First, this paper recalls a recently introduced method of adaptive monitoring of dynamical systems and presents the most recent extension with a multiscale-enhanced approach. Then, it is shown that this concept of real-time data monitoring establishes a novel non-Shannon and non-probabilistic concept of novelty quantification, i.e., Entropy of Learning, or in short the Learning Entropy. This novel cognitive measure can be used for evaluation of each newly measured sample of data, or even of whole intervals. The Learning Entropy is quantified in respect to the inconsistency of data to the temporary governing law of system behavior that is incrementally learned by adaptive models such as linear or polynomial adaptive filters or neural network...
Entropy has been a common index to quantify the complexity of time series in a variety of fields. He...
One of the most influential results in neural network theory is the universal approximation theorem ...
We examine the possibility of justifying the principle of maximum relative entropy (MRE) considered ...
Learning is an important process that allows us to reduce the uncertainty of the outcomes of our dec...
In this paper, entropy term is used in the learning phase of a neural network. As learning progresse...
Entropy models the added information associated to data uncertainty, proving that stochasticity is n...
Understanding how people generalize and extrapolate from limited amounts of data remains an outstand...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
The error-entropy-minimization approach in adaptive system training is addressed in this paper. The ...
The training process analysis and termination condition of the training process of a Reinforcement L...
Sample entropy and surrogate methods were employed to investigate changes in regularity of movement ...
Learning is an essential part of human life. In it, our sensory organs and neural networks participa...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...
Abstract. Starting from a heuristic learning scheme for strategic n-person games, we de-rive a new c...
Quantifying behaviors of robots which were generated autonomously from task-independent objective fu...
Entropy has been a common index to quantify the complexity of time series in a variety of fields. He...
One of the most influential results in neural network theory is the universal approximation theorem ...
We examine the possibility of justifying the principle of maximum relative entropy (MRE) considered ...
Learning is an important process that allows us to reduce the uncertainty of the outcomes of our dec...
In this paper, entropy term is used in the learning phase of a neural network. As learning progresse...
Entropy models the added information associated to data uncertainty, proving that stochasticity is n...
Understanding how people generalize and extrapolate from limited amounts of data remains an outstand...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
The error-entropy-minimization approach in adaptive system training is addressed in this paper. The ...
The training process analysis and termination condition of the training process of a Reinforcement L...
Sample entropy and surrogate methods were employed to investigate changes in regularity of movement ...
Learning is an essential part of human life. In it, our sensory organs and neural networks participa...
We discuss an unsupervised learning method which is driven by an information theoretic based criteri...
Abstract. Starting from a heuristic learning scheme for strategic n-person games, we de-rive a new c...
Quantifying behaviors of robots which were generated autonomously from task-independent objective fu...
Entropy has been a common index to quantify the complexity of time series in a variety of fields. He...
One of the most influential results in neural network theory is the universal approximation theorem ...
We examine the possibility of justifying the principle of maximum relative entropy (MRE) considered ...