selection is effective in preparing high-dimensional data for a variety of learning tasks su...
Driven by the growing demand of personalization of medical procedures, data-based, computer-aided c...
The federated learning setting is prone to suffering from non-identically distributed data across pa...
“Machine learning is the process of discovering and interpreting meaningful information, such as new...
Personalised modelling offers a new and effective approach for the study in pattern recognition and ...
The core focus of this research is at the development of novel information methods and systems based...
Thesis (Ph.D.)--University of Washington, 2016-12The increasing amounts of data being gathered in he...
This thesis presents several novel methods to address some of the real world data modelling issues t...
The research presented in this thesis addresses machine learning techniques and their application in...
The complexity and the dynamics of real-world problems, such as large Health Informatics data proces...
Personalized modeling is an emerging approach, in which a model is created for every new input vecto...
The future development of personalized medicine depends on a vast exchange of data from different so...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
The chapter discusses a research support system to identify diagnostic result patterns that characte...
Feature selection is effective in preparing high-dimensional data for a variety of learning tasks su...
Driven by the growing demand of personalization of medical procedures, data-based, computer-aided c...
The federated learning setting is prone to suffering from non-identically distributed data across pa...
“Machine learning is the process of discovering and interpreting meaningful information, such as new...
Personalised modelling offers a new and effective approach for the study in pattern recognition and ...
The core focus of this research is at the development of novel information methods and systems based...
Thesis (Ph.D.)--University of Washington, 2016-12The increasing amounts of data being gathered in he...
This thesis presents several novel methods to address some of the real world data modelling issues t...
The research presented in this thesis addresses machine learning techniques and their application in...
The complexity and the dynamics of real-world problems, such as large Health Informatics data proces...
Personalized modeling is an emerging approach, in which a model is created for every new input vecto...
The future development of personalized medicine depends on a vast exchange of data from different so...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
The chapter discusses a research support system to identify diagnostic result patterns that characte...
Feature selection is effective in preparing high-dimensional data for a variety of learning tasks su...
Driven by the growing demand of personalization of medical procedures, data-based, computer-aided c...
The federated learning setting is prone to suffering from non-identically distributed data across pa...