We consider the problem of efficient “on the fly” tuning of existing, or legacy, Artificial Intelligence (AI) systems. The legacy AI systems are allowed to be of arbitrary class, albeit the data they are using for computing interim or final decision responses should posses an underlying structure of a high-dimensional topological real vector space. The tuning method that we propose enables dealing with errors without the need to re-train the system. Instead of re-training a simple cascade of perceptron nodes is added to the legacy system. The added cascade modulates the AI legacy system’s decisions. If applied repeatedly, the process results in a network of modulating rules “dressing up” and improving performance of existing AI systems. Mat...
In this paper, we discuss the usefulness of topology preservation in an on-line learning neural cont...
Artificial Intelligence (AI) is the branch of the Computer Science field that tries to imbue intelli...
Abstract. The evolution of artificial neural networks (ANNs) is often used to tackle difficult contr...
We consider the problem of efficient “on the fly” tuning of existing, or legacy, Artificial Intellig...
This paper presents a technology for simple and computationally efficient improvements of a generic ...
This work is driven by a practical question: corrections of Artificial Intelligence (AI) errors. The...
In this paper we present theory and algorithms enabling classes of Artificial Intelligence (AI) syst...
Artificial Intelligence (AI) systems sometimes make errors and will make errors in the future, from ...
We consider the fundamental question: how a legacy “student” Artificial Intelligent (AI) system coul...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
The problem of non-iterative one-shot and non-destructive correction of unavoidable mistakes arises ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
Complexity is an indisputable, well-known, and broadly accepted feature of the brain. Despite the ap...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
Faced with an ever-increasing complexity of their domains of application, artificial learning agents...
In this paper, we discuss the usefulness of topology preservation in an on-line learning neural cont...
Artificial Intelligence (AI) is the branch of the Computer Science field that tries to imbue intelli...
Abstract. The evolution of artificial neural networks (ANNs) is often used to tackle difficult contr...
We consider the problem of efficient “on the fly” tuning of existing, or legacy, Artificial Intellig...
This paper presents a technology for simple and computationally efficient improvements of a generic ...
This work is driven by a practical question: corrections of Artificial Intelligence (AI) errors. The...
In this paper we present theory and algorithms enabling classes of Artificial Intelligence (AI) syst...
Artificial Intelligence (AI) systems sometimes make errors and will make errors in the future, from ...
We consider the fundamental question: how a legacy “student” Artificial Intelligent (AI) system coul...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
The problem of non-iterative one-shot and non-destructive correction of unavoidable mistakes arises ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
Complexity is an indisputable, well-known, and broadly accepted feature of the brain. Despite the ap...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
Faced with an ever-increasing complexity of their domains of application, artificial learning agents...
In this paper, we discuss the usefulness of topology preservation in an on-line learning neural cont...
Artificial Intelligence (AI) is the branch of the Computer Science field that tries to imbue intelli...
Abstract. The evolution of artificial neural networks (ANNs) is often used to tackle difficult contr...