Recent world events in go games between human and artificial intelligence called AlphaGo showed the big advancement in machine learning technologies. While AlphaGo was trained using real world data, AlphaGo Zero was trained using massive random data, and the fact that AlphaGo Zero won AlphaGo completely revealed that diversity and size in training data is important for better performance for the machine learning algorithms, especially in deep learning algorithms of neural networks. On the other hand, artificial neural networks and decision trees are widely accepted machine learning algorithms because of their robustness in errors and comprehensibility respectively. In this paper in order to prove that diversity and size in data are importan...
AbstractIn the context of the research study reported here, “learning” refers to identification of o...
In today\u27s world, the amount of raw data archived across multiple distinct domains is growing at ...
The aim of this paper is to present advanced methods for the search for new knowledge contained in B...
Recent world events in go games between human and artificial intelligence called AlphaGo showed the ...
Recently, the AlphaGo algorithm has managed to defeat the top level human player in the game of Go. ...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
This paper reviews the appropriateness for application to large data sets of standard machine learni...
Determining the optimal amount of training data for machine learning algorithms is a critical task i...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
In this thesis we explore a wide range of statistical learning algorithms and evaluate their abiliti...
With the exponential growth of data and complexity of systems, fast machine learning/artificial inte...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
The game of go is an ideal problem domain for exploring machine learning: it is easy to define and t...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
Machine learning (ML), a computational self-learning platform, is expected to be applied in a variet...
AbstractIn the context of the research study reported here, “learning” refers to identification of o...
In today\u27s world, the amount of raw data archived across multiple distinct domains is growing at ...
The aim of this paper is to present advanced methods for the search for new knowledge contained in B...
Recent world events in go games between human and artificial intelligence called AlphaGo showed the ...
Recently, the AlphaGo algorithm has managed to defeat the top level human player in the game of Go. ...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
This paper reviews the appropriateness for application to large data sets of standard machine learni...
Determining the optimal amount of training data for machine learning algorithms is a critical task i...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
In this thesis we explore a wide range of statistical learning algorithms and evaluate their abiliti...
With the exponential growth of data and complexity of systems, fast machine learning/artificial inte...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
The game of go is an ideal problem domain for exploring machine learning: it is easy to define and t...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
Machine learning (ML), a computational self-learning platform, is expected to be applied in a variet...
AbstractIn the context of the research study reported here, “learning” refers to identification of o...
In today\u27s world, the amount of raw data archived across multiple distinct domains is growing at ...
The aim of this paper is to present advanced methods for the search for new knowledge contained in B...