Various types of neural networks are currently widely used in diverse technical applications, not least because neural networks are known to be able to “generalize.” The latter property raises expectations that they should be able to handle unexpected situations with similar success than humans. Using fundamental examples, we show that in situations for which they have not been trained, artificial approaches tend to run into substantial problems, which highlights a deficit in comparisons to human abilities. For this problem–which seems to have obtained little attention so far–we provide a first analysis, based on simple examples, which exhibits some key features responsible for the difference between human and artificial intelligence.ISSN:1...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...
Deep learning continues to play as a powerful state-of-art technique that has achieved extraordinary...
Deep neural networks have become a ubiquitous tool in a broad range of AI applications. Resembling i...
Artificial intelligence has rapidly entered the life of humanity as a whole, and of each person in p...
The long course of evolution has given the human brain many desirable characteristics not present in...
Artificial Neural Networks, as the name itself suggests, are biologically inspired algorithms design...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...
Multilayer neural networks have been faulted for functioning as "black boxes " and for fai...
A learning rule for stochastic neural networks is described, which corresponds to biological neural ...
Despite enormous progress in machine learning, artificial neural networks still lag behind brains in...
Introduction: Artificial neural networks mimic brains behavior. They are able to predict and feature...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...
Deep learning continues to play as a powerful state-of-art technique that has achieved extraordinary...
Deep neural networks have become a ubiquitous tool in a broad range of AI applications. Resembling i...
Artificial intelligence has rapidly entered the life of humanity as a whole, and of each person in p...
The long course of evolution has given the human brain many desirable characteristics not present in...
Artificial Neural Networks, as the name itself suggests, are biologically inspired algorithms design...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...
Multilayer neural networks have been faulted for functioning as "black boxes " and for fai...
A learning rule for stochastic neural networks is described, which corresponds to biological neural ...
Despite enormous progress in machine learning, artificial neural networks still lag behind brains in...
Introduction: Artificial neural networks mimic brains behavior. They are able to predict and feature...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
The last five years have seen a series of remarkable achievements in Artificial Intelligence (AI) re...
Artificial neural networks are 'biologically' inspired networks.They have the ability to learn from ...