This paper reviews recent advances in automated computer-based learning capabilities. It briefly describes and examines the strengths and weaknesses of the five principal algorithmic approaches to machine-learning, namely: connectionism; evolutionism; Bayesianism; analogism; and, symbolism. While each of these approaches can demonstrate some degree of learning, a learning capability that is comparable with human learning is still in its infancy and will likely require the combination of multiple algorithmic approaches. However, the current state reached in machine-learning suggests that Artificial General Intelligence and even Artificial Superintelligence may indeed be eventually feasible
Invited talkOn the occasion of the 25th Benelearn, I will reflect on some historical and sociologica...
Learning is needed when there is no human expertise existing or when human beings are unable to expl...
Metaphors for learning There is no a priori reason why machine learning must borrow from nature. A f...
Five paradigms are described for machine learning: connectionist (neural network) methods, genetic a...
one type of learning. In addition, papers covered machine discovery, formal models of concept learni...
Machine learning is a model that learns patterns in data and then calculates similar patterns in new...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/46947/1/10994_2005_Article_422926.pd
<p>Learning by artificial intelligence systems-what I will typically call machine learning-has a dis...
AbstractThis paper extends traditional models of machine learning beyond their one-level structure b...
In our work, we have explored the principles used in machine learning and a set of applications of m...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...
The first three sections of the paper are by Donald Gillies. Section 1 argues that artificial intell...
International audienceMachine Learning has been at the core of Artificial Intelligence since its inc...
Over the past decade, the artificial evolu-tion of computer code has become a rapidly spreading tech...
Even since computers were invented, many researchers have been trying to understand how human beings...
Invited talkOn the occasion of the 25th Benelearn, I will reflect on some historical and sociologica...
Learning is needed when there is no human expertise existing or when human beings are unable to expl...
Metaphors for learning There is no a priori reason why machine learning must borrow from nature. A f...
Five paradigms are described for machine learning: connectionist (neural network) methods, genetic a...
one type of learning. In addition, papers covered machine discovery, formal models of concept learni...
Machine learning is a model that learns patterns in data and then calculates similar patterns in new...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/46947/1/10994_2005_Article_422926.pd
<p>Learning by artificial intelligence systems-what I will typically call machine learning-has a dis...
AbstractThis paper extends traditional models of machine learning beyond their one-level structure b...
In our work, we have explored the principles used in machine learning and a set of applications of m...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...
The first three sections of the paper are by Donald Gillies. Section 1 argues that artificial intell...
International audienceMachine Learning has been at the core of Artificial Intelligence since its inc...
Over the past decade, the artificial evolu-tion of computer code has become a rapidly spreading tech...
Even since computers were invented, many researchers have been trying to understand how human beings...
Invited talkOn the occasion of the 25th Benelearn, I will reflect on some historical and sociologica...
Learning is needed when there is no human expertise existing or when human beings are unable to expl...
Metaphors for learning There is no a priori reason why machine learning must borrow from nature. A f...