The Random Neural Network (RNN) has been used in a wide variety of applications, including image compression, texture generation, pattern recognition, and so on. Our work focuses on the use of the RNN as a routing decision maker which uses Reinforcement Learning (RL) techniques to explore a search space (i.e. the set of all possible routes) to find the optimal route in terms of the Quality of Service metrics that are most important to the underlying traffic. We have termed this algorithm as the Cognitive Packet Network (CPN), and have shown in previous works its application to a variety of network domains. In this paper, we present a set of experiments which demonstrate how CPN performs in a realistic environment compared to a priori-comput...
Route selection in Cognitive Packet Networks (CPN) occurs continuously for active flows and is driv...
We present an autonomous adaptive quality of service (QoS) driven network system called a Cognitive...
In this paper we describe a self-adjusting algorithm for packet routing in which a reinforcement lea...
The Random Neural Network (RNN) has been used in a wide variety of applications, including image com...
The Random Neural Network (RNN) is a recurrent neural network in which neurons interact with each ot...
This paper discusses a novel packet computer network architecture, a Cognitive Packet Network (CPN)...
In this paper, we present, a hardware implementation of a random neural network (RNN) model. The RNN...
In this paper, we present a hardware implementation of a random neural network (RNN) model. The RNN,...
Random neural network (RNN) is an analytically tractable spiked neural network model that has been i...
Random neural network (RNN) is an analytically tractable spiked neural network model that has been i...
We discuss a packet network architecture called a cognitive packet network (CPN), in which intellige...
We discuss a packet network architecture called a cognitive packet network (CPN), in which intellige...
As the Internet expands significantly in number of users, servers, routers and other networking prod...
We present an autonomous adaptive quality of service (QoS) driven network system called a cognitive...
We present an approach that uses Reinforcement Learning (RL) with the Random Neural Network (RNN) ac...
Route selection in Cognitive Packet Networks (CPN) occurs continuously for active flows and is driv...
We present an autonomous adaptive quality of service (QoS) driven network system called a Cognitive...
In this paper we describe a self-adjusting algorithm for packet routing in which a reinforcement lea...
The Random Neural Network (RNN) has been used in a wide variety of applications, including image com...
The Random Neural Network (RNN) is a recurrent neural network in which neurons interact with each ot...
This paper discusses a novel packet computer network architecture, a Cognitive Packet Network (CPN)...
In this paper, we present, a hardware implementation of a random neural network (RNN) model. The RNN...
In this paper, we present a hardware implementation of a random neural network (RNN) model. The RNN,...
Random neural network (RNN) is an analytically tractable spiked neural network model that has been i...
Random neural network (RNN) is an analytically tractable spiked neural network model that has been i...
We discuss a packet network architecture called a cognitive packet network (CPN), in which intellige...
We discuss a packet network architecture called a cognitive packet network (CPN), in which intellige...
As the Internet expands significantly in number of users, servers, routers and other networking prod...
We present an autonomous adaptive quality of service (QoS) driven network system called a cognitive...
We present an approach that uses Reinforcement Learning (RL) with the Random Neural Network (RNN) ac...
Route selection in Cognitive Packet Networks (CPN) occurs continuously for active flows and is driv...
We present an autonomous adaptive quality of service (QoS) driven network system called a Cognitive...
In this paper we describe a self-adjusting algorithm for packet routing in which a reinforcement lea...